If a matrix has 28 elements, what are the possible orders it can have? What if it has 13 elements?
We know that in mathematics, a matrix is a rectangular array of numbers, symbols, or expressions, arranged in rows and columns.
The number of rows and columns that a matrix has is called its order or its dimension. By convention, rows are listed first; and columns second.
We are given with a matrix that has 28 elements.
We know that,
If a matrix has mn elements, then the order of the matrix can be given by m × n, where m and n are natural numbers.
Therefore, for a matrix having 28 elements, that is, mn = 28, possible orders can be found out as follows:
∵ mn = 28
Take m and n to be any number, such that, when it is multiplied it gives 28.
So, let m = 1 and n = 28.
Then, m × n = 1 × 28 (=28)
⇒ 1 × 28 is a possible order of the matrix having 28 elements.
Take m = 2 and n = 14.
Then, m × n = 2 × 14 (=28)
⇒ 2 × 14 is a possible order of the matrix having 28 elements.
Take m = 4 and n = 7.
Then, m × n = 4 × 7 (=28)
⇒ 4 × 7 is a possible order of the matrix having 28 elements.
Take m = 7 and n = 4.
Then, m × n = 7 × 4 (=28)
⇒ 7 × 4 is a possible order of the matrix having 28 elements.
Take m = 14 and n = 2.
Then, m × n = 14 × 2 (=28)
⇒ 14 × 2 is a possible order of the matrix having 28 elements.
Take m = 28 and n = 1.
Then, m × n = 28 × 1 (=28)
⇒ 28 × 1 is a possible order of the matrix having 28 elements.
Thus, the possible orders of the matrix having 28 elements are
1 × 28, 2 × 14, 4 × 7, 7 × 4, 14 × 2 and 28 × 1
If the matrix had 13 elements, then also we find the possible order in same way.
Here, mn = 13.
Take m and n to be any number, such that, when it is multiplied it gives 13.
Take m = 1 and n = 13.
Then, m × n = 1 × 13 (=13)
⇒ 1 × 13 is a possible order of the matrix having 13 elements.
Take m = 13 and n = 1.
Then, m × n = 13 × 1 (=13)
⇒ 13 × 1 is a possible order of the matrix having 13 elements.
Thus, the possible orders of the matrix having 13 elements are
1 × 13 and 13 × 1
In the matrix , write:
(i) The order of the matrix A
(ii) The number of elements
(iii) Write elements a23, a31, a12
We have the matrix
A matrix, as we know, is a rectangular array of numbers, symbols, or expressions, arranged in rows and columns.
(i). We need to find the order of the matrix A.
And we know that,
The number of rows and columns that a matrix has is called its order or its dimension. By convention, rows are listed first; and columns second.
So,
Here, in matrix A:
There are 3 rows.
Elements in 1st row = a, 1, x
Elements in 2nd row = 2, √3, x2 – y
Elements in 3rd row = 0, 5, -2/5
⇒ M = 3
And,
There are 3 columns.
Elements in 1st column = a, 2, 0
Elements in 2nd column = 1, √3, 5
Elements in 3rd column = x, x2 – y, -2/5
⇒ N = 3
Since, the order of matrix = M × N
⇒ The order of matrix A = 3 × 3
Thus, the order of the matrix A is 3 × 3.
(ii). We need to find the number of elements in the matrix A.
And we know that,
Each number that makes up a matrix is called an element of the matrix.
So,
If a matrix has M rows and N columns, the number of elements is MN.
Here, in matrix A:
There are 3 rows.
⇒ M = 3
And,
There are 3 columns.
⇒ N = 3
Then, number of elements = MN
⇒ Number of elements = 3 × 3
⇒ Number of elements = 9
The elements are namely, a, 2, 0, 1, √3, 5, x, x2 – y, -2/5.
Thus, the number of elements is 9.
(iii). We need to find the elements a23, a31 and a12.
We know that,
aij is the representation of elements lying in the ith row and jth column.
For a23:
Comparing aij with a23, we have
i = 2
j = 3
Look up in matrix A for element in (i=) 2nd row and (j=) 3rd column.
Element that is common to both 2nd row and 3rd column = x2 – y
⇒ a23 = x2 – y
For a31:
Comparing aij with a31, we have
i = 3
j = 1
Look up in matrix A for element in (i=) 3rd row and (j=) 1st column.
Element that is common to both 3rd row and 1st column = 0
⇒ a31 = 0
For a12:
Comparing aij with a12, we have
i = 1
j = 2
Look up in matrix A for element in (i=) 1st row and (j=) 2nd column.
Element that is common to both 1st row and 2nd column = 1
⇒ a12 = 1
Thus, a23 = x2 – y, a31 = 0 and a12 = 1.
We know that,
A matrix, as we know, is a rectangular array of numbers, symbols, or expressions, arranged in rows and columns.
Also,
We know that, the notation A = [aij]m×m indicates that A is a matrix of order m × n, also 1 ≤ i ≤ m, 1 ≤ j ≤ n; i, j ∈ N.
(i).We need to construct a matrix, a2×2, where
For a2×2,
1 ≤ i ≤ m
⇒ 1 ≤ i ≤ 2 [∵ m = 2]
And,
1 ≤ j ≤ n
⇒ 1 ≤ j ≤ 2 [∵ n = 2]
Put i = 1 and j = 1.
Put i = 1 and j = 2.
Put i = 2 and j = 1.
⇒ a21 = 0
Put i = 2 and j = 2.
⇒ a22 = 2
Let the matrix formed be A.
Substituting the values of a11, a12, a21 and a22, we get the matrix
(ii). We need to construct a matrix, a2×2, where
aij = |-2i + 3j|
For a2×2,
1 ≤ i ≤ m
⇒ 1 ≤ i ≤ 2 [∵ m = 2]
And,
1 ≤ j ≤ n
⇒ 1 ≤ j ≤ 2 [∵ n = 2]
Put i = 1 and j = 1.
a11 = |-2(1) + 3(1)|
⇒ a11 = |-2 + 3|
⇒ a11 = |1|
⇒ a11 = 1
Put i = 1 and j = 2.
a12 = |-2(1) + 3(2)|
⇒ a12 = |-2 + 6|
⇒ a12 = |4|
⇒ a12 = 4
Put i = 2 and j = 1.
a21 = |-2(2) + 3(1)|
⇒ a21 = |-4 + 3|
⇒ a21 = |-1|
⇒ a21 = 1
Put i = 2 and j = 2.
a22 = |-2(2) + 3(2)|
⇒ a22 = |-4 + 6|
⇒ a22 = |2|
⇒ a22 = 2
Let the matrix formed be A.
Substituting the values of a11, a12, a21 and a22, we get the matrix
Construct a 3 × 2 matrix whose elements are given by aij = eixsin jx
A matrix, as we know, is a rectangular array of numbers, symbols, or expressions, arranged in rows and columns.
Also,
We know that, the notation A = [aij]m×m indicates that A is a matrix of order m × n, also 1 ≤ i ≤ m, 1 ≤ j ≤ n; i, j ∈ N.
We need to construct a 3 × 2 matrix whose elements are given by
aij = ei.x sin jx
For a3×2:
1 ≤ i ≤ m
⇒ 1 ≤ i ≤ 3 [∵ m = 3]
1 ≤ j ≤ n
⇒ 1 ≤ j ≤ 2 [∵ n = 2]
Put i = 1 and j = 1.
a11 = e(1)x sin (1)x
⇒ a11 = ex sin x
Put i = 1 and j = 2.
a12 = e(1)x sin (2)x
⇒ a12 = ex sin 2x
Put i = 2 and j = 1.
a21 = e(2)x sin (1)x
⇒ a21 = e2xsin x
Put i = 2 and j = 2.
a22 = e(2)x sin (2)x
⇒ a22 = e2x sin 2x
For i = 3 and j = 1.
a31 = e(3)x sin (1)x
⇒ a31 = e3x sin x
For i = 3 and j = 2.
a32 = e(3)x sin (2)x
⇒ a32 = e3x sin 2x
Let the matrix formed be A.
Substituting the values of a11, a12, a21, a22, a31 and a32, we get the matrix
Thus, we have got the matrix.
Find values of a and b if A = B, where
and
We have the matrices A and B, where
We need to find the values of a and b.
We know that, if
Then,
a11 = b11
a12 = b12
a21 = b21
a22 = b22
Also, A = B.
This means,
a + 4 = 2a + 2 …(i)
3b = b2 + 2 …(ii)
8 = 8
-6 = b2 – 5b …(iii)
From equation (i), we can find the value of a.
a + 4 = 2a + 2
⇒ 2a – a = 4 – 2
⇒ a = 2
From equation (ii), we can find the value of b2.
3b = b2 + 2
⇒ b2= 3b – 2
Substitute the value of b2 in equation (iii), we get
-6 = b2 – 5b
⇒ -6 = (3b – 2) – 5b
⇒ -6 = 3b – 2 – 5b
⇒ -6 = 3b – 5b – 2
⇒ -6 = -2b – 2
⇒ 2b = 6 – 2
⇒ 2b = 4
⇒ b = 2
Thus, a = 2 and b = 2.
If possible, find the sum of the matrices A and B, where and .
We know that,
The number of rows and columns that a matrix has is called its order or its dimension. By convention, rows are listed first; and columns second.
Also,
Addition or subtraction of matrices is possible only if the matrices are of same order.
That is,
If A and B are two matrices and if they are needed to be added, then if order of A is m × n, order of B must be m × n.
We have matrices A and B, where
We know what order of matrix is,
If a matrix has M rows and N columns, the order of matrix is M × N.
In matrix A:
Number of rows = 2
⇒ M = 2
Number of column = 2
⇒ N = 2
Then, order of matrix A = M × N
⇒ Order of matrix A = 2 × 2
In matrix B:
Number of rows = 2
⇒ M = 2
Number of columns = 3
⇒ M = 3
Then, order of matrix B = M × N
⇒ order of matrix B = 2 × 3
Since,
Order of matrix A ≠ Order of matrix B
⇒ Matrices A and B cannot be added.
Thus, matrix A and matrix B cannot be added.
If and find
(i) X + Y
(ii) 2X – 3Y
(iii) A matrix Z such that X + Y + Z is a zero matrix.
Addition or subtraction of matrices is possible only if the matrices are of same order.
That is,
If A and B are two matrices and if they are needed to be added, then if order of A is m × n, order of B must be m × n.
We have matrices X and Y, where
We know what order of matrix is,
If a matrix has M rows and N columns, the order of matrix is M × N.
(i). We need to find the X + Y.
Let us first determine order of X and Y.
Order of X:
Number of rows = 2
⇒ M = 2
Number of columns = 3
⇒ N = 3
Then, order of matrix X = M × N
⇒ Order of matrix X = 2 × 3
Order of Y:
Number of rows = 2
⇒ M = 2
Number of columns = 3
⇒ N = 3
Then, order of matrix Y = M × N
⇒ Order of matrix Y = 2 × 3
Since, order of matrix X = order of matrix Y
⇒ Matrices X and Y can be added.
So,
Thus, .
(ii). We need to find 2X – 3Y.
Let us calculate 2X.
We have,
Then, multiplying by 2 on both sides, we get
Also,
Multiplying by 3 on both sides, we get
Now subtract 3Y from 2X.
Thus, .
(iii). We need to find matrix Z, such that X + Y + Z is a zero matrix.
That is,
X + Y + Z = 0
Or,
Z = -X – Y
Or,
Z = -(X + Y)
We have already found X + Y in part (i).
So, from part (i):
Then,
Thus, .
Find non-zero values of x satisfying the matrix equation:
A matrix, as we know, is a rectangular array of numbers, symbols, or expressions, arranged in rows and columns.
Also,
Two or more matrices can be added or subtracted only if they have same order.
And we are familiar with order of a matrix. If a matrix has M rows and N columns, the order of matrix is M × N.
We have matrix equation,
Take matrix .
Multiply it with x,
…(i)
Take matrix .
Multiply it with 2,
…(ii)
Take matrix .
Multiply it with 2,
…(iii)
Add equation (i) and (ii) and make it equal to equation (iii), we get
Adding left side of the matrix equation as they have same order.
We need to find the value of x.
So, compare the elements in the two matrices.
If,
Then,
a11 = b11
a12 = b12
a21 = b21
a22 = b22
So,
2x2 + 16 = 2(x2 + 8) …(i)
2x + 10x = 48 …(ii)
3x + 8 = 20 …(iii)
x2 + 8x = 12x …(iv)
We have got equations (i), (ii), (iii) and (iv) to solve for x.
So, take equation (i).
2x2 + 16 = 2x2 + 16
We won’t be able to find x from this equation, as both equations are same.
Now, take equation (ii).
2x + 10x = 48
⇒ 12x = 48
⇒ x = 4
From equation (iii),
3x + 8 = 20
⇒ 3x = 20 – 8
⇒ 3x = 12
⇒ x = 4
From equation (iv),
x2 + 8x = 12x
⇒ x2 = 12x – 8x
⇒ x2 = 4x
⇒ x2 – 4x = 0
⇒ x(x – 4) = 0
⇒ x = 0 or (x – 4) = 0
⇒ x = 0 or x = 4
⇒ x = 4 (∵ x = 0 does not satisfy equations (ii) and (iii))
So, by solving equations (ii), (iii) and (iv), we can conclude that
x = 4
Thus, the value of x is 4.
If and , show that (A + B) (A – B) ≠ A2 – B2.
