Find the mean deviation about the mean of the distribution:
Given: Data distribution
To find: the mean deviation about the mean of the distribution
Let us make a table of the given data and append other columns after calculations
Here mean,
So the above table with more columns is as shown below,
Hence Mean Deviation becomes,
Therefore, the mean deviation about the mean of the distribution is 1.25
Find the mean deviation about the median of the following distribution:
Given: Data distribution
To find: the mean deviation about the median
Let us make a table of the given data and append other columns after calculations
Now, here N=20, which is even.
Here median,
Both these observations lie in cumulative frequency 13, for which corresponding observation is 12.
So the above table with more columns is as shown below,
Hence Mean Deviation becomes,
Therefore, the mean deviation about the median of the distribution is 1.25
Calculate the mean deviation about the mean of the set of first n natural numbers when n is an odd number.
Given: set of first n natural numbers when n is an odd number
To find: the mean deviation about the mean
We know first n natural numbers are 1, 2, 3….., n. And given n is odd number.
So mean is,
The deviations of numbers from the mean are as shown below,
Or,
Or,
So the absolute values of deviation from the mean is
The sum of absolute values of deviations from the mean, is
i.e., 2 times sum of terms, so it can be written as
Therefore, mean deviation about the mean is
Hence the mean deviation about the mean of the set of first n natural numbers when n is an odd number is
Calculate the mean deviation about the mean of the set of first n natural numbers when n is an even number.
Given: set of first n natural numbers when n is an even number.
To find: the mean deviation about the mean
We know first n natural numbers are 1, 2, 3….., n. And given n is even number.
So mean is,
The deviations of numbers from the mean are as shown below,
Or,
Or,
So the absolute values of deviation from the mean is
The sum of absolute values of deviations from the mean, is
Now we know sum of first n natural numbers = n2
Therefore, mean deviation about the mean is
Hence the mean deviation about the mean of the set of first n natural numbers when n is an even number is
Find the standard deviation of the first n natural numbers.
Given: set of first n natural numbers
To find: the standard deviation
given first n natural numbers, we can write in table as shown below
So, the sums of these are
Therefore, the standard deviation can be written as,
Hence the standard deviation of the first n natural numbers is
The mean and standard deviation of some data for the time taken to complete a test are calculated with the following results:
Number of observations = 25, mean = 18.2 seconds, standard deviation = 3.25 seconds.
Further, another set of 15 observations x1, x2, ..., x15, also in seconds, is now available and we have
and . Calculate the standard derivation based on all 40 observations.
Given: Number of observations = 25, mean = 18.2 seconds, standard deviation = 3.25 seconds. Another set of 15 observations x1, x2, ..., x15, also in seconds, is and
To find: the standard derivation based on all 40 observations
As per the given criteria,
In first set,
Number of observations, n1=25
Mean,
And standard deviation,
And
In second set,
Number of observations, n2=15
and
For the first set we have
∑xi=25×18.2=455
Therefore the standard deviation becomes,
Substituting the values, we get
For the combined standard deviation of the 40 observation, n=40
And
Therefore the standard deviation can be written as,
Substituting the values, we get
Therefore the standard deviation can be written as,
σ=3.87
Hence the standard derivation based on all 40 observations is 3.87.
The mean and standard deviation of a set of n1 observations are and s1, respectively while the mean and standard deviation of another set of n2 observations are and s2, respectively. Show that the standard deviation of the combined set of (n1 + n2) observations is given by
Given: The mean and standard deviation of a set of n1 observations are and s1, respectively while the mean and standard deviation of another set of n2 observations are and s2, respectively
To show: the standard deviation of the combined set of (n1 + n2) observations is given by
As per given criteria,
For first set
Let xi where i=1, 2, 3,4 , …, n1
For second set
And yj where j=1, 2, 3, 4, …, n2
And the means are
Now mean of the combined series is given by
And the corresponding square of standard deviation is
Therefore, square of standard deviation becomes,
Now,
But the algebraic sum of the deviation of values of first series from their mean is zero.
