The Ensemble Epanechnikov Mixture Filter
Machine Learning
2024-08-22 v1 Machine Learning
Numerical Analysis
Numerical Analysis
Optimization and Control
Methodology
Abstract
In the high-dimensional setting, Gaussian mixture kernel density estimates become increasingly suboptimal. In this work we aim to show that it is practical to instead use the optimal multivariate Epanechnikov kernel. We make use of this optimal Epanechnikov mixture kernel density estimate for the sequential filtering scenario through what we term the ensemble Epanechnikov mixture filter (EnEMF). We provide a practical implementation of the EnEMF that is as cost efficient as the comparable ensemble Gaussian mixture filter. We show on a static example that the EnEMF is robust to growth in dimension, and also that the EnEMF has a significant reduction in error per particle on the 40-variable Lorenz '96 system.
Keywords
Cite
@article{arxiv.2408.11164,
title = {The Ensemble Epanechnikov Mixture Filter},
author = {Andrey A. Popov and Renato Zanetti},
journal= {arXiv preprint arXiv:2408.11164},
year = {2024}
}