Popoviciu's inequality on variances: Difference between revisions

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Latest revision as of 20:59, 9 June 2023

In probability theory, Popoviciu's inequality, named after Tiberiu Popoviciu, is an upper bound on the variance σ2 of any bounded probability distribution. Let M and m be upper and lower bounds on the values of any random variable with a particular probability distribution. Then Popoviciu's inequality states:[1]

σ214(Mm)2.

This equality holds precisely when half of the probability is concentrated at each of the two bounds.

Sharma et al. have sharpened Popoviciu's inequality:[2]

σ2+(Third central moment2σ2)214(Mm)2.

If one additionally assumes knowledge of the expectation, then the stronger Bhatia–Davis inequality holds

σ2(Mμ)(μm)

where μ is the expectation of the random variable.[3]

In the case of an independent sample of n observations from a bounded probability distribution, the von Szokefalvi Nagy inequality[4] gives a lower bound to the variance of the sample mean:

σ2(Mm)22n.

Let A be a random variable with mean μ, variance σ2, and Pr(mAM)=1. Then, since mAM,

0𝔼[(MA)(Am)]=𝔼[A2]mM+(m+M)μ.

Thus,

σ2=𝔼[A2]μ2mM+(m+M)μμ2=(Mμ)(μm).

Now, applying the Inequality of arithmetic and geometric means, ab(a+b2)2, with a=Mμ and b=μm, yields the desired result:

σ2(Mμ)(μm)(Mm)24.

References

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