Risks (Sep 2017)

Bayesian Modelling, Monte Carlo Sampling and Capital Allocation of Insurance Risks

  • Gareth W. Peters,
  • Rodrigo S. Targino,
  • Mario V. Wüthrich

DOI
https://doi.org/10.3390/risks5040053
Journal volume & issue
Vol. 5, no. 4
p. 53

Abstract

Read online

The main objective of this work is to develop a detailed step-by-step guide to the development and application of a new class of efficient Monte Carlo methods to solve practically important problems faced by insurers under the new solvency regulations. In particular, a novel Monte Carlo method to calculate capital allocations for a general insurance company is developed, with a focus on coherent capital allocation that is compliant with the Swiss Solvency Test. The data used is based on the balance sheet of a representative stylized company. For each line of business in that company, allocations are calculated for the one-year risk with dependencies based on correlations given by the Swiss Solvency Test. Two different approaches for dealing with parameter uncertainty are discussed and simulation algorithms based on (pseudo-marginal) Sequential Monte Carlo algorithms are described and their efficiency is analysed.

Keywords