Also,
But
Substituting value from equation (i), we get
Substituting this value in equation (iii), we get
Similarly, we have
But the algebraic sum of the deviation of values of second series from their mean is zero.
Also,
But
Substituting value from equation (i), we get
Substituting this value in equation (v), we get
Substituting equation (iv) and (vi) in equation (ii), we get
So the combined standard deviation
Hence proved
Two sets each of 20 observations, have the same standard derivation 5. The first set has a mean 17 and the second a mean 22. Determine the standard deviation of the set obtained by combining the given two sets.
Given: Two sets each of 20 observations, have the same standard derivation 5. The first set has a mean 17 and the second a mean 22.
To show: the standard deviation of the set obtained by combining the given two sets
As per given criteria,
For first set
Number of observations, n1=20
Standard deviation, s1=5
And mean,
For second set
Number of observations, n2=20
Standard deviation, s2=5
And mean,
We know the standard deviation for combined two series is
Substituting the corresponding values, we get
Or, σ=5.59
Hence the standard deviation of the set obtained by combining the given two sets is 5.59
The frequency distribution:
where A is a positive integer, has a variance of 160. Determine the value of A.
Given: frequency distribution table, where variance =160
To find: the value of A, where A is a positive number
Let us make a table of the given data and append other columns after calculations
And we know variance is
Substituting values from above table and also given variance=160, we get
⇒ A2=49
⇒ A=7
Hence the value of A is 7.
For the frequency distribution:
Find the standard distribution.
Given: frequency distribution table
To find: the standard deviation
Let us make a table of the given data and append other columns after calculations
And we know standard deviation is
Substituting values from above table, we get
⇒ σ=1.37
Hence the standard deviation is 1.37.
There are 60 students in a class. The following is the frequency distribution of the marks obtained by the students in a test:
where x is a positive integer. Determine the mean and standard deviation of the marks.
Given: There are 60 students in a class. The frequency distribution of the marks obtained by the students in a test is also given.
To find: the mean and standard deviation of the marks.
It is given there are 60 students in the class, so
∑fi=60
⇒ (x-2)+x+x2+(x+1)2+2x+x+1=60
⇒ 5x-1 +x2+x2+2x+1=60
⇒ 2x2 +7x=60
⇒ 2x2 +7x-60=0
Splitting the middle term, we get
⇒ 2x2 + 15x – 8x – 60 = 0
⇒ x(2x + 15) – 4(2x + 15) = 0
⇒ (2x + 15) (x – 4) = 0
⇒ 2x + 15 = 0 or x-4=0
⇒ 2x=-15 or x=4
Given x is a positive number, so x can take 4 as the only value.
And let assumed mean, a=3.
Now put x = 4 and a=3 in the frequency distribution table and add other columns after calculations, we get
And we know standard deviation is
Substituting values from above table, we get
⇒ σ=1.12
Hence the standard deviation is 1.12
Now mean is
=2.8
Hence the mean and standard deviation of the marks are 2.8 and 1.12 respectively.
The mean life of a sample of 60 bulbs was 650 hours and the standard deviation was 8 hours. A second sample of 80 bulbs has a mean life of 660 hours and standard deviation 7 hours. Find the overall standard deviation.
Given: The mean life of a sample of 60 bulbs was 650 hours and the standard deviation was 8 hours. A second sample of 80 bulbs has a mean life of 660 hours and standard deviation 7 hours
To find: the overall standard deviation
As per given criteria,
In first set of samples,
Number of sample bulbs, n1=60
Standard deviation, s1=8hrs
Mean life,
And in second set of samples,
Number of sample bulbs, n2=80
Standard deviation, s2=7hrs
Mean life,
We know the standard deviation for combined two series is
Substituting the corresponding values, we get
Or, σ=8.9
Hence the standard deviation of the set obtained by combining the given two sets is 8.9
Mean and standard deviation of 100 items are 50 and 4, respectively. Find the sum of all items and the sum of the squares of the items.