We have the matrices A and B, where
We need to show that (A + B) (A – B) ≠ A2 – B2.
Take L.H.S: (A + B) (A – B)
First, let us compute (A + B).
If two matrices are of same order (say, m × n), then they can be added or subtracted. Example,
If we have matrices and . Then, they can be added as
So,
Now, let us compute (A – B).
Similarly, two matrices having same order can be subtracted in a similar fashion.
So,
Now, let us compute (A + B) (A – B).
In order to multiply two matrices, A and B, the number of columns in A must equal the number of rows in B. Thus, if A is an m x n matrix and B is an r x s matrix, n = r.
Multiply 1st row of matrix A by matching members of 1st column of matrix B, then sum them up.
(0, 0).(0, 0) = (0 × 0) + (0 × 0)
⇒ (0, 0).(0, 0) = 0 + 0
⇒ (0, 0).(0, 0) = 0
Multiply 1st row of matrix A by matching members of 2nd column of matrix B, then sum them up.
(0, 0).(2, 1) = (0 × 2) + (0 × 1)
⇒ (0, 0).(2, 1) = 0 + 0
⇒ (0, 0).(2, 1) = 0
Multiply 2nd row of matrix A by matching members of 1st column of matrix B, then sum them up.
(2, 1).(0, 0) = (2 × 0) + (1 × 0)
⇒ (2, 1).(0, 0) = 0 + 0
⇒ (2, 1).(0, 0) = 0
Multiply 2nd row of matrix A by matching members of 2nd column of matrix B, then sum them up.
(2, 1).(2, 1) = (2 × 2) + (1 × 1)
⇒ (2, 1).(2, 1) = 4 + 1
⇒ (2, 1).(2, 1) = 5
So, we have
Take R.H.S: A2 – B2
Let us compute A2 first.
A2 = A.A
So, we need to compute A.A.
Multiply 1st row of matrix A by matching members of 1st column of matrix A, then sum them up.
(0, 1).(0, 1) = (0 × 0) + (1 × 1)
⇒ (0, 1).(0, 1) = 0 + 1
⇒ (0, 1).(0, 1) = 1
Multiply 1st row of matrix A by matching members of 2nd column of matrix A, then sum them up.
(0, 1).(1, 1) = (0 × 1) + (1 × 1)
⇒ (0, 1).(1, 1) = 0 + 1
⇒ (0, 1).(1, 1) = 1
Multiply 2nd row of matrix A by matching members of 1st column of matrix A, then sum them up.
(1, 1).(0, 1) = (1 × 0) + (1 × 1)
⇒ (1, 1).(0, 1) = 0 + 1
⇒ (1, 1).(0, 1) = 1
Multiply 2nd row of matrix A by matching members of 2nd column of matrix A, then sum them up.
(1, 1).(1, 1) = (1 × 1) + (1 × 1)
⇒ (1, 1).(1, 1) = 1 + 1
⇒ (1, 1).(1, 1) = 2
So,
Now, let us compute B2.
B2 = B.B
We need to compute B.B.
Multiply 1st row of matrix B by matching members of 1st column of matrix B, then sum them up.
(0, -1).(0, 1) = (0 × 0) + (-1 × 1)
⇒ (0, -1).(0, 1) = 0 – 1
⇒ (0, -1).(0, 1) = -1
Multiply 1st row of matrix B by matching members of 2nd column of matrix B, then sum them up.
(0, -1).(-1, 0) = (0 × -1) + (-1 × 0)
⇒ (0, -1).(-1, 0) = 0 + 0
⇒ (0, -1).(-1, 0) = 0
Multiply 2nd row of matrix B by matching members of 1st column of matrix B, then sum them up.
(1, 0).(0, 1) = (1 × 0) + (0 × 1)
⇒ (1, 0).(0, 1) = 0 + 0
⇒ (1, 0).(0, 1) = 0
Multiply 2nd row of matrix B by matching members of 2nd column of matrix B, then sum them up.
(1, 0).(-1, 0) = (1 × -1) + (0 × 0)
⇒ (1, 0).(-1, 0) = -1 + 0
⇒ (1, 0).(-1, 0) = -1
So,
Now, compute A2 – B2.
Clearly,
and are not equal.
Thus, (A + B)(A – B) ≠ A2 – B2.
Find the value of x if
We have the matrix equation,
We need to find the value of x.
Let us compute L.H.S:
Let,
and
In order to multiply two matrices, A and B, the number of columns in A must equal the number of rows in B. Thus, if A is an m x n matrix and B is an r x s matrix, n = r.
First, let us compute
Multiply 1st row of matrix A by matching members of 1st column of matrix B, then sum them up.
(1, x, 1).(1, 2, 15) = (1 × 1) + (x × 2) + (1 × 15)
⇒ (1, x, 1).(1, 2, 15) = 1 + 2x + 15
⇒ (1, x, 1).(1, 2, 15) = 2x + 16
Multiply 1st row of matrix A by matching members of 2nd column of matrix B, then sum them up.
(1, x, 1).(3, 5, 3) = (1 × 3) + (x × 5) + (1 × 3)
⇒ (1, x, 1).(3, 5, 3) = 3 + 5x + 3
⇒ (1, x, 1).(3, 5, 3) = 5x + 6
Multiply 1st row of matrix A by matching members of 3rd column of matrix B, then sum them up.
(1, x, 1).(2, 1, 2) = (1 × 2) + (x × 1) + (1 × 2)
⇒ (1, x, 1).(2, 1, 2) = 2 + x + 2
⇒ (1, x, 1).(2, 1, 2) = x + 4
So,
Now, compute
Multiply 1st row of matrix D by matching members of 1st column of matrix C, then sum them up.
(2x + 16, 5x + 6, x + 4).(1, 2, x) = ((2x + 16) × 1) + ((5x + 6) × 2) + ((x + 4) × x)
⇒ (2x + 16, 5x + 6, x + 4).(1, 2, x) = (2x + 16) + (10x + 12) + (x2 + 4x)
⇒ (2x + 16, 5x + 6, x + 4).(1, 2, x) = x2 + 2x + 10x + 4x + 16 + 12
⇒ (2x + 16, 5x + 6, x + 4).(1, 2, x) = x2 + 16x + 28
So, we have got
Now, put L.H.S = R.H.S
[x2 + 16x + 28] = [0]
This means,
x2 + 16x + 28 = 0
⇒ x2 + 14x + 2x + 28 = 0
⇒ x(x + 14) + 2(x + 14) = 0
⇒ (x + 2)(x + 14) = 0
⇒ (x + 2) = 0 or (x + 14) = 0
⇒ x = -2 or x = -14
Thus, x = -2, -14.
Show that satisfies the equation A2 – 3A – 7I = 0 and hence find A–1.
We have the matrix A, such that
(i). We need to show that the matrix A satisfies the equation A2 – 3A – 7I = 0.
(ii). Also, we need to find A-1.
(i). Take L.H.S: A2 – 3A – 7I
First, compute A2.
A2 = A.A
In order to multiply two matrices, A and B, the number of columns in A must equal the number of rows in B. Thus, if A is an m x n matrix and B is an r x s matrix, n = r.
Multiply 1st row of matrix A by matching members of 1st column of matrix A, then sum them up.
(5, 3).(5, -1) = (5 × 5) + (3 × -1)
⇒ (5, 3).(5, -1) = 25 + (-3)
⇒ (5, 3).(5, -1) = 25 – 3
⇒ (5, 3).(5, -1) = 22
Multiply 1st row of matrix A by matching members of 2nd column of matrix A, then sum them up.
(5, 3).(3, -2) = (5 × 3) + (3 × -2)
⇒ (5, 3).(3, -2) = 15 + (-6)
⇒ (5, 3).(3, -2) = 15 – 6
⇒ (5, 3).(3, -2) = 9
Multiply 2nd row of matrix A by matching members of 1st column of matrix A, then sum them up.
(-1, -2).(5, -1) = (-1 × 5) + (-2 × -1)
⇒ (-1, -2).(5, -1) = -5 + 2
⇒ (-1, -2).(5, -1) = -3
Multiply 2nd row of matrix A by matching members of 2nd column of matrix A, then sum them up.
(-1, -2).(3, -2) = (-1 × 3) + (-2 × -2)
⇒ (-1, -2).(3, -2) = -3 + 4
⇒ (-1, -2).(3, -2) = 1
Substitute values of A2 and A in A2 – 3A – 7I.
Also, since matrix A is of the order 2 × 2, then I will be the identity matrix of order 2 × 2 such that,
Clearly,
L.H.S = R.H.S
Thus, we have shown that matrix A satisfy A2 – 3A – 7I = 0.
(ii). Now, let us find A-1.
We know that, inverse of matrix A is A-1 is true only when
A × A-1 = A-1 × A = I
Where, I = Identity matrix
We have,
A2 – 3A – 7I = 0
Multiply A-1 on both sides, we get
A-1(A2 – 3A – 7I) = A-1 × 0
⇒ A-1.A2 – A-1.3A – A-1.7I = 0
⇒ A-1.A.A – 3A-1.A – 7A-1.I = 0
⇒ (A-1A)A – 3(A-1A) – 7(A-1I) = 0
And as A-1A = I and A-1I = A-1
⇒ IA – 3I – 7A-1 = 0
Since, IA = A
⇒ A – 3I – 7A-1 = 0
⇒ 7A-1 = A – 3I
[∵ ]
Thus, .
Find the matrix A satisfying the matrix equation:
Here we have been given a matrix equation,
We need to find the matrix A.
Let matrix A be of order 2 × 2, and can be represented as
Then, we get
Take L.H.S:
So, first let us calculate
In order to multiply two matrices, A and B, the number of columns in A must equal the number of rows in B. Thus, if A is an m x n matrix and B is an r x s matrix, n = r.
Multiply 1st row of matrix X by matching members of 1st column of matrix Y, then sum them up.
(2, 1).(a, c) = (2 × a) + (1 × c)
⇒ (2, 1).(a, c) = 2a + c
Multiply 1st row of matrix X by matching members of 2nd column of matrix Y, then sum them up.
(2, 1).(b, d) = (2 × b) + (1 × d)
⇒ (2, 1).(b, d) = 2b + d
Multiply 2nd row of matrix X by matching members of 1st column of matrix Y, then sum them up.
(3, 2).(a, c) = (3 × a) + (2 × c)
⇒ (3, 2).(a, c) = 3a + 2c
Multiply 2nd row of matrix X by matching members of 2nd column of matrix Y, then sum them up.
(3, 2).(b, d) = (3 × b) + (2 × d)
⇒ (3, 2).(b, d) = 3b + 2d
Let X.Y = Z
Now, we need to find .
That is,
Where, let .
Multiply 1st row of matrix Z by matching members of 1st column of matrix Q, then sum them up.
(2a + c, 2b + d).(-3, 5) = ((2a + c) × -3) + ((2b + d) × 5)
⇒ (2a + c, 2b + d).(-3, 5) = -6a – 3c + 10b + 5d
⇒ (2a + c, 2b + d).(-3, 5) = -6a + 10b – 3c + 5d
Multiply 1st row of matrix Z by matching members of 2nd column of matrix Q, then sum them up.
(2a + c, 2b + d).(2, -3) = ((2a + c) × 2) + ((2b + d) × -3)
⇒ (2a + c, 2b + d).(2, -3) = 4a + 2c – 6b – 3d
⇒ (2a + c, 2b + d).(2, -3) = 4a – 6b + 2c – 3d
Multiply 2nd row of matrix Z by matching members of 1st column of matrix Q, then sum them up.
(3a + 2c, 3b + 2d).(-3, 5) = ((3a + 2c) × -3) + ((3b + 2d) × 5)
⇒ (3a + 2c, 3b + 2d).(-3, 5) = -9a – 6c + 15b + 10d
⇒ (3a + 2c, 3b + 2d).(-3, 5) = -9a + 15b – 6c + 10d
Multiply 2nd row of matrix Z by matching members of 2nd column of matrix Q, then sum them up.
(3a + 2c, 3b + 2d).(2, -3) = ((3a + 2c) × 2) + ((3b + 2d) × -3)
⇒ (3a + 2c, 3b + 2d).(2, -3) = 6a + 4c – 9b – 6d
⇒ (3a + 2c, 3b + 2d).(2, -3) = 6a – 9b + 4c – 6d
So, we have
Now, for L.H.S = R.H.S
For matrices having same order, we can write as
-6a + 10b – 3c + 5d = 1 …(i)
4a – 6b + 2c – 3d = 0 …(ii)
-9a + 15b – 6c + 10d = 0 …(iii)
6a – 9b + 4c – 6d = 1 …(iv)
We have 4 variables to find, namely, a, b, c and d; and 4 equations.
