English

Spatial Tweedie exponential dispersion models

Methodology 2023-02-14 v1 Applications

Abstract

This paper proposes a general modeling framework that allows for uncertainty quantification at the individual covariate level and spatial referencing, operating withing a double generalized linear model (DGLM). DGLMs provide a general modeling framework allowing dispersion to depend in a link-linear fashion on chosen covariates. We focus on working with Tweedie exponential dispersion models while considering DGLMs, the reason being their recent wide-spread use for modeling mixed response types. Adopting a regularization based approach, we suggest a class of flexible convex penalties derived from an un-directed graph that facilitates estimation of the unobserved spatial effect. Developments are concisely showcased by proposing a co-ordinate descent algorithm that jointly explains variation from covariates in mean and dispersion through estimation of respective model coefficients while estimating the unobserved spatial effect. Simulations performed show that proposed approach is superior to competitors like the ridge and un-penalized versions. Finally, a real data application is considered while modeling insurance losses arising from automobile collisions in the state of Connecticut, USA for the year 2008.

Keywords

Cite

@article{arxiv.2003.06299,
  title  = {Spatial Tweedie exponential dispersion models},
  author = {Aritra Halder and Shariq Mohammed and Kun Chen and Dipak K. Dey},
  journal= {arXiv preprint arXiv:2003.06299},
  year   = {2023}
}

Comments

26 pages, 3 figures and 7 tables

R2 v1 2026-06-23T14:13:59.990Z