Given: Mean and standard deviation of 100 items are 50 and 4, respectively
To find: the sum of all items and the sum of the squares of the items
As per given criteria,
Number of items, n=100
Mean of the given items,
But we know,
Substituting the corresponding values, we get
⇒ ∑xi=50× 100=5000
Hence the sum of all the 100 items = 5000
Also given the standard deviation of the 100 items is 4
i.e., σ=4
But we know
Substituting the corresponding values, we get
Now taking square on both sides, we get
And the sum of the squares of all the 100 items is 251600.
If for a distribution ∑ (x −5)=3, ∑ (x −5)2 = 43 and the total number of item is 18, find the mean and standard deviation.
Given: for a distribution ∑ (x −5)=3, ∑ (x −5)2 = 43 and the total number of item is 18
To find: the mean and standard deviation.
As per given criteria,
Number of items, n=18
And given ∑(x-5)=3,
And also given, ∑(x −5)2 = 43
But we know mean can be written as,
Here assumed mean is 5, so substituting the corresponding values in above equation, we get
And we know the standard deviation can be written as,
Substituting the corresponding values, we get
Hence σ=1.54
So the mean and standard deviation of given items is 5.17 and 1.54 respectively.
Find the mean and variance of the frequency distribution given below:
Given: the frequency distribution
To find: the mean and variance
Converting the ranges of x to groups, the given table can be rewritten as shown below,
And we know variance can be written as
Substituting values from above table, we get
We also know mean can be written as
Substituting values from above table, we get
Hence the mean and variance of the given frequency distribution is 4.16 and 3.96 respectively.
Calculate the mean deviation about the mean for the following frequency distribution:
Given: the frequency distribution
To find: the mean deviation about the mean
Let us make a table of the given data and append other columns after calculations
Here mean,
So the above table with more columns is as shown below,
Hence Mean Deviation becomes,
Therefore, the mean deviation about the mean of the distribution is 3.84
Calculate the mean deviation from the median of the following data:
Given: the frequency distribution
To find: the mean deviation from the median
Let us make a table of the given data and append other columns after calculations
Now, here N=20, which is even.
Here median class=,
This observation lie in the class interval 12-18, so median can be written as,
Here l=12, cf=9, f=3, h=6 and N=20, substituting these values, the above equation becomes,
⇒M=12+2=14
So the above table with more columns is as shown below,
Hence Mean Deviation becomes,
Therefore, the mean deviation about the median of the distribution is 7
Determine the mean and standard deviation for the following distribution:
Given: the frequency distribution
To find: the mean and standard deviation
Let us make a table of the given data and append other columns after calculations
Here mean,
So the above table with more columns is as shown below,
And we know standard deviation is
Substituting values from above table, we get
⇒ σ=2.9
Hence the mean and standard deviation of the marks are 6 and 2.9 respectively.
The weights of coffee in 70 jars are shown in the following table:
Determine variance and standard deviation of the above distribution.
Given: the weights of coffee in 70 jars
To find: the variance and standard deviation of the distribution
Let us make a table of the given data and append other columns after calculations
Here mean,
So the above table with more columns is as shown below,
And we know standard deviation is
Substituting values from above table, we get
⇒ σ=1.08g
And σ2=1.082=1.17g
Hence the variance and standard deviation of the distribution are 1.166g and 1.08 respectively.
Determine mean and standard deviation of first n terms of an A.P. whose first term is a and common difference is d.
Given: first n terms of an A.P. whose first term is a and common difference is d
To find: mean and standard deviation
The given AP in tabular form is as shown below,
Here we have assumed a as mean.
Given the AP have n terms. And we know the sum of all the terms of AP can be written as,
Now we will calculate the actual mean,
Substituting the corresponding values, we get
Now we other two columns sums, i.e.,
Now we know standard deviation is given by,
Substituting the corresponding values, we get
Cancelling the like terms, we get
Taking out common terms we get
By taking the LCM, we get
Hence the mean and standard deviation of the given AP is and respectively.