So, on adding equations (i) and (iv), we get
(-6a + 10b – 3c + 5d) + (6a – 9b + 4c – 6d) = 1 + 1
⇒ -6a + 6a + 10b – 9b – 3c + 4c + 5d – 6d = 2
⇒ 0 + b + c – d = 2
⇒ d = b + c – 2 …(v)
Now, adding equations (ii) and (iii), we get
(4a – 6b + 2c – 3d) + (-9a + 15b – 6c + 10d) = 0 + 0
⇒ 4a – 9a – 6b + 15b + 2c – 6c – 3d + 10d = 0
⇒ -5a + 9b – 4c + 7d = 0 …(vi)
On adding equations (iv) and (vi), we get
(6a – 9b + 4c – 6d) + (-5a + 9b – 4c + 7d) = 1 + 0
⇒ 6a – 5a – 9b + 9b + 4c – 4c – 6d + 7d = 1
⇒ a + 0 + 0 + d = 1
⇒ d = 1 – a …(vii)
Putting the value of d from equation (vii) in (v), we get
(1 – a) = b + c – 2
⇒ b + c – 2 – 1 = -a
⇒ b + c – 3 = -a
⇒ a = 3 – b – c …(viii)
Now, putting values of a and d from equations (vii) and (viii) in equation (iii), we get
-9(3 – b – c) + 15b – 6c + 10(1 – a) = 0
⇒ -9(3 – b – c) + 15b – 6c + 10(1 – (3 – b – c)) = 0 [∵ a = 3 – b – c]
⇒ -27 + 9b + 9c + 15b – 6c + 10(1 – 3 + b + c) = 0
⇒ -27 + 9b + 9c + 15b – 6c + 10(-2 + b + c) = 0
⇒ -27 + 9b + 9c + 15b – 6c – 20 + 10b + 10c = 0
⇒ 9b + 15b + 10b + 9c – 6c + 10c – 27 – 20 = 0
⇒ 34b + 13c – 47 = 0
⇒ 34b + 13c = 47 …(ix)
Also, putting values of a and d from equations (vii) and (viii) in equation (ii), we get
4(3 – b – c) – 6b + 2c – 3(1 – a) = 0
⇒ 12 – 4b – 4c – 6b + 2c – 3(1 – (3 – b – c)) = 0
⇒ 12 – 4b – 4c – 6b + 2c – 3(1 – 3 + b + c) = 0
⇒ 12 – 4b – 4c – 6b + 2c – 3(-2 + b + c) = 0
⇒ 12 – 4b – 4c – 6b + 2c + 6 – 3b – 3c = 0
⇒ -4b – 6b – 3b – 4c + 2c – 3c + 12 + 6 = 0
⇒ -13b – 5c + 18 = 0
⇒ 13b + 5c = 18 …(x)
On multiplying equation (ix) by 5 and equation (x) by 13, we get
(ix) ⇒ 5(34b + 13c) = 5 × 47
⇒ 170b + 65c = 235 …(xi)
(x) ⇒ 13(13b + 5c) = 13 × 18
⇒ 169b + 65c = 234 …(xii)
Subtracting equations (xi) and (xii), we get
(170b + 65c) – (169b + 65c) = 235 – 234
⇒ 170b – 169b + 65c – 65c = 1
⇒ b = 1
Putting b = 1 in equation (x), we get
13(1) + 5c = 18
⇒ 13 + 5c = 18
⇒ 5c = 18 – 13
⇒ 5c = 5
⇒ c = 1
Putting b = 1 and c = 1 in equation (viii), we get
a = 3 – b – c
⇒ a = 3 – 1 – 1
⇒ a = 3 – 2
⇒ a = 1
Putting a = 1 in equation (vii), we get
d = 1 – a
⇒ d = 1 – 1
⇒ d = 0
Thus, the matrix A is
Find A, if .
We have,
We need to find the matrix A.
Let us see what the order of the matrices given are.
We know what order of matrix is,
If a matrix has M rows and N columns, the order of matrix is M × N.
Order of .
Number of rows = 3
⇒ M = 3
Number of column = 1
⇒ N = 1
Then, order of matrix X = M × N
⇒ Order of matrix X = 3 × 1
Order of .
Number of rows = 3
⇒ M = 3
Number of columns = 3
⇒ N = 3
Then, order of matrix Y = M × N
⇒ Order of matrix Y = 3 × 3
We must understand that, when a matrix of order 1 × 3 is multiplied to the matrix X, only then matrix Y is produced.
Let matrix A be of order 1 × 3, and can be represented as
Then, we get
Take L.H.S:
In order to multiply two matrices, A and B, the number of columns in A must equal the number of rows in B. Thus, if A is an m x n matrix and B is an r x s matrix, n = r.
So, we have
Multiply 1st row of matrix X by matching member of 1st column of matrix A, then sum them up.
(4)(a) = 4a
Multiply 1st row of matrix X by matching member of 2nd column of matrix A, then sum them up.
(4)(b) = 4b
Multiply 1st row of matrix X by matching member of 3rd column of matrix A, then sum them up.
(4)(c) = 4c
Multiply 2nd row of matrix X by matching member of 1st column of matrix A, then sum them up.
(1)(a) = a
Multiply 2nd row of matrix X by matching member of 2nd column of matrix A, then sum them up.
(1)(b) = b
Multiply 2nd row of matrix X by matching member of 3rd column of matrix A, then sum them up.
(1)(c) = c
Multiply 3rd row of matrix X by matching member of 1st column of matrix A, then sum them up.
(3)(a) = 3a
Multiply 3rd row of matrix X by matching member of 2nd column of matrix A, then sum them up.
(3)(b) = 3b
Multiply 3rd row of matrix X by matching member of 3rd column of matrix A, then sum them up.
(3)(c) = 3c
Now, L.H.S = R.H.S
Since, the matrices on either sides are of same order, we can say that
4a = -4 …(i)
4b = 8 …(ii)
4c = 4 …(iii)
a = -1 …(iv)
b = 2 …(v)
c = 1 …(vi)
3a = -3 …(vii)
3b = 6 …(viii)
3c = 3 …(ix)
From equation (i), we can find the value of a,
4a = -4
⇒ a = -1
From equation (ii), we can find the value of b,
4b = 8
⇒ b = 2
From equation (iii), we can find the value of c,
4c = 4
⇒ c = 1
And it will satisfy other equations (iv), (v), (vi), (vii), (viii) and (ix) too.
Thus, the matrix A is
If and , then verify (BA)2 ≠ B2A2.
We have,
We need to verify (BA)2 ≠ B2A2.
Take L.H.S: (BA)2
First, compute BA.
We know what order of matrix is,
If a matrix has M rows and N columns, the order of matrix is M × N.
Order of matrix B:
Number of rows = 2
⇒ M = 2
Number of columns = 3
⇒ N = 3
Then, order of matrix = M × N
⇒ Order of matrix B = 2 × 3
Order of matrix A:
Number of rows = 3
⇒ M = 3
Number of columns = 2
⇒ N = 2
Then, order of matrix = M × N
⇒ Order of matrix A = 3 × 2
Since, in order to multiply two matrices, A and B, the number of columns in A must equal the number of rows in B. Thus, if A is an m x n matrix and B is an r x s matrix, n = r.
So, A and B can be multiplied.
Multiply 1st row of matrix B by matching member of 1st column of matrix A, then sum them up.
(2, 1, 2)(3, 1, 2) = (2 × 3) + (1 × 1) + (2 × 2)
⇒ (2, 1, 2)(3, 1, 2) = 6 + 1 + 4
⇒ (2, 1, 2)(3, 1, 2) = 11
Multiply 1st row of matrix B by matching member of 2nd column of matrix A, then sum them up.
(2, 1, 2)(-4, 1, 0) = (2 × -4) + (1 × 1) + (2 × 0)
⇒ (2, 1, 2)(-4, 1, 0) = -8 + 1 + 0
⇒ (2, 1, 2)(-4, 1, 0) = -7
Multiply 2nd row of matrix B by matching member of 1st column of matrix A, then sum them up.
(1, 2, 4)(3, 1, 2) = (1 × 3) + (2 × 1) + (4 × 2)
⇒ (1, 2, 4)(3, 1, 2) = 3 + 2 + 8
⇒ (1, 2, 4)(3, 1, 2) = 13
Multiply 2nd row of matrix B by matching member of 2nd column of matrix A, then sum them up.
(1, 2, 4)(-4, 1, 0) = (1 × -4) + (2 × 1) + (4 × 0)
⇒ (1, 2, 4)(-4, 1, 0) = -4 + 2 + 0
⇒ (1, 2, 4)(-4, 1, 0) = -2
So,
(BA)2 = (BA).(BA)
Similarly,
Take R.H.S: B2A2
Let us first compute B2.
B2 = B.B
In order to multiply two matrices, A and B, the number of columns in A must equal the number of rows in B. Thus, if A is an m x n matrix and B is an r x s matrix, n = r.
Note that in matrix B, number of columns ≠ number of rows.
This means, we can’t find B2.
⇒ L.H.S ≠ R.H.S
Thus, (BA)2 ≠ B2A2.
If possible, find BA and AB, where
We are given matrices A and B, such that
We are required to find BA and AB, if possible.
Since, in order to multiply two matrices, A and B, the number of columns in A must equal the number of rows in B. Thus, if A is an m x n matrix and B is an r x s matrix, n = r.
Let us check for BA.
If a matrix has M rows and N columns, the order of matrix is M × N.
Order of B:
Number of rows = 3
⇒ M = 3
Number of columns = 2
⇒ N = 2
Then, order of matrix B = M × N
⇒ Order of matrix B = 3 × 2
Order of A:
Number of rows = 2
⇒ M = 2
Number of columns = 3
⇒ N = 3
Then, order of matrix A = M × N
⇒ Order of matrix A = 2 × 3
Here,
Number of columns in matrix B = Number of rows in matrix A = 2
So, BA is possible.
Let us check for AB.
Here,
Number of columns in matrix A = Number of rows in matrix B = 3
So, AB is also possible.
Let us find out BA.
Multiply 1st row of matrix B by matching members of 1st column of matrix A, then sum them up.
(4, 1).(2, 1) = (4 × 2) + (1 × 1)
⇒ (4, 1).(2, 1) = 8 + 1
⇒ (4, 1).(2, 1) = 9
Multiply 1st row of matrix B by matching members of 2nd column of matrix A, then sum them up.
(4, 1).(1, 2) = (4 × 1) + (1 × 2)
⇒ (4, 1).(1, 2) = 4 + 2
⇒ (4, 1).(1, 2) = 6
Similarly, let us calculate in the matrix itself.
Now, let us find out AB.
Multiply 1st row of matrix A by matching members of 1st column of matrix B, then sum them up.
(2, 1, 2).(4, 2, 1) = (2 × 4) + (1 × 2) + (2 × 1)
⇒ (2, 1, 2).(4, 2, 1) = 8 + 2 + 2
⇒ (2, 1, 2).(4, 2, 1) = 12
Multiply 1st row of matrix A by matching members of 2nd column of matrix B, then sum them up.
(2, 1, 2).(1, 3, 2) = (2 × 1) + (1 × 3) + (2 × 2)
⇒ (2, 1, 2).(1, 3, 2) = 2 + 3 + 4
⇒ (2, 1, 2).(1, 3, 2) = 9
Similarly, let us calculate in the matrix itself.
Thus, and .
Show by an example that for A ≠ O, B ≠ O, AB = O.
We know that,
In order to multiply two matrices, A and B, the number of columns in A must equal the number of rows in B. Thus, if A is an m x n matrix and B is an r x s matrix, n = r.
We are given that,
A ≠ 0 and B ≠ 0
We need to show that, AB = 0.
For multiplication of A and B,
Number of columns of matrix A = Number of rows of matrix B = 2 (let)
Matrices A and B are square matrices of order 2 × 2.
For AB to become 0, one of the column of matrix A and other row of matrix B must be 0.
For example,
Check: Multiply AB.
Multiply 1st row of matrix A by matching members of 1st column of matrix B, then sum them up.
(0, 1).(3, 0) = (0 × 3) + (1 × 0)
⇒ (0, 1).(3, 0) = 0 + 0 = 0
Similarly, let us do it for the rest of the elements.
Thus, this example justifies the criteria.
Given and . Is (AB)’ = B’A’?
We have two matrices A and B, such that
We need to verify whether (AB)’ = B’A’.
Let us understand what a transpose is.
In linear algebra, the transpose of a matrix is an operator which flips a matrix over its diagonal, that is it switches the row and column indices of the matrix by producing another matrix denoted as AT.
Take L.H.S = (AB)’
So, let us compute AB.
Multiply 1st row of matrix A by matching members of 1st column of matrix B, then sum them up.
(2, 4, 0)(1, 2, 1) = (2 × 1) + (4 × 2) + (0 × 1)
⇒ (2, 4, 0)(1, 2, 1) = 2 + 8 + 0
⇒ (2, 4, 0)(1, 2, 1) = 10
Multiply 1st row of matrix A by matching members of 2nd column of matrix B, then sum them up.
(2, 4, 0)(4, 8, 3) = (2 × 4) + (4 × 8) + (0 × 3)
⇒ (2, 4, 0)(4, 8, 3) = 8 + 32 + 0
⇒ (2, 4, 0)(4, 8, 3) = 40
Similarly, let us do it for the rest of the elements.
So,
Now, for transpose of AB, rows will become columns.
Now, take R.H.S = B’A’
If
Then, if (1, 4) are the elements of 1st row, it will become elements of 1st column, and so on.
Also,
Then, if (2, 4, 0) are the elements of 1st row, it will become elements of 1st column, and so on.
Now, multiply B’A’.
Multiply 1st row of matrix B’ by matching members of 1st column of matrix A’, then sum them up.
(1, 2, 1)(2, 4, 0) = (1 × 2) + (2 × 4) + (1 × 0)
⇒ (1, 2, 1)(2, 4, 0) = 2 + 8 + 0
⇒ (1, 2, 1)(2, 4, 0) = 10
Multiply 1st row of matrix B’ by matching members of 2nd column of matrix A’, then sum them up.
(1, 2, 1)(3, 9, 6) = (1 × 3) + (2 × 9) + (1 × 6)
⇒ (1, 2, 1)(3, 9, 6) = 3 + 18 + 6
⇒ (1, 2, 1)(3, 9, 6) = 27
Similarly, filling up for the rest of the elements.
