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Some optimization and decision problems in proportional reinsurance

Authors :
Castañer, Anna
Claramunt, M. Mercè
Mármol, Maite
Source :
Rect@, Vol 17, Iss 1, Pp 35-55 (2016)
Publication Year :
2016
Publisher :
ASEPUMA. Asociación Española de Profesores Universitarios de Matemáticas aplicadas a la Economía y a la Empresa, 2016.

Abstract

Reinsurance is one of the tools that an insurer can use to mitigate the underwriting risk and then to control its solvency. In this paper, we focus on the proportional reinsurance arrangements and we examine several optimization and decision problems of the insurer with respect to the reinsurance strategy. To this end, we use as decision tools not only the probability of ruin but also the random variable deficit at ruin if ruin occurs. The discounted penalty function is employed to calculate as particular cases the probability of ruin and the moments and the distribution function of the deficit at ruin if ruin occurs. We consider the classical risk theory model assuming a Poisson process and an individual claim amount phase-type distributed, modified with a proportional reinsurance with a retention level that is not constant and depends on the level of the surplus. Depending on whether the initial surplus is below or above a threshold level, the discounted penalty function behaves differently. General expressions for this discounted penalty function are obtained, as well as interesting theoretical results and explicit expressions for phase- type 2 distribution. These results are applied in numerical examples of decision problems based on the probability of ruin and on different risk measures of the deficit at ruin if ruin occurs (the expectation, the Value at Risk and the Tail Value at Risk).

Details

Language :
English, Spanish; Castilian
ISSN :
1575605X
Volume :
17
Issue :
1
Database :
Directory of Open Access Journals
Journal :
Rect@
Publication Type :
Academic Journal
Accession number :
edsdoj.58631c79f23e4fde8582e8a7ff6582c6
Document Type :
article