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Statistics - Pooled Variance (r)
Pooled Variance/Change is the weighted normal for assessing the fluctuations of two autonomous variables where the mean can differ between tests however the genuine difference continues as before.
Example
Problem Statement:
Compute the Pooled Variance of the numbers 1, 2, 3, 4 and 5.
Solution:
Step 1
Decide the normal (mean) of the given arrangement of information by including every one of the numbers then gap it by the aggregate include of numbers given the information set.
${Mean = frac{1 + 2 + 3 + 4 + 5}{5} = frac{15}{5} = 3 }$Step 2
At that point, subtract the mean worth with the given numbers in the information set.
${Rightarrow (1 - 3), (2 - 3), (3 - 3), (4 - 3), (5 - 3) Rightarrow - 2, - 1, 0, 1, 2 }$Step 3
Square every period s deviation to dodge the negative numbers.
${Rightarrow (- 2)^2, (- 1)^2, (0)^2, (1)^2, (2)^2 Rightarrow 4, 1, 0, 1, 4 }$Step 4
Now discover Standard Deviation utipzing the underneath equation
${S = sqrt{frac{sum{X-M}^2}{n-1}}}$Standard Deviation = ${frac{sqrt 10}{sqrt 4} = 1.58113 }$
Step 5
${Pooled Variance (r) = frac{((aggregate check of numbers - 1) imes Var)}{(aggregate tally of numbers - 1)} , \[7pt] (r) = (5 - 1) imes frac{2.5}{(5 - 1)}, \[7pt] = frac{(4 imes 2.5)}{4} = 2.5}$Hence, Pooled Variance (r) =2.5
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