⇒ L.H.S = R.H.S
Thus, (AB)’ = B’A’.
Solve for x and y:
We are given with a matrix equation,
We need to find x and y.
These matrices can be added easily as they are of same order.
If two matrices are equal, then their corresponding elements are also equal.
This implies,
2x + 3y – 8 = 0 …(i)
x + 5y – 11 = 0 …(ii)
We have two variables, x and y; and two equations. It can be solved.
Rearranging equation (i), we get
2x + 3y = 8 …(iii)
Rearranging equation (ii), then multiplying it by 2 on both sides, we get
x + 5y = 11
2(x + 5y) = 2 × 11
⇒ 2x + 10y = 22 …(iv)
Subtracting equation (iii) from (iv), we get
(2x + 10y) – (2x + 3y) = 22 – 8
⇒ 2x + 10y – 2x – 3y = 14
⇒ 2x – 2x + 10y – 3y = 14
⇒ 7y = 14
⇒ y = 2
Substituting y = 2 in equation (iii), we get
2x + 3(2) = 8
⇒ 2x + 6 = 8
⇒ 2x = 8 – 6
⇒ 2x = 2
⇒ x = 1
Thus, x = 1 and y = 2.
If X and Y are 2 × 2 matrices, then solve the following matrix equations for X and Y
,
We have the matrix equations,
…(i)
…(ii)
Subtracting equation (i) from (ii), we get
…(iii)
Adding equations (i) and (ii), we get
…(iv)
Adding equations (iii) and (iv), we get
Putting the matrix A in equation (iv), we get
Thus, and .
If A = [3 5], B = [7 3], then find a non-zero matrix C such that AC = BC.
We have the matrices A and B, such that
We need to find matric C, such that AC = BC.
Let C be a non-zero matrix of order 2 × 1, such that
But order of C can be 2 × 1, 2 × 2, 2 × 3, 2 × 4, …
[∵ In order to multiply two matrices, A and B, the number of columns in A must equal the number of rows in B. Thus, if A is an m x n matrix and B is an r x s matrix, n = r.
∴, number of columns in matrix A = number of rows in matrix C = 2]
Take AC.
Multiply 1st row of matrix A by matching members of 1st column of matrix C, then sum them up.
(3, 5)(x, y) = (3 × x) + (5 × y)
⇒ (3, 5)(x, y) = 3x + 5y
Now, take BC.
Multiply 1st row of matrix B by matching members of 1st column of matrix C, then sum them up.
(7, 3)(x, y) = (7 × x) + (3 × y)
⇒ (7, 3)(x, y) = 7x + 3y
And,
AC = BC
⇒ [3x + 5y] = [7x + 3y]
⇒ 3x + 5y = 7x + 3y
⇒ 7x – 3x = 5y – 3y
⇒ 4x = 2y
⇒ y = 2x
Then,
Since, C is of orders, 2 × 1, 2 × 2, 2 × 3, …
In general,
Where, k is any real number.
Given an example of matrices A, B and C such that AB = AC, where A is non-zero matrix, but B ≠ C.
We need to form matrices A, B and C such that AB = AC, where A is a non-zero matrix, but B ≠ C.
Take,
First, compute AB.
Multiply 1st row of matrix A by matching members of 1st column of matrix B, then sum them up.
(1, 0)(1, 2) = (1 × 1) + (0 × 2)
⇒ (1, 0)(1, 2) = 1 + 0
⇒ (1, 0)(1, 2) = 1
Similarly, let us do the same for other elements.
Now, let us compute AC.
Multiply 1st row of matrix A by matching members of 1st column of matrix C, then sum them up.
(1, 0)(1, 2) = (1 × 1) + (0 × 2)
⇒ (1, 0)(1, 2) = 1 + 0
⇒ (1, 0)(1, 2) = 1
Similarly, let us do the same for other elements.
Clearly, AB = AC.
Thus, we have found an example that satisfy the required criteria.
If , and , verify:
(i) (AB) C = A (BC)
(ii) A(B + C) = AB + AC
We have matrices A, B and C, such that
In order to multiply two matrices, A and B, the number of columns in A must equal the number of rows in B. Thus, if A is an m x n matrix and B is an r x s matrix, n = r.
(i). We need to verify: (AB)C = A(BC)
Take L.H.S = (AB)C
First, compute AB.
Multiply 1st row of matrix A by matching members of 1st column of matrix B, then sum them up.
(1, 2)(2, 3) = (1 × 2) + (2 × 3)
⇒ (1, 2)(2, 3) = 2 + 6
⇒ (1, 2)(2, 3) = 8
Multiply 1st row of matrix A by matching members of 2nd column of matrix B, then sum them up.
(1, 2)(3, -4) = (1 × 3) + (2 × -4)
⇒ (1, 2)(3, -4) = 3 – 8
⇒ (1, 2)(3, -4) = -5
Similarly, let us fill for the rest of elements.
Let .
Now, compute for DC. [∵ (AB)C = DC]
Multiply 1st row of matrix D by matching members of 1st column of matrix C, then sum them up.
(8, -5)(1, -1) = (8 × 1) + (-5 × -1)
⇒ (8, -5)(1, -1) = 8 + 5
⇒ (8, -5)(1, -1) = 13
Multiply 1st row of matrix D by matching members of 2nd column of matrix C, then sum them up.
(8, -5)(0, 0) = (8 × 0) + (-5 × 0)
⇒ (8, -5)(0, 0) = 0 + 0
⇒ (8, -5)(0, 0) = 0
Similarly, let us fill for the rest of elements.
So,
Take R.H.S: A(BC)
First, compute BC.
Multiply 1st row of matrix B by matching members of 1st column of matrix C, then sum them up.
(2, 3)(1, -1) = (2 × 1) + (3 × -1)
⇒ (2, 3)(1, -1) = 2 – 3
⇒ (2, 3)(1, -1) = -1
Multiply 1st row of matrix B by matching members of 2nd column of matrix C, then sum them up.
(2, 3)(0, 0) = (2 × 0) + (3 × 0)
⇒ (2, 3)(0, 0) = 0 + 0
⇒ (2, 3)(0, 0) = 0
Similarly, let us fill for the rest of the elements.
Let .
Now, compute for AE.
Multiply 1st row of matrix A by matching members of 1st column of matrix E, then sum them up.
(1, 2)(-1, 7) = (1 × -1) + (2 × 7)
⇒ (1, 2)(-1, 7) = -1 + 14
⇒ (1, 2)(-1, 7) = 13
Multiply 1st row of matrix A by matching members of 2nd column of matrix E, then sum them up.
(1, 2)(0, 0) = (1 × 0) + (2 × 0)
⇒ (1, 2)(0, 0) = 0 + 0
⇒ (1, 2)(0, 0) = 0
Similarly, repeat the step for the other elements.
So,
Thus, (AB)C = A(BC).
(ii). We need to verify: A(B + C) = AB + AC
Take L.H.S: A(B + C)
Add B + C.
Let B + C = F, such that
Now, multiply A and F.
Multiply 1st row of matrix A by matching members of 1st column of matrix F, then sum them up.
(1, 2)(3, 2) = (1 × 3) + (2 × 2)
⇒ (1, 2)(3, 2) = 3 + 4
⇒ (1, 2)(3, 2) = 7
Multiply 1st row of matrix A by matching members of 2nd column of matrix F, then sum them up.
(1, 2)(3, -4) = (1 × 3) + (2 × -4)
⇒ (1, 2)(3, -4) = 3 – 8
⇒ (1, 2)(3, -4) = -5
Similarly, repeat the steps for the other elements.
So,
Now, take R.H.S: AB + AC
Compute AB.
Multiply 1st row of matrix A by matching members of 1st column of matrix B, then sum them up.
(1, 2)(2, 3) = (1 × 2) + (2 × 3)
⇒ (1, 2)(2, 3) = 2 + 6
⇒ (1, 2)(2, 3) = 8
Multiply 1st row of matrix A by matching members of 2nd column of matrix B, then sum them up.
(1, 2)(3, -4) = (1 × 3) + (2 × -4)
⇒ (1, 2)(3, -4) = 3 – 8
⇒ (1, 2)(3, -4) = -5
Similarly, repeat the steps for the other elements.
So,
Now, compute AC.
Multiply 1st row of matrix A by matching members of 1st column of matrix C, then sum them up.
(1, 2)(1, -1) = (1 × 1) + (2 × -1)
⇒ (1, 2)(1, -1) = 1 – 2
⇒ (1, 2)(1, -1) = -1
Multiply 1st row of matrix A by matching members of 2nd column of matrix C, then sum them up.
(1, 2)(0, 0) = (1 × 0) + (2 × 0)
⇒ (1, 2)(0, 0) = 0 + 0
⇒ (1, 2)(0, 0) = 0
Similarly, repeat the steps for the other elements.
So,
Adding AB + AC.
Matrices of same order can be added or subtracted.
So, clearly L.H.S = R.H.S.
Thus, A(B + C) = AB + AC.
If , , prove that
Given: We have matrices P and Q, such that
To Prove:
Proof: First, we shall compute PQ.
Since, in order to multiply two matrices, A and B, the number of columns in A must equal the number of rows in B. Thus, if A is an m x n matrix and B is an r x s matrix, n = r.
Order of P = 3 × 3
And order of Q = 3 × 3
Number of columns of matrix P = Number of rows of matrix Q = 3
So, P and Q can be multiplied.
So, multiply 1st row of matrix P by matching members of 1st column of matrix Q, then sum them up.
(x, 0, 0)(a, 0, 0) = (x × a) + (0 × 0) + (0 × 0)
⇒ (x, 0, 0)(a, 0, 0) = xa
Multiply 1st row of matrix P by matching members of 2nd column of matrix Q, then sum them up.
(x, 0, 0)(0, b, 0) = (x × 0) + (0 × b) + (0 × 0)
⇒ (x, 0, 0)(0, b, 0) = 0
Similarly, repeat the steps to find other elements.
So,
…(i)
Now, we shall compute QP.
Multiply 1st row of matrix Q by matching members of 1st column of matrix P, then sum them up.
(a, 0, 0)(x, 0, 0) = (a × x) + (0 × 0) + (0 × 0)
⇒ (a, 0, 0)(x, 0, 0) = xa + 0 + 0
⇒ (a, 0, 0)(x, 0, 0) = xa
Similarly, repeat the steps to find other elements.
So,
Thus, .
If , find A.
We are given with a matrix equation,
We need to find A.
Take L.H.S:
Let us solve , where
Then,
Order of X = 1 × 3
Order of Y = 3 × 3
Then, resulting order of matrix Z(say) = 1 × 3 [Let Z = XY]
Multiply 1st row of matrix X by matching members of 1st column of matrix Y, then sum them up.
(2, 1, 3)(-1, -1, 0) = (2 × -1) + (1 × -1) + (3 × 0)
⇒ (2, 1, 3)(-1, -1, 0) = -2 – 1 + 0
⇒ (2, 1, 3)(-1, -1, 0) = -3
Multiply 1st row of matrix X by matching members of 2nd column of matrix Y, then sum them up.
(2, 1, 3)(0, 1, 1) = (2 × 0) + (1 × 1) + (3 × 1)
⇒ (2, 1, 3)(0, 1, 1) = 0 + 1 + 3
⇒ (2, 1, 3)(0, 1, 1) = 4
Multiply 1st row of matrix X by matching members of 3rd column of matric Y, then sum them up.
(2, 1, 3)(-1, 0, 1) = (2 × -1) + (1 × 0) + (3 × 1)
⇒ (2, 1, 3)(-1, 0, 1) = -2 + 0 + 3
⇒ (2, 1, 3)(-1, 0, 1) = 1
So,
Now, multiplying Z by .
Order of Z = 1 × 3
Order of Q = 3 × 1
Then, order of the resulting matrix = 1 × 1
Multiply 1st row of matrix Z by matching members of 1st column of matrix Q, then sum them up.
(-3, 4, 1)(1, 0, -1) = (-3 × 1) + (4 × 0) + (1 × -1)
⇒ (-3, 4, 1)(1, 0, -1) = -3 + 0 – 1
⇒ (-3, 4, 1)(1, 0, -1) = -4
Now, since
Thus,
A = [-4]
If , and , verify that A(B + C) = (AB + AC).
We are given the matrices A, B and C, such that
We need to verify that, A(B + C) = AB + AC.
Take L.H.S: A(B + C)
Solving (B + C).
These matrices can be added as they have same order.
Now, multiply A by (B + C).
Let (B + C) = D.
We have,
AD = A(B + C)
Order of A = 1 × 2
Order of D = 2 × 3
Then, order of resulting matrix = 1 × 3
Multiply 1st row of matrix A by matching members of 1st column of matrix D, then sum them up.
(2, 1)(4, 9) = (2 × 4) + (1 × 9)
⇒ (2, 1)(4, 9) = 8 + 9
⇒ (2, 1)(4, 9) = 17
Multiply 1st row of matrix A by matching members of 2nd column of matrix D, then sum them up.
(2, 1)(5, 7) = (2 × 5) + (1 × 7)
⇒ (2, 1)(5, 7) = 10 + 7
⇒ (2, 1)(5, 7) = 17
Multiply 1st row of matrix A by matching members of 3rd column of matrix D, then sum them up.
(2, 1)(5, 8) = (2 × 5) + (1 × 8)
⇒ (2, 1)(5, 8) = 10 + 8
⇒ (2, 1)(5, 8) = 18
So,
Now, take R.H.S: AB + AC
Let us compute AB.
