English

Compound Poisson Point Processes, Concentration and Oracle Inequalities

Statistics Theory 2019-12-10 v3 Probability Statistics Theory

Abstract

This note aims at presenting several new theoretical results for the compound Poisson point process, which follows the work of Zhang \emph{et al.} [Insurance~Math.~Econom.~59(2014), 325-336]. The first part provides a new characterization for a discrete compound Poisson point process (proposed by {Acz{\'e}l} [Acta~Math.~Hungar.~3(3)(1952), 219-224]), it extends the characterization of the Poisson point process given by Copeland and Regan [Ann.~Math.~(1936): 357-362]. Next, we derive some concentration inequalities for discrete compound Poisson point process (negative binomial random variable with unknown dispersion is a significant example). These concentration inequalities are potentially useful in count data regressions. We give an application in the weighted Lasso penalized negative binomial regression whose KKT conditions of penalized likelihood hold with high probability and then we derive non-asymptotic oracle inequalities for a weighted Lasso estimator.

Keywords

Cite

@article{arxiv.1709.04159,
  title  = {Compound Poisson Point Processes, Concentration and Oracle Inequalities},
  author = {Huiming Zhang and Xiaoxu Wu},
  journal= {arXiv preprint arXiv:1709.04159},
  year   = {2019}
}

Comments

25 pages, enlarge the orginal version

R2 v1 2026-06-22T21:41:21.789Z