Mathematical Methods for Physics and Engineering : A Comprehensive Guide

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STATISTICS


where in the last line we have used again the fact that, since the population mean is zero,
μr=νr. However, result (31.47) holds even when the population mean is not zero.


From (31.43), we see thats^2 is abiasedestimator ofσ^2 , although the bias

becomes negligible for largeN. However, it immediately follows that an unbiased


estimator ofσ^2 is given simply by


σ̂^2 = N
N− 1

s^2 , (31.48)

where the multiplicative factorN/(N−1) is often calledBessel’s correction. Thus


in terms of the sample valuesxi,i=1, 2 ,...,N, an unbiased estimator of the


population varianceσ^2 is given by


σ̂^2 =^1
N− 1

∑N

i=1

(xi− ̄x)^2. (31.49)

Using (31.47), we find that the variance of the estimatorσ̂^2 is


V[σ̂^2 ]=

(
N
N− 1

) 2
V[s^2 ]=

1
N

(
ν 4 −

N− 3
N− 1

ν 22

)
,

whereνr is therth central moment of the parent population. We note that,


sinceE[σ̂^2 ]=σ^2 andV[σ̂^2 ]→0asN→∞, the statisticσ̂^2 is also a consistent


estimator of the population variance.


31.4.3 Population standard deviationσ

The standard deviationσof a population is defined as the positive square root of


the population varianceσ^2 (as, indeed, our notation suggests). Thus, it is common


practice to take the positive square root of the variance estimator as our estimator


forσ. Thus, we take


σˆ=

(
σ̂^2

) 1 / 2
, (31.50)

whereσ̂^2 is given by either (31.41) or (31.48), depending on whether the population


meanμis known or unknown. Because of the square root in the definition of


σˆ, it is not possible in either case to obtain an exact expression forE[σˆ]and


V[σˆ]. Indeed, although in each case the estimator is the positive square root of


an unbiased estimator ofσ^2 ,itisnotitself an unbiased estimator ofσ. However,


the bias does becomes negligible for largeN.


Obtain approximate expressions forE[σˆ]andV[σˆ]for a sample of sizeNin the case
where the population meanμis unknown.

As the population mean is unknown, we use (31.50) and (31.48) to write our estimator in

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