Finite-Sample Symmetric Mean Estimation with Fisher Information Rate
This work addresses a theoretical gap in statistics by offering finite-sample guarantees for symmetric distributions, which is incremental but improves upon prior asymptotic results.
The paper tackles the problem of finite-sample symmetric mean estimation by providing non-asymptotic convergence guarantees that approach the Fisher information rate, achieving a bound close to a subgaussian with variance 1/(n * smoothed Fisher information) for all distributions, sample sizes, and failure probabilities.
The mean of an unknown variance-$σ^2$ distribution $f$ can be estimated from $n$ samples with variance $\frac{σ^2}{n}$ and nearly corresponding subgaussian rate. When $f$ is known up to translation, this can be improved asymptotically to $\frac{1}{n\mathcal I}$, where $\mathcal I$ is the Fisher information of the distribution. Such an improvement is not possible for general unknown $f$, but [Stone, 1975] showed that this asymptotic convergence $\textit{is}$ possible if $f$ is $\textit{symmetric}$ about its mean. Stone's bound is asymptotic, however: the $n$ required for convergence depends in an unspecified way on the distribution $f$ and failure probability $δ$. In this paper we give finite-sample guarantees for symmetric mean estimation in terms of Fisher information. For every $f, n, δ$ with $n > \log \frac{1}δ$, we get convergence close to a subgaussian with variance $\frac{1}{n \mathcal I_r}$, where $\mathcal I_r$ is the $r$-$\textit{smoothed}$ Fisher information with smoothing radius $r$ that decays polynomially in $n$. Such a bound essentially matches the finite-sample guarantees in the known-$f$ setting.