Proceedings of the Annual Conference of JSAI
Online ISSN : 2758-7347
37th (2023)
Session ID : 1B3-GS-2-05
Conference information

Fully Data-driven Normalized and Exponentiated Kernel Density Estimator with Hyvärinen Score
*Shouto YONEKURAShunsuke IMAIYoshihiko NISHIYAMAShonosuke SUGASAWATakuya KORIYAMA
Author information
CONFERENCE PROCEEDINGS FREE ACCESS

Details
Abstract

We introduce a new deal of kernel density estimation using an exponentiated form of kernel density estimators. The density estimator has two hyperparameters flexibly controlling the smoothness of the resulting density. We tune them in a datadriven manner by minimizing an objective function based on the Hyvärinen score to avoid the optimization involving the intractable normalizing constant due to the exponentiation. We show the asymptotic properties of the proposed estimator and emphasize the importance of including the two hyperparameters for flexible density estimation. Our simulation studies and application to income data show that the proposed density estimator is appealing when the underlying density is multi-modal or observations contain outliers.

Content from these authors
© 2023 The Japanese Society for Artificial Intelligence
Previous article Next article
feedback
Top