English

Splitting models for multivariate count data

Statistics Theory 2018-02-07 v1 Probability Statistics Theory

Abstract

Considering discrete models, the univariate framework has been studied in depth compared to the multivariate one. This paper first proposes two criteria to define a sensu stricto multivariate discrete distribution. It then introduces the class of splitting distributions that encompasses all usual multivariate discrete distributions (multinomial, negative multinomial, multivariate hypergeometric, multivariate neg- ative hypergeometric, etc . . . ) and contains several new. Many advantages derive from the compound aspect of split- ting distributions. It simplifies the study of their characteris- tics, inferences, interpretations and extensions to regression models. Moreover, splitting models can be estimated only by combining existing methods, as illustrated on three datasets with reproducible studies.

Keywords

Cite

@article{arxiv.1802.02074,
  title  = {Splitting models for multivariate count data},
  author = {Pierre Fernique and Jean Peyhardi and Jean-Baptiste Durand},
  journal= {arXiv preprint arXiv:1802.02074},
  year   = {2018}
}