A Dimension-Independent discriminant between distributions

02/13/2018
by   Salimeh Yasaei Sekeh, et al.
0

Henze-Penrose divergence is a non-parametric divergence measure that can be used to estimate a bound on the Bayes error in a binary classification problem. In this paper, we show that a cross-match statistic based on optimal weighted matching can be used to directly estimate Henze-Penrose divergence. Unlike an earlier approach based on the Friedman-Rafsky minimal spanning tree statistic, the proposed method is dimension-independent. The new approach is evaluated using simulation and applied to real datasets to obtain Bayes error estimates.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/01/2018

Convergence Rates for Empirical Estimation of Binary Classification Bounds

Bounding the best achievable error probability for binary classification...
research
12/19/2014

Empirically Estimable Classification Bounds Based on a New Divergence Measure

Information divergence functions play a critical role in statistics and ...
research
07/24/2021

A Model-Agnostic Algorithm for Bayes Error Determination in Binary Classification

This paper presents the intrinsic limit determination algorithm (ILD Alg...
research
06/13/2019

A technical note on divergence of the Wald statistic

The Wald test statistic has been shown to diverge (Dufour et al, 2013, 2...
research
10/21/2020

Sequential Change Detection by Optimal Weighted ℓ_2 Divergence

We present a new non-parametric statistics, called the weighted ℓ_2 dive...
research
10/31/2017

Rate-optimal Meta Learning of Classification Error

Meta learning of optimal classifier error rates allows an experimenter t...
research
07/17/2014

Sparse Quadratic Discriminant Analysis and Community Bayes

We develop a class of rules spanning the range between quadratic discrim...

Please sign up or login with your details

Forgot password? Click here to reset