Nonparametric density estimation by histogram trend filtering
Abstract
We propose a novel approach for density estimation called histogram trend filtering. Our estimator arises from looking at surrogate Poisson model for counts of observations in a partition of the support of the data. We begin by showing consistency for a variational estimator for this density estimation problem. We then study a discrete estimator that can be efficiently found via convex optimization. We show that the estimator enjoys strong statistical guarantees, yet is much more practical and computationally efficient than other estimators that enjoy similar guarantees. Finally, in our simulation study the proposed method showed smaller averaged mean square error than competing methods. This favorable blend of properties makes histogram trend filtering an ideal candidate for use in routine data-analysis applications that call for a quick, efficient, accurate density estimate.
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