28
46

Efficient Statistics, in High Dimensions, from Truncated Samples

Abstract

We provide an efficient algorithm for the classical problem, going back to Galton, Pearson, and Fisher, of estimating, with arbitrary accuracy the parameters of a multivariate normal distribution from truncated samples. Truncated samples from a dd-variate normal N(μ,Σ){\cal N}(\mathbf{\mu},\mathbf{\Sigma}) means a samples is only revealed if it falls in some subset SRdS \subseteq \mathbb{R}^d; otherwise the samples are hidden and their count in proportion to the revealed samples is also hidden. We show that the mean μ\mathbf{\mu} and covariance matrix Σ\mathbf{\Sigma} can be estimated with arbitrary accuracy in polynomial-time, as long as we have oracle access to SS, and SS has non-trivial measure under the unknown dd-variate normal distribution. Additionally we show that without oracle access to SS, any non-trivial estimation is impossible.

View on arXiv
Comments on this paper