Density estimation with stagewise optimization of the empirical risk

作者:Jussi Klemelä

摘要

We consider multivariate density estimation with identically distributed observations. We study a density estimator which is a convex combination of functions in a dictionary and the convex combination is chosen by minimizing the L 2 empirical risk in a stagewise manner. We derive the convergence rates of the estimator when the estimated density belongs to the L 2 closure of the convex hull of a class of functions which satisfies entropy conditions. The L 2 closure of a convex hull is a large non-parametric class but under suitable entropy conditions the convergence rates of the estimator do not depend on the dimension, and density estimation is feasible also in high dimensional cases. The variance of the estimator does not increase when the number of components of the estimator increases. Instead, we control the bias-variance trade-off by the choice of the dictionary from which the components are chosen.

论文关键词:Boosting, Empirical risk minimization, Greedy algorithms, Multivariate function estimation

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论文官网地址:https://doi.org/10.1007/s10994-006-5000-8