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Some Recent Progress on Numerical Methods for Controlled Regime-Switching Models with Applications to Insurance and Risk Management

  • Zhuo Jin EMAIL logo , Rebecca Stockbridge and George Yin

Abstract

This paper provides a survey on several numerical approximation schemes for stochastic control problems that arise from actuarial science and finance. The problems to be considered include dividend optimization, reinsurance game, and quantile hedging for guaranteed minimum death benefits. To better describe the complicated financial markets and their inherent uncertainty and randomness, the so-called regime-switching models are adopted. Such models are more realistic and versatile, however, far more complicated to handle. Due to the complexity of the construction, the regime-switching diffusion systems can only be solved in very special cases. In general, it is virtually impossible to obtain closed-form solutions. We use Markov chain approximation techniques to construct discrete-time controlled Markov chains to approximate the value function and optimal controls. Examples are presented to illustrate the applicability of the numerical methods.

Funding source: National Science Foundation

Award Identifier / Grant number: DMS-1207667

Received: 2014-10-8
Revised: 2015-5-5
Accepted: 2015-5-22
Published Online: 2015-6-6
Published in Print: 2015-7-1

© 2015 by De Gruyter

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