English

Robust Kernel Density Estimation by Scaling and Projection in Hilbert Space

Machine Learning 2014-11-18 v1

Abstract

While robust parameter estimation has been well studied in parametric density estimation, there has been little investigation into robust density estimation in the nonparametric setting. We present a robust version of the popular kernel density estimator (KDE). As with other estimators, a robust version of the KDE is useful since sample contamination is a common issue with datasets. What "robustness" means for a nonparametric density estimate is not straightforward and is a topic we explore in this paper. To construct a robust KDE we scale the traditional KDE and project it to its nearest weighted KDE in the L2L^2 norm. This yields a scaled and projected KDE (SPKDE). Because the squared L2L^2 norm penalizes point-wise errors superlinearly this causes the weighted KDE to allocate more weight to high density regions. We demonstrate the robustness of the SPKDE with numerical experiments and a consistency result which shows that asymptotically the SPKDE recovers the uncontaminated density under sufficient conditions on the contamination.

Keywords

Cite

@article{arxiv.1411.4378,
  title  = {Robust Kernel Density Estimation by Scaling and Projection in Hilbert Space},
  author = {Robert A. Vandermeulen and Clayton D. Scott},
  journal= {arXiv preprint arXiv:1411.4378},
  year   = {2014}
}

Comments

Extended version of NIPS 2014 paper

R2 v1 2026-06-22T07:00:58.903Z