Independent component analysis via nonparametric maximum likelihood estimation

Abstract
Independent Component Analysis (ICA) models are very popular semiparametric models in which we observe independent copies of a random vector , where is a non-singular matrix and has independent components. We propose a new way of estimating the unmixing matrix and the marginal distributions of the components of using nonparametric maximum likelihood. Specifically, we study the projection of the empirical distribution onto the subset of ICA distributions having log-concave marginals. We show that, from the point of view of estimating the unmixing matrix, it makes no difference whether or not the log-concavity is correctly specified. The approach is further justified by both theoretical results and a simulation study.
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