Density Estimation via Discrepancy Based Adaptive Sequential Partition
Abstract
Given observations from an unknown absolute continuous distribution defined on some domain , we propose a nonparametric method to learn a piecewise constant function to approximate the underlying probability density function. Our density estimate is a piecewise constant function defined on a binary partition of . The key ingredient of the algorithm is to use discrepancy, a concept originates from Quasi Monte Carlo analysis, to control the partition process. The resulting algorithm is simple, efficient, and has a provable convergence rate. We empirically demonstrate its efficiency as a density estimation method. We present its applications on a wide range of tasks, including finding good initializations for k-means.
Cite
@article{arxiv.1404.1425,
title = {Density Estimation via Discrepancy Based Adaptive Sequential Partition},
author = {Dangna Li and Kun Yang and Wing Hung Wong},
journal= {arXiv preprint arXiv:1404.1425},
year = {2018}
}
Comments
Binary Partition, Star Discrepancy, Density Estimation, Mode Seeking, Level Set Tree