Following are the marks obtained, out of 100, by two students Ravi and Hashina in 10 tests.
Who is more intelligent and who is more consistent?
Given: the marks obtained, out of 100, by two students Ravi and Hashina in 10 tests
To find: who is more intelligent and who is more consistent
Case 1: For Ravi
The marks of Ravi being taken separately and finding other values can be tabulated as shown below,
Here we have assumed 45 as mean.
Total there are marks of 10 subjects.
Now we know standard deviation is given by,
Substituting the corresponding values, we get
σ=13
And mean is
Hence the mean and standard deviation of the Ravi is 44.1 and 13 respectively.
Case 1: For Hashina
The marks of Hashina being taken separately and finding other values can be tabulated as shown below,
Here as so 53 is mean.
Total there are marks of 10 subjects.
Now we know standard deviation is given by,
Substituting the corresponding values, we get
σ=24.35
Hence the mean and standard deviation of the Hashina is 53 and 24.35 respectively.
Now we will analyse them,
For Ravi,
For Hasina,
Now as CV(of Ravi)<CV of Hasina
Hence Ravi is more consistent.
Mean of Hasina>Mean of Ravi,
Hence Hasina is more intelligent.
Mean and standard deviation of 100 observations were found to be 40 and 10, respectively. If at the time of calculation two observations were wrongly taken as 30 and 70 in place of 3 and 27 respectively, find the correct standard deviation.
Given: Mean and standard deviation of 100 observations were found to be 40 and 10, respectively. If at the time of calculation two observations were wrongly taken as 30 and 70 in place of 3 and 27 respectively
To find: the correct standard deviation.
As per given criteria,
Number of observations, n=100
Mean of the given observations before correction,
But we know,
Substituting the corresponding values, we get
⇒ ∑xi=40× 100=4000
It is said two observations were wrongly taken as 30 and 70 in place of 3 and 27 respectively,
So ∑xi=4000-30-70+3+27=3930
So the correct mean after correction is
Also given the standard deviation of the 100 observations is 10 before correction,
i.e., σ=10
But we know
Substituting the corresponding values, we get
Now taking square on both sides, we get
It is said two observations were wrongly taken as 30 and 70 in place of 3 and 27 respectively, so correction is
So the correct standard deviation after correction is
σ=10.24
Hence the corrected standard deviation is 10.24.
While calculating the mean and variance of 10 readings, a student wrongly used the reading 52 for the correct reading 25. He obtained the mean and variance as 45 and 16 respectively. Find the correct mean and the variance.
Given: While calculating the mean and variance of 10 readings, a student wrongly used the reading 52 for the correct reading 25. He obtained the mean and variance as 45 and 16 respectively
To find: the correct mean and the variance.
As per given criteria,
Number of reading, n=10
Mean of the given readings before correction,
But we know,
Substituting the corresponding values, we get
⇒ ∑xi=45× 10=450
It is said one reading 25 was wrongly taken as 52,
So ∑xi=450-52+25=423
So the correct mean after correction is
Also given the variance of the 10 readings is 16 before correction,
i.e., σ2=16
But we know
Substituting the corresponding values, we get
It is said one reading 25 was wrongly taken as 52, so
So the correct variance after correction is
σ2=1833.1-(42.3)2=1833.1-1789.29
σ2=43.81
Hence the corrected mean and variance is 42.3 and 43.81 respectively.
The mean deviation of the data 3, 10, 10, 4, 7, 10, 5 from the mean is
A. 2
B. 2.57
C. 3
D. 3.75
Given data is 3, 10, 10, 4, 7, 10, 5. They are total 7.
Here mean,
This can be written in table form as,
Hence Mean Deviation becomes,
Therefore, the mean deviation about the mean of the distribution is 2.57.
Mean deviation for n observations x1, x2, ..., xn from their mean is given by
A.
B.
C.
D.
