SOTAVerified

Variational Weighting for Kernel Density Ratios

2023-11-06NeurIPS 2023Code Available0· sign in to hype

Sangwoong Yoon, Frank C. Park, Gunsu S Yun, Iljung Kim, Yung-Kyun Noh

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Kernel density estimation (KDE) is integral to a range of generative and discriminative tasks in machine learning. Drawing upon tools from the multidimensional calculus of variations, we derive an optimal weight function that reduces bias in standard kernel density estimates for density ratios, leading to improved estimates of prediction posteriors and information-theoretic measures. In the process, we shed light on some fundamental aspects of density estimation, particularly from the perspective of algorithms that employ KDEs as their main building blocks.

Tasks

Reproductions