Order of A = 1 × 2
Order of B = 2 × 3
Then, order of AB = 1 × 3
Multiply 1st row of matrix A by matching members of 1st column of matrix B, then sum them up.
(2, 1)(5, 8) = (2 × 5) + (1 × 8)
⇒ (2, 1)(5, 8) = 10 + 8
⇒ (2, 1)(5, 8) = 18
Similarly, repeat steps to find the rest of the elements.
Now, let us compute AC.
Order of AC = 1 × 3
Multiply 1st row of matrix A by matching members of 1st column of matrix C, then sum them up.
(2, 1)(-1, 1) = (2 × -1) + (1 × 1)
⇒ (2, 1)(-1, 1) = -2 + 1
⇒ (2, 1)(-1, 1) = -1
Similarly, repeat steps to find the rest of the elements.
Add, AB + AC.
Thus,
A(B + C) = AB + AC.
If , then verify that A2 + A = A(A + I), where I is 3 × 3 unit matrix.
We are given with matrix A, such that
We need to verify A2 + A = A(A + I).
Take L.H.S: A2 + A.
Solve for A2.
A2 = A.A
Multiply 1st row of matrix A by matching members of 1st column of matrix A, then sum them up.
(1, 0, -1)(1, 2, 0) = (1 × 1) + (0 × 2) + (-1 × 0)
⇒ (1, 0, -1)(1, 2, 0) = 1 + 0 + 0
⇒ (1, 0, -1)(1, 2, 0) = 1
Similarly, repeat steps to fill for the other elements.
Now, add A2 and A,
Take R.H.S: A(A + I)
First, let us solve for (A + I).
Multiply (A + I) from A.
Since, L.H.S = R.H.S.
Thus, (A2 + A) = A(A + I).
If and , then verify that:
(i) (A’)’ = A
(ii) (AB)’ = B’A’
(iii) (kA)’ = (kA’).
We are given with matrices A and B, such that
(i). We need to verify that, (A’)’ = A.
Take L.H.S: (A’)’
In linear algebra, the transpose of a matrix is an operator which flips a matrix over its diagonal, that is it switches the row and column indices of the matrix by producing another matrix denoted as AT or A’.
So, in transpose of a matrix,
Rows of matrix becomes columns of the same matrix.
So,
If ,
(0, -1, 2) and (4, 3, -4) are 1st and 2nd rows respectively, will become 1st and 2nd columns respectively.
Then
Also, if ,
Similarly, (0, 4), (-1, 3) and (2, -4) are 1st, 2nd and 3rd rows respectively, will become 1st, 2nd and 3rd columns respectively.
Then
Note, that
Thus, verified that (A’)’ = A.
(ii). We need to verify that, (AB)’ = B’A’.
Take L.H.S: (AB)’
Compute AB.
Order of A = 2 × 3
Order of B = 3 × 2
Then, order of AB = 2 × 2
Multiplying 1st row of matrix A by matching members of 1st column of matrix B, then sum them up.
(0, -1, 2)(4, 1, 2) = (0 × 4) + (-1 × 1) + (2 × 2)
⇒ (0, -1, 2)(4, 1, 2) = 0 – 1 + 4
⇒ (0, -1, 2)(4, 1, 2) = 3
Similarly, repeat the process to find the other elements.
Transpose of AB is (AB)’.
(3, 9) and (11, -15) are 1st and 2nd rows respectively, will become 1st and 2nd columns respectively.
Take R.H.S: B’A’
If ,
(4, 0), (1, 3) and (2, 6) are 1st, 2nd and 3rd rows of matrix B respectively, will become 1st, 2nd and 3rd columns respectively.
Also, if ,
(0, -1, 2) and (4, 3, -4) are 1st and 2nd rows respectively, will become 1st and 2nd columns respectively.
Multiply B’ by A’.
Order of B’ = 2 × 3
Order of A’ = 3 × 2
Then, order of B’A’ = 2 × 2
Multiply 1st row of matrix B’ by matching members of 1st column of matrix A’, then sum them up.
(4, 1, 2)(0, -1, 2) = (4 × 0) + (1 × -1) + (2 × 2)
⇒ (4, 1, 2)(0, -1, 2) = 0 – 1 + 4
⇒ (4, 1, 2)(0, -1, 2) = 3
Similarly, repeat the same steps to find out other elements.
Since, L.H.S = R.H.S.
Thus, (AB)’ = B’A’.
(iii). We need to verify that, (kA)’ = kA’.
Take L.H.S: (kA)’
We know that,
Multiply k on both sides, (k is a scalar quantity)
Now, to find transpose of kA,
(0, -k, 2k) and (4k, 3k, -4k) are 1st and 2nd rows of matrix kA respectively, will become 1st and 2nd columns respectively.
Take R.H.S: kA’
If
Then, for transpose of A,
(0, -1, 2) and (4, 3, -4) are 1st and 2nd rows of matrix A respectively, will become 1st and 2nd columns respectively.
Multiply k on both sides,
Note that, L.H.S = R.H.S.
Thus, (kA)’ = kA’.
If then verify that:
(i) (2A + B)’ = 2A’ + B’
(ii) (A – B)’ = A’ – B’.
We are given matrices A and B, such that
In linear algebra, the transpose of a matrix is an operator which flips a matrix over its diagonal, that is it switches the row and column indices of the matrix by producing another matrix denoted as AT or A’.
So, in transpose of a matrix,
Rows of matrix becomes columns of the same matrix.
(i). We need to verify that, (2A + B)’ = 2A’ + B’.
Take L.H.S: (2A + B)’
Substitute the matrices A and B, in (2A + B)’.
For transpose of (2A + B),
(3, 6), (14, 6) and (17, 15) are 1st, 2nd and 3rd rows respectively, will become 1st, 2nd and 3rd columns respectively.
Take R.H.S: 2A’ + B’
If ,
(1, 2), (4, 1) and (5, 6) are 1st, 2nd and 3rd rows respectively, will become 1st, 2nd and 3rd columns respectively.
Multiply both sides by 2,
Also,
If .
(1, 2), (6, 4) and (7, 3) are 1st, 2nd and 3rd rows respectively, will become 1st, 2nd and 3rd columns respectively.
Now, add 2A’ and B’.
Since, L.H.S = R.H.S
Thus, (2A + B)’ = 2A’ + B’.
(ii). We need to verify that, (A – B)’ = A’ – B’.
Take L.H.S: (A – B)’
Substitute the matrices A and B in (A – B)’.
To find transpose of (A – B),
(0, 0), (-2, -3) and (-2, 3) are 1st, 2nd and 3rd rows respectively, will become 1st, 2nd and 3rd columns respectively.
Take R.H.S: A’ – B’
If ,
(1, 2), (4, 1) and (5, 6) are 1st, 2nd and 3rd rows respectively, will become 1st, 2nd and 3rd columns respectively.
Also,
If ,
(1, 2), (6, 4) and (7, 3) are 1st, 2nd and 3rd rows respectively, will become 1st, 2nd and 3rd columns respectively.
Subtract B’ from A’,
Since, L.H.S = R.H.S
Thus, (A – B)’ = A’ – B’.
Show that A’A and AA’ are both symmetric matrices for any matrix A.
We must understand,
In linear algebra, a symmetric matrix is a square matrix that is equal to its transpose. Formally, because equal matrices have equal dimensions, only square matrices can be symmetric.
And we know that, transpose of AB is given by
(AB)’ = B’A’
Using this result, take transpose of A’A.
Transpose of A’A = (A’A)T = (A’A)’
Using, transpose of A’A = (A’A)’
⇒ (A’A)’ = A’(A’)’
And also,
(A’)’ = A
So,
(A’A)’ = A’A
Since, (A’A)’ = A’A
This means, A’A is symmetric matrix for any matrix A.
Now, take transpose of AA’.
Transpose of AA’ = (AA’)’
⇒ (AA’)’ = (A’)’A’ [∵ (AB)’ = B’A’]
⇒ (AA’)’ = AA’ [∵ (A’)’ = A]
Since, (AA’)’ = AA’
This means, AA’ is symmetric matrix for any matrix A.
Thus, A’A and AA’ are symmetric matrix for any matrix A.
Let A and B be square matrices of the order 3 × 3. Is (AB)2 = A2B2 ? Give reasons.
We are given that,
A and B are square matrices of the order 3 × 3.
We need to check whether (AB)2 = A2B2 is true or not.
Take (AB)2.
(AB)2 = (AB)(AB)
[∵ A and B are of order (3 × 3) each, A and B can be multiplied; A and B be any matrices of order (3 × 3)]
⇒ (AB)2 = ABAB
[∵ (AB)(AB) = ABAB]
⇒ (AB)2 = AABB
[∵ ABAB = AABB; as A can be multiplied with itself and B can be multiplied by itself]
⇒ (AB)2 = A2B2
So, note that, (AB)2 = A2B2 is possible.
But this is possible if and only if BA = AB.
And BA = AB is always true whenever A and B are square matrices of any order. And for BA = AB,
(AB)2 = A2B2
Show that if A and B are square matrices such that AB = BA, then (A + B)2 = A2 + 2AB + B2.
By matrix multiplication we can write:
(A + B)2 = (A+B)(A+B) = A2 + AB + BA + B2
We know that matrix multiplication is not commutative but it is given that : AB = BA
∴ (A + B)2 = A2 + AB + AB + B2
⇒ (A + B)2 = A2 + 2AB + B2 …proved
Given A = B = and C =
LHS = A + (B + C) =
⇒ LHS =
⇒ LHS =
RHS = (A + B) + C =
⇒ RHS =
⇒ RHS =
Clearly LHS = RHS =
Hence,
A + (B + C) = (A + B) + C …proved
Let and a = 4, b = –2.
Show that:
A(BC) = (AB)C
To prove: A(BC) = (AB)C
LHS = A(BC) =
⇒ LHS =
⇒ LHS =
⇒ LHS =
RHS = (AB)C =
Performing matrix multiplication as done for LHS
⇒ RHS =
⇒ RHS =
Clearly LHS = RHS =
∴ A(BC) = (AB)C …proved
Let and a = 4, b = –2.
Show that:
(a + b)B = aB + bB
To prove: (a + b)B = aB + bB
Given, a = 4 and b = -2
LHS = (4+(-2))B =
RHS = aB + bB =
⇒ RHS =
Clearly LHS = RHS =
Hence,
(a + b)B = aB + bB …proved
Let and a = 4, b = –2.
Show that:
a(C – A) = aC –aA
To prove: a(C – A) = aC –aA
As, LHS = a(C – A) = 4
⇒ LHS = 4
RHS = aC – aA =
⇒ aC – aA =
Clearly LHS = RHS =
Hence,
a(C – A) = aC –aA …proved
Let and a = 4, b = –2.
Show that:
(AT)T = A
To prove: (AT)T = A
As transpose of a matrix is obtained by interchanging rows with respective columns.
LHS = (AT)T = = RHS
Hence, proved.
Let and a = 4, b = –2.
Show that:
(bA)T = bAT
a) To prove: (bA)T = bAT
As, LHS = (bA)T = (-2A)T
⇒ LHS =
Similarly,
RHS =
Clearly LHS = RHS =
Hence, (bA)T = bAT …proved
Let and a = 4, b = –2.
Show that:
(AB)T = BT AT
b) To prove: (AB)T = BTAT
Clearly, LHS = (AB)T =
First multiplying the matrix and then taking the transpose.
∴ LHS =
⇒ LHS =
∴ LHS =
As RHS = BTAT
We will first take transpose of matrices and then multiply
RHS =
⇒ RHS =
Clearly, LHS = RHS =
Hence (AB)T = BTAT …proved
Let and a = 4, b = –2.
Show that:
(A – B)C = AC – BC
c) To prove: (A – B)C = AC – BC
As, LHS = (A – B)C
Putting the values of A,B and C and multiplying by rule of matrix multiplication.
LHS =
⇒ LHS =
RHS = AC – BC =
⇒ RHS =
Clearly, LHS = RHS =
Hence (A-B)C = AC - BC…proved
Let and a = 4, b = –2.
Show that:
(A – B)T = AT – BT
To Prove: (A – B)T = AT - BT
LHS = (A – B)T =
RHS = AT – BT =
∴ RHS =
Clearly, LHS = RHS =
Hence (A-B)T = AT – BT …proved
If then show that
As A =
∴ A2 =
By matrix multiplication:
A2 =
⇒ A2 =
As we know that:
2 sin θ cos θ = sin 2θ and cos2 θ – sin2 θ = cos 2θ
∴ A2 = …Hence proved
If and x2 = –1, then show that (A + B)2 = A2 + B2.
As, LHS = (A + B)2 =
⇒ LHS =
By matrix multiplication we can write LHS as –
LHS =
⇒ LHS =
Given x2 = -1
∴ LHS =
RHS = A2 + B2 =
⇒ RHS =
By matrix multiplication we can write-
RHS =
Given x2 = -1
∴ RHS =
Clearly RHS = LHS =
Hence, (A + B)2 = A2 + B2 …proved
Verify that A2 = I when
We need to prove that: A2 = I =
∵ A =
∴ A2 =
By matrix multiplication we have-
A2 =
⇒ A2 =
∴ A2 =
Hence Verified
Prove by Mathematical Induction that (A’)n = (An)’, where n ∈ N for any square matrix A.
