Cox process functional learning
Statistics Theory
2014-10-16 v1 Statistics Theory
Abstract
This article addresses the problem of functional supervised classification of Cox process trajectories, whose random intensity is driven by some exogenous random covariable. The classification task is achieved through a regularized convex empirical risk minimization procedure, and a nonasymptotic oracle inequality is derived. We show that the algorithm provides a Bayes-risk consistent classifier. Furthermore, it is proved that the classifier converges at a rate which adapts to the unknown regularity of the intensity process. Our results are obtained by taking advantage of martingale and stochastic calculus arguments, which are natural in this context and fully exploit the functional nature of the problem.
Cite
@article{arxiv.1410.4029,
title = {Cox process functional learning},
author = {Gérard Biau and Benoît Cadre and Quentin Paris},
journal= {arXiv preprint arXiv:1410.4029},
year = {2014}
}