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An unbiased estimate for the mean of a {0,1} random variable with relative error distribution independent of the mean (1309.5413v2)

Published 20 Sep 2013 in math.ST, cs.CC, math.PR, and stat.TH

Abstract: Say $X_1,X_2,\ldots$ are independent identically distributed Bernoulli random variables with mean $p$. This paper builds a new estimate $\hat p$ of $p$ that has the property that the relative error, $\hat p /p - 1$, of the estimate does not depend in any way on the value of $p$. This allows the construction of exact confidence intervals for $p$ of any desired level without needing any sort of limit or approximation. In addition, $\hat p$ is unbiased. For $\epsilon$ and $\delta$ in $(0,1)$, to obtain an estimate where $\mathbb{P}(|\hat p/p - 1| > \epsilon) \leq \delta$, the new algorithm takes on average at most $2\epsilon{-2} p{-1}\ln(2\delta{-1})(1 - (14/3) \epsilon){-1}$ samples. It is also shown that any such algorithm that applies whenever $p \leq 1/2$ requires at least $0.2\epsilon{-2} p{-1}\ln((2-\delta)\delta{-1})(1 + 2 \epsilon)$ samples. The same algorithm can also be applied to estimate the mean of any random variable that falls in $[0,1]$.

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