Nonparametric Divergence Estimation with Applications to Machine Learning on Distributions - Robotics Institute Carnegie Mellon University

Nonparametric Divergence Estimation with Applications to Machine Learning on Distributions

B. Poczos, L. Xiong, and J. Schneider
Conference Paper, Proceedings of 27th Conference on Uncertainty in Artificial Intelligence (UAI '11), pp. 599 - 608, July, 2011

Abstract

Low-dimensional embedding, manifold learning, clustering, classification, and anomaly detection are among the most important problems in machine learning. The existing methods usually consider the case when each instance has a fixed, finite-dimensional feature representation. Here we consider a different setting. We assume that each instance corresponds to a continuous probability distribution. These distributions are unknown, but we are given some i.i.d. samples from each distribution. Our goal is to estimate the distances between these distributions and use these distances to perform low-dimensional embedding, clustering/classification, or anomaly detection for the distributions. We present estimation algorithms, describe how to apply them for machine learning tasks on distributions, and show empirical results on synthetic data, real word images, and astronomical data sets.

BibTeX

@conference{Poczos-2011-119805,
author = {B. Poczos and L. Xiong and J. Schneider},
title = {Nonparametric Divergence Estimation with Applications to Machine Learning on Distributions},
booktitle = {Proceedings of 27th Conference on Uncertainty in Artificial Intelligence (UAI '11)},
year = {2011},
month = {July},
pages = {599 - 608},
}