We know for n observations x1, x2, ..., xn having is given by
But we know
So mean deviation becomes,
Or
When tested, the lives (in hours) of 5 bulbs were noted as follows:
1357, 1090, 1666, 1494, 1623
The mean deviations (in hours) from their mean is
A. 178
B. 179
C. 220
D. 356
Given the lives (in hours) of 5 bulbs is 1357, 1090, 1666, 1494, 1623
Here mean,
This can be written in table form as,
Hence Mean Deviation becomes,
Therefore, the mean deviation about the mean of the lives of 5 bulbs is 178
Following are the marks obtained by 9 students in a mathematics test:
50, 69, 20, 33, 53, 39, 40, 65, 59
The mean deviation from the median is:
A. 9
B. 10.5
C. 12.67
D. 14.76
Given the marks obtained by 9 students in a mathematics test are 50, 69, 20, 33, 53, 39, 40, 65, 59
As number of students =9, which is odd.
So median will be = 5th term.
Arranging these in ascending order, we get
20, 33, 39, 40, 50, 53, 59, 65, 69
So the 5th term after arranging is 50,
So median is 50.
This can be written in table form as,
Hence Mean Deviation becomes,
Therefore, the mean deviation about the median of the marks of 9 subjects is 12.67
The standard deviation of the data 6, 5, 9, 13, 12, 8, 10 is
A.
B.
C.
D. 6
Given data in tabular form can be written as
But we know, standard deviation can be written as
Substituting the corresponding values, we get
Hence the standard deviation of the data 6, 5, 9, 13, 12, 8, 10 is .
Let x1, x2, ..., xn be n observations and be their arithmetic mean. The formula for the standard deviation is given by
A.
B.
C.
D.
We know, standard deviation for x1, x2, ..., xn observations can be written as
Where is the arithmetic mean
The mean of 100 observations is 50 and their standard deviation is 5. The sum of all squares of all the observations is
A. 50000
B. 250000
C. 252500
D. 255000
As per given criteria,
Number of observations, n=100
Mean of the given observations,
But we know,
Substituting the corresponding values, we get
⇒ ∑xi=50× 100=5000
Hence the sum of all the 100 observations = 5000
Also given the standard deviation of the 100 observations is 5
i.e., σ=5
But we know
Substituting the corresponding values, we get
Now taking square on both sides, we get
And the sum of the squares of all the 100 observations is 252500.
Let a, b, c, d, e be the observations with mean m and standard deviation s.
The standard deviation of the observations a + k, b + k, c + k, d + k, e + k is
A. s
B. ks
C. s + k
D.
Given observations are a, b, c, d, e
So the mean of the 5 observations is
⇒ ∑xi=a+b+c+d+e=5m……..(i)
And the standard deviation of the 5 observations is
Substituting equation (i) in above equation we get
Now we will find the mean and standard deviation of the observations a + k, b + k, c + k, d + k, e + k, we get
So the mean of these 5 observations is
Substituting value from equation (i), we get
m1=m+k…………(iii)
And the standard deviation of the 5 observations is
Substituting equation (iii) in above equation we get
Substituting the value from equation (i), we get
Cancelling like terms, we get
Comparing this with equation (ii), we get
σ=s
Hence the standard deviation of new set of observations, i.e., a + k, b + k, c + k, d + k, e + k is s, itself.
Let x1, x2, x3, x4, x5 be the observations with mean m and standard deviation s.
The standard deviation of the observations kx1, kx2, kx3, kx4, kx5 is
A. k + s
B.
C. ks
D. s
Given observations are x1, x2, x3, x4, x5
So the mean of the 5 observations is
⇒ ∑xi= x1+x2+ x3+x4+x5 =5m……..(i)
And the standard deviation of the 5 observations is
Substituting equation (i) in above equation we get
Now we will find the mean and standard deviation of the observations kx1, kx2, kx3, kx4, kx5, we get
So the mean of these 5 observations is
Substituting value from equation (i), we get
m1=mk…………(iii)
And the standard deviation of the 5 observations is
Substituting equation (iii) in above equation we get
Substituting the value from equation (ii), we get
σ=ks
Hence the standard deviation of new set of observations, i.e., kx1, kx2, kx3, kx4, kx5 is ks.
