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Document Details :

Title: A Nonhomogeneous Poisson Hidden Markov Model for Claim Counts
Author(s): LU, Yi , ZENG, Leilei
Journal: ASTIN Bulletin
Volume: 42    Issue: 1   Date: 2012   
Pages: 181-202
DOI: 10.2143/AST.42.1.2160740

Abstract :
We propose a nonhomogeneous Poisson hidden Markov model for a time series of claim counts that accounts for both seasonal variations and random fluctuations in the claims intensity. It assumes that the parameters of the intensity function for the nonhomogeneous Poisson distribution vary according to an (unobserved) underlying Markov chain. This can apply to natural phenomena that evolve in a seasonal environment. For example, hurricanes that are subject to random fluctuations (El Niño-La Niña cycles) affect insurance claims. The Expectation-Maximization (EM) algorithm is used to calculate the maximum likelihood estimators for the parameters of this dynamic Poisson hidden Markov model. Statistical applications of this model to Atlantic hurricanes and tropical storms data are discussed.