English

Smooth projected density estimation

Methodology 2014-11-25 v2

Abstract

We introduce and analyse a new nonparametric estimator of a multi-dimensional density. Our smooth projection estimator (SPE) is defined by a least squares projection of the sample onto an infinite dimensional mixture class via an undersmoothed nonparametric pilot estimate, which acts as a structural filter to regularise the solution. The undersmoothing is required to optimise the convergence rate of the SPE, which is jointly determined by that of the pilot estimator to the true density in squared L2\mathbb{L}_{2} norm, and by that of the pilot distribution function to the empirical distribution function in uniform norm. Our procedure was conceived with a view to exploiting well known results in convex analysis and their connection to mixture densities. In the context of our work, this translates to the observation that the infinite dimensional minimisation problem, implicit in the construction of the SPE, possesses a solution of dimension at most n+1n+1, where nn is the sample size. The SPE thus enjoys practical advantages such as computational efficiency, ease of storage and rapid evaluation at a new data point.

Keywords

Cite

@article{arxiv.1308.3968,
  title  = {Smooth projected density estimation},
  author = {Heather Battey and Han Liu},
  journal= {arXiv preprint arXiv:1308.3968},
  year   = {2014}
}

Comments

35 pages

R2 v1 2026-06-22T01:11:25.238Z