Let x1, x2, ... xn be n observations. Let wi = lxi + k for i = 1, 2, ...n, where l and k are constants. If the mean of xi’s is 48 and their standard deviation is 12, the mean of wi’s is 55 and standard deviation of wi’s is 15, the values of l and k should be
A. l = 1.25, k = – 5
B. l = – 1.25, k = 5
C. l = 2.5, k = – 5
D. l = 2.5, k = 5
Given x1, x2, ... xn be n observations
And Mean of these n observations,
And their standard deviation, SDx=12.
Another series of n observations is given such that
wi = lxi + k for i = 1, 2, ...n, where l and k are constants
And mean of these n observations,
And their standard deviation, SDw=15
Applying the given condition for mean we get
wi = lxi + k
Substituting the corresponding given values of means, we get
55 = l(48) + k…….(i)
Now we know
If standard deviation of x series is s, then standard deviation of kx series is ks,
So standard deviation of x1, x2, ... xn is SDx,
And hence the standard deviation of lx1, lx2, ... lxn is lSDx.
Similarly,
If standard deviation of x series is s, then standard deviation of k+x series is s,
So standard deviation of lx1, lx2, ... lxn is lSDx,
And hence the standard deviation of lx1+k, lx2+k, ... lxn+k is lSDx.
So applying the given condition for standard deviation, we get
SDw=lSDx
Substituting the given values, we get
15=l(12)
Now substituting the value of l in equation (i), we get
55 = (1.25)(48) + k
55=60+k
⇒ k=55-60=-5
Hence the values of k and l are -5 and 1.25 respectively
Standard deviations for first 10 natural numbers is
A. 5.5
B. 3.87
C. 2.97
D. 2.87
We know the standard deviation of the first n natural numbers is
Now for first 10 natural numbers, n=10, substituting this in the above equation of standard deviation we get
σ=2.87.
Hence the Standard deviations for first 10 natural numbers is 2.87
Consider the numbers 1, 2, 3, 4, 5, 6, 7, 8, 9, 10. If 1 is added to each number, the variance of the numbers so obtained is
A. 6.5
B. 2.87
C. 3.87
D. 8.25
Now given numbers 1, 2, 3, 4, 5, 6, 7, 8, 9, 10.
But these are first 10 natural numbers,
And we also know the standard deviation of the first n natural numbers is
Here n=10, substituting this in the above equation of standard deviation we get
Now when 1 is added to each numbers of 1, 2, 3, 4, 5, 6, 7, 8, 9, 10; we get new series as 1+1, 2+1, 3+1, 4+1, 5+1, 6+1, 7+1, 8+1, 9+1, 10+1.
Now we know, if standard deviation of x series is s, then standard deviation of k+x series is s,
So the standard deviation of 1+1, 2+1, 3+1, 4+1, 5+1, 6+1, 7+1, 8+1, 9+1, 10+1 series is also same as the standard deviation of 1, 2, 3, 4, 5, 6, 7, 8, 9, 10 series,
Hence
Now for variance we will square on both sides, we get
σ2=8.25
Hence the variance of the numbers so obtained is 8.25
Consider the first 10 positive integers. If we multiply each number by –1 and then add 1 to each number, the variance of the numbers so obtained is
A. 8.25
B. 6.5
C. 3.87
D. 2.87
First 10 positive integers are 1, 2, 3,4 ,5 ,6, 7, 8, 9, 10
on multiplying each number by – 1, we get
- 1, -2, -3, -4, -5, -6, -7, -8, -9, -10
on adding 1 to each of the number, we get
0, - 1, -2, -3, -4, -5, -6, -7, -8, -9
∴∑xi = 0 -1 -2 -3 -4 -5 -6 -7 -8 -9 = - 45
and
∑ xi2= 02 + (- 1)2 + (-2)2 + (-3)2 + (-4)2 + … + (-9)2
But we know , so the above equation on applying this formula when n=9, we get
Now we know,
Substituting the corresponding values, we get
Now for variance we will square on both sides, we get
σ2=8.25
Hence the variance of the numbers so obtained is 8.25
The following information relates to a sample of size 60: ∑x2=18000, ∑x = 960.