By principle of mathematical induction we say that if a statement P(n) is true for n = 1 and if we assume P(k) to be true for some random natural number k and usnig it if we prove P(k+1) to be true we can say that P(n) is true for all natural numbers.
We are given to prove that (A’)n = (An)’.
Let P(n) be the statement : (A’)n = (An)’.
Clearly, P(1): (A’)1 = (A1)’
⇒ P(1) : A’ = A’
⇒ P(1) is true
Let P(k) be true.
∴ (A’)k = (Ak)’ …(1)
Let’s take P(k+1) now:
∵ (Ak+1)’ = (AkA)’
We know that by properties of transpose of a matrix:
(AB)T = BTAT
∴ (AkA)’ = A’(Ak)’ = A’(A’)k = (A’)k+1
Thus, (Ak+1)’ = (A’)k+1
∴ P(k+1) is true.
Hence,
We can say that: (A’)n = (An)’ is true for all n ∈ N.
Find inverse, by elementary row operations (if possible), of the following matrices.
Let A =
To apply elementary row transformations we write:
A = IA where I is the identity matrix
We proceed with operations in such a way that LHS becomes I and the transformations in I give us a new matrix such that
I = XA
And this X is called inverse of A = A-1
So we have:
Applying R2→ R2 + 5R1
⇒
Applying R2→ (1/22)R2
⇒
Applying R1→ R1 – 3R2
⇒
As we got Identity matrix in LHS.
∴ A-1 =
Find inverse, by elementary row operations (if possible), of the following matrices.
Let B =
To apply elementary row transformations we write:
B = IB where I is the identity matrix
We proceed with operations in such a way that LHS becomes I and the transformations in I give us a new matrix such that
I = XB
And this X is called inverse of B = B-1
So we have:
Applying R2→ R2 + 2R1
⇒
As we got all zeroes in one of the row of matrix in LHS.
So by any means we can make identity matrix in LHS.
∴ inverse of B does not exist.
B-1 does not exist. …ans
If then find values of x, y, z and w.
Given,
As the 2 matrices are equal. So corresponding elements of both the matrix must also hold the equality.
∴ xy = 8 ; w = 4 ; z + 6 = 0 and x + y = 6
Hence, we get:
w = 4
z = -6
∵ x + y = 6
⇒ y = 6 – x
∴ x(6-x) = 8
⇒ x2 – 6x + 8 = 0
⇒ x2 – 4x – 2x + 8 = 0
⇒ x(x – 4) – 2(x – 4) = 0
⇒ (x – 2)(x – 4) = 0
⇒ x = 2 or x = 4
When x = 2 ; y = 4
And when x = 4 ; y = 2
Thus,
x = 2 or 4 ; y = 4 or 2 ; z = -6 and w = 4 …ans
If find a matrix C such that 3A + 5B + 2C is a null matrix.
Given that:
3A + 5B + 2C = O = null matrix
C = ?
As,
⇒
⇒
∴ 2C =
⇒ 2C =
∴ C = …ans
If then find A2 – 5A – 14I. Hence, obtain A3.
Given, A =
∴ A2 =
By matrix multiplication we can write:
A2 =
⇒ A2 = …(1)
As we have to find: A2 – 5A – 14I
∴ A2 – 5A – 14I =
⇒ A2 – 5A – 14I =
⇒ A2 – 5A – 14I =
⇒ A2 – 5A – 14I = = O
We need to find value of A3 using the above equation:
Now we have,
A2 – 5A – 14I = O
⇒ A2 = 5A + 14I
Multiplying with A both sides
⇒ A2.A = 5A.A + 14IA
⇒ A3 = 5A2 + 14A
Using equation 1 we get:
⇒ A3 =
⇒ A3 =
⇒ A3 =
Find the value of a, b, c and d, if
Given,
We need to find the value of a, b, c and d.
As,
⇒
As both matrices are equal so their corresponding elements must also be equal.
∴ 3a = a + 4
⇒ 2a = 4
⇒ a = 2
Similarly,
3b = 6 + a + b
⇒ 2b = 6 + a
As from above a = 2
∴ 2b = 6+2 = 8
⇒ b = 4
Also 3d = 2d + 3
⇒ d = 3
And,
3c = -1 + c + d
⇒ 2c = d – 1
⇒ 2c = 3-1
⇒ c = 2/2 = 1
Thus a = 2, b = 4, c = 1 and d = 3.
Find the matrix A such that
Given,
As A is multiplied with a matrix of order 3×2 and gives a resultant matrix of order 3×3
For matrix multiplication to be possible A must have 2 rows and as resultant matrix is of 3rd order A must have 3 columns
∴ A is matrix of order 2×3
Let A = where a, b, c, d, e and f are unknown variables.
∴
∴ By matrix multiplication we have-
By equating the elements of 2 equal matrices we get-
a = 1 ; b = -2 and c = -5
also,
2a – d = -1 ⇒ d = 2a + 1 = 2 + 1 = 3
∴ d = 3
2b – e = -8 ⇒ e = 2b + 8 = -4 + 8 = 4
∴ e = 4
Similarly, f = 2c + 10 = 0
∴ A =
If find A2 + 2A + 7I
Given,
∵ A2 = A.A
⇒ A2 =
By matrix multiplication, we get
A2 =
⇒ A2 =
∴ A2 + 2A + 7I =
⇒ A2 + 2A + 7I =
⇒ A2 + 2A + 7I =
⇒ A2 + 2A + 7I = …ans
If and A–1 = A’, find value of α.
Given, A =
We know that transpose of a matrix is obtained by interchanging rows with respective columns.
∴ A’ =
Inverse of a matrix A = A-1 =
Clearly |A| =
∴ |A| = {using trigonometric identity}
Adj(A) is given by the transpose of the cofactor matrix.
∴ adj(A) =
∴ A-1 =
According to question:
A’ = A-1
∴
As both the matrices are equal irrespective of the value of α.
∴ α can be any real number …ans
If the matrix is a skew symmetric matrix, find the values of a, b and c.
A matrix is said to be skew-symmetric if A = -A’
Let, A =
As, A is skew symmetric matrix.
∴ A = -A’
⇒
⇒
⇒
Equating the respective elements of both matrices we get-
a = -2 ; c = -3 ; b = -b ⇒ 2b = 0 ⇒ b = 0
Thus, we have-
a = -2 , b = 0 and c = -3 …ans
If then show that
P(x).P(y) = P(x + y) = P(y).P(x)
Given,
P(x) = …(1)
P(y) =
∴ P(x).P(y) =
⇒ P(x).P(y) =
We know that-
cos x cos y + sin x sin y = cos (x – y)
cos x sin y + sin x cos y = sin (x + y)
and cos x cos y – sin x sin y = cos (x + y)
⇒ P(x).P(y) =
In comparison with equation 1 we can say that:
…(2)
∴ P(x).P(y) = P(x + y)
Similarly, we can show for P(y).P(x):
P(y).P(x) =
By matrix multiplication, we have –
P(y).P(x) =
⇒ P(y).P(x) =
⇒ P(y).P(x) = …(3)
∴ From equation 2 and 3:
P(x).P(y) = P(y).P(x) = P(x + y) …ans
If A is square matrix such that A2 = A, show that (I + A)3 = 7A + I.
Given that,
A2 = A
∵ (a+b)3 = a3 + b3 + 3a2b + 3ab2
As, (I + A)3 = I3 + A3 + 3I2A + 3IA2
∵ I is an identity matrix.
∴ I3 = I2 = I
∴ (I + A)3 = I + A3 + 3IA + 3IA
As, I is an identity matrix.
∴ IA = AI = A
⇒ (I + A)3 = I + A3 + 6IA
∵ A2 = A
⇒ (I + A)3 = I + A2.A + 6A
⇒ (I + A)3 = I + A.A + 6A
⇒ (I + A)3 = I + A2 + 6A
⇒ (I + A)3 = I + A + 6A = I + 7A
Hence,
(I + A)3 = I + 7A …proved
If A, B are square matrices of same order and B is a skew-symmetric matrix, show that A’ BA is skew symmetric.
A matrix is said to be skew-symmetric if A = -A’
Given, B is a skew-symmetric matrix.
∴ B = -B’
Let C = A’ BA …(1)
We have to prove C is skew-symmetric.
To prove: C = -C’
As C’ = (A’BA)’
We know that: (AB)’ = B’A’
⇒ C’ = (A’BA)’ = A’B’(A’)’
⇒ C’ = A’B’A {∵ (A’)’ = A}
⇒ C’ = A’(-B)A
⇒ C’ = -A’BA …(2)
From equation 1 and 2:
We have,
C’ = -C
Thus we say that C = A’ BA is a skew-symmetric matrix.
If AB = BA for any two square matrices, prove by mathematical induction that (AB)n = An Bn.
By principle of mathematical induction we say that if a statement P(n) is true for n = 1 and if we assume P(k) to be true for some random natural number k and usnig it if we prove P(k+1) to be true we can say that P(n) is true for all natural numbers.
We are given to prove that (AB)n = AnBn
Let P(n) be the statement : (AB)n = AnBn
Clearly, P(1): (AB)1 = A1B1
⇒ P(1) : AB = AB
⇒ P(1) is true
Let P(k) be true.
∴ (AB)k = AkBk …(1)
Let’s take P(k+1) now:
∵ (AB)k+1 = (AB)k(AB)
⇒ (AB)k+1 = AkBk(AB)
NOTE: As we know that Matrix multiplication is not commutative. So we can’t write directly that AkBk(AB) = Ak+1Bk+1
But we are given that AB = BA
∴ (AB)k+1 = AkBk(AB)
⇒ (AB)k+1 = AkBk-1(BAB)
As AB = BA
⇒ (AB)k+1 = AkBk-1(ABB)
⇒ (AB)k+1 = AkBk-1(AB2)
⇒ (AB)k+1 = AkBk-2(BAB2)
⇒ (AB)k+1 = AkBk-2(ABB2)
⇒ (AB)k+1 = AkBk-2(AB3)
We observe that one power of B is decreasing while other is increasing. After certain repetitions decreasing power of B will become I
And at last step:
⇒ (AB)k+1 = AkI(ABk+1)
⇒ (AB)k+1 = AkABk+1
⇒ (AB)k+1 = Ak+1Bk+1
Thus P(k+1) is true when P(k) is true.
∴ (AB)n = An Bn ∀ n ∈ N when AB = BA.
Find x, y, z if satisfies A’ = A–1
Given,
We need to find x, y and z such that A’ = A-1
If A’ = A-1
Pre-multiplying A on both sides:
AA’ = AA-1
⇒ AA’ = I where I is the identity matrix.
∴
⇒
By matrix multiplication we have:
⇒
On equating the corresponding elements of matrix.
We need basically 3 equations as we have 3 variables to solve for. You can pick any three elements and equate them.
We have:
4y2 + z2 = 1 …(1)
x2 + y2 + z2 = 1 …(2)
2y2 – z2 = 0 …(3)
Adding equation 2 and 3:
6y2 = 1
⇒ y2 = 1/6
∴
From equation 3:
Z2 = 2y2
⇒ z2 = 2(1/6)
∴ z2 = 1/3
∴
From equation 2:
x2 = 1 – y2 – z2
⇒ x2 = 1 – (1/6) – (1/3)
⇒ x2 = 1 – 1/2 = 1/2
∴
Thus,
; and
If possible, using elementary row transformations, find the inverse of the following matrices
Let A =
To apply elementary row transformations we write:
A = IA where I is the identity matrix
We proceed with operations in such a way that LHS becomes I and the transformations in I give us a new matrix such that
I = XA
And this X is called inverse of A = A-1
Note: Never apply row and column transformations simultaneously over a matrix.
So we have:
Applying R2→ R2 + R1
⇒ =
Applying R3→ R3 - R2
⇒ =
Applying R1→ R1 + R2
⇒ =
Applying R2→ R2 - 3R1
=
Applying R3→ (-1)R3
⇒ =
Applying R1→ R1 + 10R3 and R2→ R2 + 17R3
⇒ =
Applying R1→ (-1)R1 and R2→ (-1)R2
⇒ =
As we got Identity matrix in LHS.
∴ A-1 =
If possible, using elementary row transformations, find the inverse of the following matrices
Let A =
To apply elementary row transformations we write:
A = IA where I is the identity matrix
We proceed with operations in such a way that LHS becomes I and the transformations in I give us a new matrix such that
I = XA
And this X is called inverse of A = A-1
Note: Never apply row and column transformations simultaneously over a matrix.
So we have:
Applying R2→ R2 + R3
⇒
Applying R1→ R1 - 2R3
⇒
Applying R2→ R1 + R2
⇒
As second row of LHS contains all zeros, So by anyhow we are never going to get Identity matrix in LHS.
∴ Inverse of A does not exist.
A-1 does not exist. …ans
If possible, using elementary row transformations, find the inverse of the following matrices
Let A =
To apply elementary row transformations we write:
A = IA where I is the identity matrix
We proceed with operations in such a way that LHS becomes I and the transformations in I give us a new matrix such that
I = XA
And this X is called inverse of A = A-1
Note: Never apply row and column transformations simultaneously over a matrix.
So we have:
Applying R2→ R2 – (5/2)R1
⇒
Applying R3→ R3 - R2
⇒
Applying R1→ R1 + R2
⇒ =
Applying R2→ R2 - 5R3
=
Applying R1→ R1 + 2R3
⇒ =
Applying R1→ (1/2)R1 and R3→ 2R3
⇒ =
As we got Identity matrix in LHS.
