Eventi

1 Giugno, 2016 14:30
MOX Seminar

Inference on covariance operators via concentration inequalities

Adam Kashlak, Cambridge University (PhD student of Faculty of Mathematics)
Aula Seminari "Saleri" VI Piano Edificio 14, MOX-Dipartimento di Matematica, Politecnico di Milano
Abstract

Inference on covariance operators is an important part of functional data analysis. Panaretos, Kraus, and Maddocks (2010) compare covariance operators for Gaussian process data. Pigoli, Aston, Dryden, and Secch.

(2014) consider a variety of metrics over the space of covariance operators. In this talk, we propose a novel approach to the analysis of covariance operators making use of concentration inequalities. First, non-asymptotic confidence sets are constructed for such operators.
Then, subsequent applications including a k sample test for equality of covariance, a functional data classifier, and an expectation-maximization style clustering algorithm are derived and tested on both simulated and phoneme data.

contact: piercesare.secchi@polimi.it