The variance is
A. 6.63
B. 16
C. 22
D. 44
Now we know standard deviation can be written as,
But given ∑x2=18000, ∑x = 960, N=60, substituting these corresponding values, we get
Now for variance we will square on both sides, we get
σ2=44
Hence the required variance is 44.
Coefficient of variation of two distributions are 50 and 60, and their arithmetic means are 30 and 25 respectively. Difference of their standard deviation is
A. 0
B. 1
C. 1.5
D. 2.5
Given Coefficient of variation of two distributions are
CV1=50 and CV2=60
And there arithmetic means are
We know Coefficient of variation can be written as
Now for first distribution, we have
Substituting corresponding values, we get
⇒ σ1=15………(i)
Now for second distribution, we have
Substituting corresponding values, we get
⇒ σ2=15………(ii)
So from equation (i) and (ii), the difference of their standard deviation is 0.
The standard deviation of some temperature data in °C is 5. If the data were converted into °F, the variance would be
A. 81
B. 57
C. 36
D. 25
given the standard deviation of some temperature data in °C, σC=5
We know that
Now we know
If standard deviation of x series is s, then standard deviation of kx series is ks,
So standard deviation of some temperature data in °C, σC=5,
And hence the standard deviation of some temperature data in ,
Similarly,
If standard deviation of x series is s, then standard deviation of k+x series is s,
So standard deviation of some temperature data in , ,
And hence the standard deviation of some temperature data in will be
Now for variance, we will square on both sides, we get
σF = 92
=81
This is the required variance
Fill in the blanks
Coefficient of variation =
Standard deviation
Explanation: We know Coefficient of variation can be written as
Where σ=standard deviation
=mean
Fill in the blanks
If is the mean of n values of x, then is always equal to _______.
If a has any value other than , then is _________ than.
zero, less than
Explanation: given is mean of n values, then the sum of all n terms is denoted by , so difference of both these is always equal to zero, i.e.,
And square of the above equation is also equal to zero, so
Now if f ‘a’ has the value other than , then
So,
So, if a has any value other than , then is less than.
Fill in the blanks
If the variance of a data is 121, then the standard deviation of the data is _______.
11
Explanation: We know the square root of variance is standard deviation, i.e.,
σ2 =121,
taking square root on both sides, we get
σ=√121=11
So, if the variance of a data is 121, then the standard deviation of the data is 11.
Fill in the blanks
The standard deviation of a data is ___________ of any change in origin, but is _____ on the change of scale.
independent, dependent.
Explanation: Change of origin means some value has been added or subtracted in the observation.
And we know the standard deviation doesn’t change if any value is added or subtracted from the observations, so standard deviation is independent of change in origin.
But standard deviation is only affected by a change in scale, i.e., some value is multiplied or divided to observations.
Hence the standard deviation of any data is independent of any change in origin but is dependent of any change of scale.
Fill in the blanks
The sum of the squares of the deviations of the values of the variable is _______ when taken about their arithmetic mean.
minimum
Explanation: The sum of the squares of the deviations of the values of the variable is minimum or least when taken about their arithmetic mean.
Fill in the blanks
The mean deviation of the data is _______ when measured from the median.
least
Explanation: Mean deviation is sum of all deviations of a set of data about the data's mean.
And it is widely believed that the median is” usually” between the mean and the the mode.
So the mean deviation of the data is least when measured from the median
Fill in the blanks
The standard deviation is _______ to the mean deviation taken from the arithmetic mean.
greater than or equal to
Explanation: we know standard deviation is difference between square of deviation of data about mean and square of mean.
And mean deviation is sum of all deviations of a set of data about the data's mean.
Hence, the standard deviation is greater than or equal to the mean deviation taken from the arithmetic mean