∴ A-1 =
The matrix is a
A. square matrix
B. diagonal matrix
C. unit matrix
D. none
As P has equal number of rows and columns and thus it matches with the definition of square matrix.
The given matrix does not satisfy the definition of unit and diagonal matrices.
∴ Option (A) is the only correct answer.
Total number of possible matrices of order 3 × 3 with each entry 2 or 0 is
A. 9
B. 27
C. 81
D. 512
As matrix has total 3× 3 = 9 elements.
As each element can take 2 values (0 or 2)
∴ By simple counting principle we can say that total number of possible matrices = total number of ways in which 9 elements can take possible values = 29 = 512
Clearly it matches with option D.
∴ option (D) is the only correct answer.
If then the value of x + y is
A. x = 3, y = 1
B. x = 2, y = 3
C. x = 2, y = 4
D. x = 3, y = 3
Given,
By equality of two matrices, we have-
4x = x + 6
⇒ 3x = 6 ⇒ x = 2
Also, 2x + y = 7
⇒ y = 7 – 2x = 7 – 4 = 3
∴ y = 3
As only option (B) matches with our answer.
∴ Option(B) is the correct answer.
If then A – B is equal to
A. I
B. O
C. 2I
D.
A very basic idea of Inverse trigonometric function is required to solve the problem.
cos-1 x + sin-1 x = π/2 and cot-1 x + tan-1 x = π/2
As,
And
∴ A – B =
⇒ A – B =
∴ A – B =
Clearly It matches with option (D)
∴ option(D) is the only correct answer.
If A and B are two matrices of the order 3 × m and 3 × n, respectively, and m = n, then the order of matrix (5A – 2B) is
A. m × 3
B. 3 × 3
C. m × n
D. 3 × n
As order of A is 3 × m and order of B is 3 × n
As m = n. So, order of A and B is same = 3 × m
∴ subtraction is possible.
And (5A – 3B) also has same order.
If then A2 is equal to
A.
B.
C.
D.
Let A =
∴ A2 =
By matrix multiplication:
⇒ A2 = which matches with option (D)
∴ Option (D) is the correct answer.
If matrix , where aij = 1 if i ≠ j
aij = 0 if i = j, then A2 is equal to
A. I
B. A
C. 0
D. None of these
According to question:
a11 = 0 , a12 = 1 , a21 = 1 and a22 = 0
∴ A =
∴ A2 =
By matrix multiplication:
⇒ A2 = which matches with option (A)
∴ Option (A) is the correct answer.
The matrix is a
A. identity matrix
B. symmetric matrix
C. skew symmetric matrix
D. none of these
Let A =
Clearly,
A’ =
As, AT = A
∴ It is symmetric matrix.
∴ Option(B) is the correct answer.
The matrix is a
A. diagonal matrix
B. symmetric matrix
C. skew symmetric matrix
D. scalar matrix
Let A =
Clearly,
A’ =
As, AT = -A
∴ It is skew - symmetric matrix.
∴ Option(C) is the correct answer.
If A is matrix of order m × n and B is a matrix such that AB’ and B’A are both defined, then order of matrix B is
A. m × m
B. n × n
C. n × m
D. m × n
As AB’ is defined. So, B’ must have n rows.
∴ B has n columns.
And, B’A is also defined. As, A’ has order n × m
∴ B’A to exist B must have m rows.
∴ m × n is the order of B.
Option (D) is the correct answer.
If A and B are matrices of same order, then (AB’ – BA’) is a
A. skew symmetric matrix
B. null matrix
C. symmetric matrix
D. unit matrix
Let C = (AB’ – BA’)
C’ = (AB’ – BA’)’
⇒ C’ = (AB’)’ – (BA’)’
⇒ C’ = (B’)’A’ – (A’)’B’
⇒ C’ = BA’ – AB’
⇒ C’ = -C
∴ C is a skew-symmetric matrix.
Clearly Option (A) matches with our deduction.
∴ Option (A) is the correct.
If A is a square matrix such that A2 = I, then (A – I)3 + (A + I)3 – 7A is equal to
A. A
B. I – A
C. I + A
D. 3A
As, (A – I)3 + (A + I)3
Use a3 + b3 = (a + b)(a2 + ab + b2)
Also A2 = I
∴ then (A – I)3 + (A + I)3 – 7A = 2A + 6A – 7A = A
Clearly our answer matches with option (A)
∴ option (A) is the correct answer.
For any two matrices A and B, we have
A. AB = BA
B. AB ≠ BA
C. AB = O
D. None of the above
For any two matrix:
Not always option A , B and C are true.
∴ Option (D) is the only suitable answer
On using elementary column operations C2→ C2 — 2C1 in the following matrix equation
we have:
A.
B.
C.
D.
For column transformation, we operate the post matrix.
As,
Applying C2→ C2 — 2C1
∴
Clearly, it matches with option (D).
∴ Option (D) is the correct answer.
On using elementary row operation R1→ R1 — 3R2 in the following matrix equation:
we have:
A.
B.
C.
D.
Elementary row transformation is applied on the first matrix of RHS.
Applying R1→ R1 — 3R2 we have -
⇒
Clearly it matches with option (A)
∴ Option (A) is the correct answer.
Fill in the blanks in each of the
______ matrix is both symmetric and skew symmetric matrix.
A Zero matrix
∴ Let A be the symmetric and skew symmetric matrix.
⇒ A’=A (Symmetric)
⇒ A’=-A (Skew-Symmetric)
Considering the above two equations,
⇒ A=-A
⇒ 2A=0
⇒ A=0 (A Zero Matrix)
Hence Zero matrix is both symmetric and skew symmetric matrix.
Fill in the blanks in each of the
______ matrix is both symmetric and skew symmetric matrix.
A Zero matrix
∴ Let A be the symmetric and skew symmetric matrix.
⇒ A’=A (Symmetric)
⇒ A’=-A (Skew-Symmetric)
Considering the above two equations,
⇒ A=-A
⇒ 2A=0
⇒ A=0 (A Zero Matrix)
Hence Zero matrix is both symmetric and skew symmetric matrix.
Fill in the blanks in each of the
Sum of two skew symmetric matrices is always _______ matrix.
A skew symmetric matrix
∴ Let A and B are two skew symmetric matrices.
⇒ A’=-A ..(1)
⇒ B’=-B ..(2)
Now Let A+B=C ..(3)
⇒ C’=(A+B)’=A’+B’
⇒ A’+B’=(-A)+(-B)
⇒ (-A)+(-B)=-(A+B)=-C
⇒ C’=-C (Skew Symmetric matrix)
Fill in the blanks in each of the
Sum of two skew symmetric matrices is always _______ matrix.
A skew symmetric matrix
∴ Let A and B are two skew symmetric matrices.
⇒ A’=-A ..(1)
⇒ B’=-B ..(2)
Now Let A+B=C ..(3)
⇒ C’=(A+B)’=A’+B’
⇒ A’+B’=(-A)+(-B)
⇒ (-A)+(-B)=-(A+B)=-C
⇒ C’=-C (Skew Symmetric matrix)
Fill in the blanks in each of the
The negative of a matrix is obtained by multiplying it by ________.
-1
The negative of a matrix is obtained by multiplying it by -1.
For example:
Let A =
So
= - A
Fill in the blanks in each of the
The negative of a matrix is obtained by multiplying it by ________.
-1
The negative of a matrix is obtained by multiplying it by -1.
For example:
Let A =
So
= - A
Fill in the blanks in each of the
The product of any matrix by the scalar _____ is the null matrix.
The null matrix is the one in which all elements are zero.
If we want to make A = a null matrix we need to multiply it by 0.
0A =
The product of any matrix by the scalar 0 is the null matrix.
Fill in the blanks in each of the
A matrix which is not a square matrix is called a _____ matrix.
Rectangular Matrix
As a square matrix is the one in which there are same number of rows and columns.
Eg: A =
Here there are 2 rows and 2 columns.
The matrix which is not square is called rectangular matrix as it does not have same number of rows and columns.
Eg
Here number of rows are 2 and columns are 3.
Fill in the blanks in each of the
A matrix which is not a square matrix is called a _____ matrix.
Rectangular Matrix
As a square matrix is the one in which there are same number of rows and columns.
Eg: A =
Here there are 2 rows and 2 columns.
The matrix which is not square is called rectangular matrix as it does not have same number of rows and columns.
Eg
Here number of rows are 2 and columns are 3.
Fill in the blanks in each of the
Matrix multiplication is _____ over addition.
Distributive
⇒ Matrix multiplication is distributive over addition.
i.e A(B+C)=AB+AC
and (A+B)C=AC+BC
Fill in the blanks in each of the
Matrix multiplication is _____ over addition.
Distributive
⇒ Matrix multiplication is distributive over addition.
i.e A(B+C)=AB+AC
and (A+B)C=AC+BC
Fill in the blanks in each of the
If A is a symmetric matrix, then A3 is a ______ matrix.
A3 is Also a symmetric matrix.
Given: A’=A ..(1)
⇒ (A2)’=(AA)’=A’A’
⇒ A’A’=(A)(A)=A2
⇒ (A2)’=A2 (symmetric matrix) ..(2)
⇒ (A3)’=(A(A2))’=(A2)’A’
⇒ (A2)’A’=A2A= A3 (Using (1) and (2) )
⇒ (A3)’=A3 (symmetric matrix)
Fill in the blanks in each of the
If A is a symmetric matrix, then A3 is a ______ matrix.
A3 is Also a symmetric matrix.
Given: A’=A ..(1)
⇒ (A2)’=(AA)’=A’A’
⇒ A’A’=(A)(A)=A2
⇒ (A2)’=A2 (symmetric matrix) ..(2)
⇒ (A3)’=(A(A2))’=(A2)’A’
⇒ (A2)’A’=A2A= A3 (Using (1) and (2) )
⇒ (A3)’=A3 (symmetric matrix)
Fill in the blanks in each of the
If A is a skew symmetric matrix, then A2 is a _________.
A2 is a symmetric matrix.
Given: A’=-A
⇒ (A2)’=(AA)’=A’A’
⇒ A’A’=(-A)(-A)=A2
⇒ (A2)’=A2 (symmetric matrix)
Fill in the blanks in each of the
If A is a skew symmetric matrix, then A2 is a _________.
A2 is a symmetric matrix.
Given: A’=-A
⇒ (A2)’=(AA)’=A’A’
⇒ A’A’=(-A)(-A)=A2
⇒ (A2)’=A2 (symmetric matrix)
Fill in the blanks in each of the
If A and B are square matrices of the same order, then
(i) (AB)’ = ________.
(ii) (kA)’ = ________. (k is any scalar)
(iii) [k (A – B)]’ = ________.
(i) (AB)’ = ________.
(AB)’ = B’A’
Let A be matrix of order m× n and B be of n× p.
A’ is of order n× m and B’ is of order p× n.
Hence B’ A’ is of order p× m.
So, AB is of order m× p.
And (AB)’ is of order p× m.
We can see (AB)’ and B’ A’ are of same order p× m.
Hence (AB)’ = B’ A’
Hence proved.
(ii) (kA)’ = ________. (k is any scalar)
If a scalar “k” is multiplied to any matrix the new matrix becomes
K times of the old matrix.
Eg: A =
2A =
=
(2A)’ =
A’ =
Now 2A’ =
=
Hence (2A)’ =2A’
Hence (kA)’ = k(A)’
(iii) [k (A – B)]’ = ________.
A =
A’ =
2A’ = 2
=
B=
B’ =
2B’ =
=
A-B =
Now Let k =2
2(A-B) =
=
[2(A-B)]’ =
2A’ – 2B’ =
=
A’ – B’ =
=
2(A’ – B’) = 2
=
Hence we can see [k (A – B)]’= k(A)’- k(B)’= k(A’-B’)
Fill in the blanks in each of the
If A and B are square matrices of the same order, then
(i) (AB)’ = ________.
(ii) (kA)’ = ________. (k is any scalar)
(iii) [k (A – B)]’ = ________.
(i) (AB)’ = ________.
(AB)’ = B’A’
Let A be matrix of order m× n and B be of n× p.
A’ is of order n× m and B’ is of order p× n.
Hence B’ A’ is of order p× m.
So, AB is of order m× p.
And (AB)’ is of order p× m.
We can see (AB)’ and B’ A’ are of same order p× m.
Hence (AB)’ = B’ A’
Hence proved.
(ii) (kA)’ = ________. (k is any scalar)
If a scalar “k” is multiplied to any matrix the new matrix becomes
K times of the old matrix.
Eg: A =
2A =
=
(2A)’ =
A’ =
Now 2A’ =
=
Hence (2A)’ =2A’
Hence (kA)’ = k(A)’
(iii) [k (A – B)]’ = ________.
A =
A’ =
2A’ = 2
=
B=
B’ =
2B’ =
=
A-B =
Now Let k =2
2(A-B) =
=
[2(A-B)]’ =
2A’ – 2B’ =
=
A’ – B’ =
=
2(A’ – B’) = 2
=
Hence we can see [k (A – B)]’= k(A)’- k(B)’= k(A’-B’)
Fill in the blanks in each of the
If A is skew symmetric, then kA is a ______. (k is any scalar)
A skew symmetric matrix.
Given A’=-A
⇒ (kA)’=k(A)’=k(-A)
⇒ (kA)’=-(kA)
Fill in the blanks in each of the
If A is skew symmetric, then kA is a ______. (k is any scalar)
A skew symmetric matrix.
