A Dirichlet Process Mixture Regression Model for the Analysis of Competing Risk Events

34 Pages Posted: 12 Feb 2023

See all articles by Francesco Ungolo

Francesco Ungolo

University of New South Wales; University of New South Wales (UNSW) - ARC Centre of Excellence in Population Ageing Research (CEPAR)

Edwin R. van den Heuvel

Eindhoven University of Technology (TUE)

Abstract

We develop a regression model for the analysis of competing risk events. The joint distribution of the time to these events is characterized by a random effect following a Dirichlet Process, explaining their variability. This entails an additional layer of flexibility of this joint model, whose inference is robust with respect to the misspecification of the distribution of the random effects. The model is analysed in a fully Bayesian setting, yielding a flexible Dirichlet Process Mixture model for the joint distribution of the time to events. An efficient MCMC sampler is developed for inference. The modelling approach is applied to the empirical analysis of the surrending risk in a US life insurance portfolio previously analysed by Milhaud & Dutang (2018). The approach yields an improved predictive performance of the surrending rates.

Keywords: Competing risks, Dirichlet Process, Survival Analysis

Suggested Citation

Ungolo, Francesco and van den Heuvel, Edwin R., A Dirichlet Process Mixture Regression Model for the Analysis of Competing Risk Events. Available at SSRN: https://ssrn.com/abstract=4355485 or http://dx.doi.org/10.2139/ssrn.4355485

Francesco Ungolo (Contact Author)

University of New South Wales ( email )

Sydney, New South Wales 2052
Australia

University of New South Wales (UNSW) - ARC Centre of Excellence in Population Ageing Research (CEPAR) ( email )

Kensington
High St
Sydney, NSW 2052
Australia

Edwin R. Van den Heuvel

Eindhoven University of Technology (TUE) ( email )

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