학술논문

Full adaptation to smoothness using randomly truncated series priors with Gaussian coefficients and inverse gamma scaling
Document Type
Working Paper
Source
Subject
Mathematics - Statistics Theory
Language
Abstract
We study random series priors for estimating a functional parameter (f\in L^2[0,1]). We show that with a series prior with random truncation, Gaussian coefficients, and inverse gamma multiplicative scaling, it is possible to achieve posterior contraction at optimal rates and adaptation to arbitrary degrees of smoothness. We present general results that can be combined with existing rate of contraction results for various nonparametric estimation problems. We give concrete examples for signal estimation in white noise and drift estimation for a one-dimensional SDE.