Given A’=-A
⇒ (kA)’=k(A)’=k(-A)
⇒ (kA)’=-(kA)
Fill in the blanks in each of the
If A and B are symmetric matrices, then
(i) AB – BA is a _________.
(ii) BA – 2AB is a _________.
(i) AB – BA is a Skew Symmetric matrix
Given A’=A and B’=B
⇒ (AB-BA)’=(AB)’-(BA)’
⇒ (AB)’-(BA)’=B’A’-A’B’
⇒ B’A’-A’B’=BA-AB=-(AB-BA)
⇒ (AB-BA)’=-(AB-BA) (skew symmetric matrix)
Eg. Let A =
B=
⇒ AB= and BA=
⇒ AB-BA=
⇒ (AB-BA)’=
⇒ -(AB-BA)=
(ii) BA – 2AB is a Neither Symmetric nor Skew Symmetric matrix
Given A’=A and B’=B
⇒ (BA-2AB)’=(BA)’-(2AB)’
⇒ (BA)’-(2AB)’=A’B’-2B’A’
⇒ A’B’-2B’A’=AB-2BA=-(2BA-AB)
⇒ (BA-2AB)’=-(2BA-AB)
Eg. Let A =
B=
⇒ AB= and BA=
⇒ BA-2AB=
Fill in the blanks in each of the
If A and B are symmetric matrices, then
(i) AB – BA is a _________.
(ii) BA – 2AB is a _________.
(i) AB – BA is a Skew Symmetric matrix
Given A’=A and B’=B
⇒ (AB-BA)’=(AB)’-(BA)’
⇒ (AB)’-(BA)’=B’A’-A’B’
⇒ B’A’-A’B’=BA-AB=-(AB-BA)
⇒ (AB-BA)’=-(AB-BA) (skew symmetric matrix)
Eg. Let A =
B=
⇒ AB= and BA=
⇒ AB-BA=
⇒ (AB-BA)’=
⇒ -(AB-BA)=
(ii) BA – 2AB is a Neither Symmetric nor Skew Symmetric matrix
Given A’=A and B’=B
⇒ (BA-2AB)’=(BA)’-(2AB)’
⇒ (BA)’-(2AB)’=A’B’-2B’A’
⇒ A’B’-2B’A’=AB-2BA=-(2BA-AB)
⇒ (BA-2AB)’=-(2BA-AB)
Eg. Let A =
B=
⇒ AB= and BA=
⇒ BA-2AB=
Fill in the blanks in each of the
If A is symmetric matrix, then B’AB is _______.
B’AB is a symmetric matrix.
Proof:
Given A is symmetric matrix
⇒ A’=A ..(1)
Now in B’AB,
Let AB=C ..(2)
⇒ B’AB=B’C
Now Using Property (AB)’=B’A’
⇒ (B’C)’=C’(B’)’ (As (B’)’=B)
⇒ C’(B’)’=C’B
⇒ C’B=(AB)’B (Using Property (AB)’=B’A’)
⇒ (AB)’B=B’A’B (Using (1))
⇒ B’A’B= B’AB
⇒ Hence (B’AB)’= B’AB
Fill in the blanks in each of the
If A is symmetric matrix, then B’AB is _______.
B’AB is a symmetric matrix.
Proof:
Given A is symmetric matrix
⇒ A’=A ..(1)
Now in B’AB,
Let AB=C ..(2)
⇒ B’AB=B’C
Now Using Property (AB)’=B’A’
⇒ (B’C)’=C’(B’)’ (As (B’)’=B)
⇒ C’(B’)’=C’B
⇒ C’B=(AB)’B (Using Property (AB)’=B’A’)
⇒ (AB)’B=B’A’B (Using (1))
⇒ B’A’B= B’AB
⇒ Hence (B’AB)’= B’AB
Fill in the blanks in each of the
If A and B are symmetric matrices of same order, then AB is symmetric if and only if ______.
This is only possible if A and B commute.
Proof:
Given A and B are symmetric matrices,
⇒ A’=A ..(1)
⇒ B’=B ..(2)
Let AB is a Symmetric matrix:-
⇒ (AB)’=AB
Using Property (AB)’=B’A’
⇒ B’A’=AB
⇒ Now using (1) and (2)
⇒ BA=AB
Hence A and B matrix commute.
Fill in the blanks in each of the
If A and B are symmetric matrices of same order, then AB is symmetric if and only if ______.
This is only possible if A and B commute.
Proof:
Given A and B are symmetric matrices,
⇒ A’=A ..(1)
⇒ B’=B ..(2)
Let AB is a Symmetric matrix:-
⇒ (AB)’=AB
Using Property (AB)’=B’A’
⇒ B’A’=AB
⇒ Now using (1) and (2)
⇒ BA=AB
Hence A and B matrix commute.
Fill in the blanks in each of the
In applying one or more now operations while finding A–1 by elementary row operations, we obtain all zeros in one or more, then A–1 ______.
A-1 Does not exist,
∵
And |A|=0 if there are one or more rows or coloumns with all zero elements.
Fill in the blanks in each of the
In applying one or more now operations while finding A–1 by elementary row operations, we obtain all zeros in one or more, then A–1 ______.
A-1 Does not exist,
∵
And |A|=0 if there are one or more rows or coloumns with all zero elements.
Which of the following statements are True or False
A matrix denotes a number.
False
A matrix is an ordered rectangular array of numbers of functions.
Only a matrix of order (1×1) denotes a number.
Eg
Which of the following statements are True or False
A matrix denotes a number.
False
A matrix is an ordered rectangular array of numbers of functions.
Only a matrix of order (1×1) denotes a number.
Eg
Which of the following statements are True or False
Matrices of any order can be added.
False
∵ Matrices having same order can be added.
Eg. Let A =
B=
⇒ A+B=
Which of the following statements are True or False
Matrices of any order can be added.
False
∵ Matrices having same order can be added.
Eg. Let A =
B=
⇒ A+B=
Which of the following statements are True or False
Two matrices are equal if they have same number of rows and same number of columns.
False
∵ Two matrices are equal if they have same number of rows and same number of columns and corresponding elements within each matrix are equal or identical.
For example:
⇒ A = , B =
Here both matrices have two rows and two columns.
Also, they both have same elements.
Which of the following statements are True or False
Matrices of different order cannot be subtracted.
True
∵ Matrices of only same order can be added or subtracted.
Let A =
B=
⇒ A-B= Not possible
Which of the following statements are True or False
Matrices of different order cannot be subtracted.
True
∵ Matrices of only same order can be added or subtracted.
Let A =
B=
⇒ A-B= Not possible
Which of the following statements are True or False
Matrix addition is associative as well as commutative.
True
1. A+B=B+A (commutative)
2. (A+B)+C= A+(B+C) (associative)
Which of the following statements are True or False
Matrix addition is associative as well as commutative.
True
1. A+B=B+A (commutative)
2. (A+B)+C= A+(B+C) (associative)
Which of the following statements are True or False
Matrix multiplication is commutative.
False
In general matrix multiplication is not commutative
But it’s associative.
⇒ (AB)C=A(BC)
Which of the following statements are True or False
Matrix multiplication is commutative.
False
In general matrix multiplication is not commutative
But it’s associative.
⇒ (AB)C=A(BC)
Which of the following statements are True or False
A square matrix where every element is unity is called an identity matrix.
False
∵ A square matrix where every element of the leading diagonal is unity and rest elements are zero is called an identity matrix.
i.e
Which of the following statements are True or False
A square matrix where every element is unity is called an identity matrix.
False
∵ A square matrix where every element of the leading diagonal is unity and rest elements are zero is called an identity matrix.
i.e
Which of the following statements are True or False
If A and B are two square matrices of the same order, then A + B = B + A.
True
If A and B are two square matrices of the same order, then A + B = B + A ( Property of square matrix)
Eg
⇒
⇒
Which of the following statements are True or False
If A and B are two square matrices of the same order, then A + B = B + A.
True
If A and B are two square matrices of the same order, then A + B = B + A ( Property of square matrix)
Eg
⇒
⇒
Which of the following statements are True or False
If A and B are two matrices of the same order, then A – B = B – A.
False
∵ If A and B are two matrices of the same order,
then A – B = -(B – A)
Eg
⇒
⇒
⇒
Which of the following statements are True or False
If A and B are two matrices of the same order, then A – B = B – A.
False
∵ If A and B are two matrices of the same order,
then A – B = -(B – A)
Eg
⇒
⇒
⇒
Which of the following statements are True or False
If matrix AB = O, then A = O or B = O or both A and B are null matrices.
False
∵ Its not necessary that for multiplication of matrix A and B to be 0 one of them has to be a null matrix.
Eg
⇒
Which of the following statements are True or False
If matrix AB = O, then A = O or B = O or both A and B are null matrices.
False
∵ Its not necessary that for multiplication of matrix A and B to be 0 one of them has to be a null matrix.
Eg
⇒
Which of the following statements are True or False
Transpose of a column matrix is a column matrix.
False
∵ Transpose of a column matrix is a Row matrix and vice-versa.
Let A=
⇒ A’=
Which of the following statements are True or False
Transpose of a column matrix is a column matrix.
False
∵ Transpose of a column matrix is a Row matrix and vice-versa.
Let A=
⇒ A’=
Which of the following statements are True or False
If A and B are two square matrices of the same order, then AB = BA.
False
∵ Matrix multiplication is not commutative.
Eg. Let A =
B=
⇒ AB= and BA=
⇒ AB≠BA
Which of the following statements are True or False
If A and B are two square matrices of the same order, then AB = BA.
False
∵ Matrix multiplication is not commutative.
Eg. Let A =
B=
⇒ AB= and BA=
⇒ AB≠BA
Which of the following statements are True or False
If each of the three matrices of the same order are symmetric, then their sum is a symmetric matrix.
True
Eg
⇒
⇒
⇒
Which of the following statements are True or False
If A and B are any two matrices of the same order, then (AB)’ = A’B’.
False
∵If A and B are any two matrices for which AB is defined, then
(AB)’=B’A’.
Which of the following statements are True or False
If A and B are any two matrices of the same order, then (AB)’ = A’B’.
False
∵If A and B are any two matrices for which AB is defined, then
(AB)’=B’A’.
Which of the following statements are True or False
If (AB)’ = B’A’, where A and B are not square matrices, then number of rows in A is equal to number of columns in B and number of columns in A is equal to number of rows in B.
True
∵If A and B are any two matrices for which AB is defined, then
(AB)’=B’A’.
Which of the following statements are True or False
If (AB)’ = B’A’, where A and B are not square matrices, then number of rows in A is equal to number of columns in B and number of columns in A is equal to number of rows in B.
True
∵If A and B are any two matrices for which AB is defined, then
(AB)’=B’A’.
Which of the following statements are True or False
If A, B and C are square matrices of same order, then AB = AC always implies that B = C.
False
∵ If AB = AC => B=C
The above condition is only possible if matrix A is invertible
(i.e |A|≠0).
⇒ If A is invertible, then
⇒ A-1(AB)= A-1(AC)
⇒ (A-1A)B = (A-1A)C
⇒ IB=IC
⇒ B=C
Which of the following statements are True or False
If A, B and C are square matrices of same order, then AB = AC always implies that B = C.
False
∵ If AB = AC => B=C
The above condition is only possible if matrix A is invertible
(i.e |A|≠0).
⇒ If A is invertible, then
⇒ A-1(AB)= A-1(AC)
⇒ (A-1A)B = (A-1A)C
⇒ IB=IC
⇒ B=C
Which of the following statements are True or False
AA’ is always a symmetric matrix for any square matrix A.
True
(AA’)’=(A’)’A’
As we know (A’)’ = A
(AA’)’=AA’ (Condition of symmetric matrix)
Which of the following statements are True or False
AA’ is always a symmetric matrix for any square matrix A.
True
(AA’)’=(A’)’A’
As we know (A’)’ = A
(AA’)’=AA’ (Condition of symmetric matrix)
Which of the following statements are True or False
If then AB and BA are defined and equal.
False
∵ Here A has an order (2×3) and B has an order (3×2),
Hence AB is defined and will give an output matrix of order (2×2)
And BA is also defined but will give an output matrix of order (3×3).
⇒ AB ≠ BA
Which of the following statements are True or False
If then AB and BA are defined and equal.
False
∵ Here A has an order (2×3) and B has an order (3×2),
Hence AB is defined and will give an output matrix of order (2×2)
And BA is also defined but will give an output matrix of order (3×3).
⇒ AB ≠ BA
Which of the following statements are True or False
If A is skew symmetric matrix, then A2 is a symmetric matrix.
True
For skew symmetric matrix A’=-A
⇒ (A2)’=(AA)’=A’A’
⇒ A’A’=(-A)(-A)=A2
⇒ (A2)’=A2 (symmetric matrix)
Which of the following statements are True or False
If A is skew symmetric matrix, then A2 is a symmetric matrix.
True
For skew symmetric matrix A’=-A
⇒ (A2)’=(AA)’=A’A’
⇒ A’A’=(-A)(-A)=A2
⇒ (A2)’=A2 (symmetric matrix)
Which of the following statements are True or False
(AB)–1 = A–1.B–1, where A and B are invertible matrices satisfying cumulative property with respect to multiplication.
False
∵ If A and B are invertible matrices then,
⇒ (AB)-1=B-1A-1
Which of the following statements are True or False
(AB)–1 = A–1.B–1, where A and B are invertible matrices satisfying cumulative property with respect to multiplication.
False
∵ If A and B are invertible matrices then,
⇒ (AB)-1=B-1A-1