Abstract
We consider a non-homogeneous continuous time Markov chain model for Long-Term Care with five states: the autonomous state, three dependent states of light, moderate and severe dependence levels and the death state. For a general approach, we allow for non null intensities for all the returns from higher dependence levels to all lesser dependencies in the multi-state model. Using data from the 2015 Portuguese National Network of Continuous Care database, as the main research contribution of this paper, we propose a method to calibrate transition intensities with the one step transition probabilities estimated from data. This allows us to use non-homogeneous continuous time Markov chains for modeling Long-Term Care. We solve numerically the Kolmogorov forward differential equations in order to obtain continuous time transition probabilities. We assess the quality of the calibration using the Portuguese life expectancies. Based on reasonable monthly costs for each dependence state we compute, by Monte Carlo simulation, trajectories of the Markov chain process and derive relevant information for model validation and premium calculation.
Funder
Centro de Matemática e Aplicações da Universidade Nova de Lisboa
Subject
Strategy and Management,Economics, Econometrics and Finance (miscellaneous),Accounting
Reference38 articles.
1. Addressing the Life Expectancy Gap in Pension Policy;Bravo;Insurance: Mathematics and Economics,2020
2. Multistate models in health insurance
3. A multiple state model for the analysis of permanent health insurance claims by cause of disability;Cordeiro;Insurance Mathematics & Economics,2002a
4. Transition Intensities for a model for Permanent Health Insurance
5. Financing Long-Term Care in Europe: Institutions, Markets and Models;Costa-Font,2012
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