Safety Margins for Systematic Biometric and Financial Risk in a Semi-Markov Life Insurance Framework
Insurance companies use conservative first order valuation bases to calculate insurance premiums and reserves. These valuation bases have a significant impact on the insurer’s solvency and on the premiums of the insurance products. Safety margins for systematic biometric and financial risk are in pr...
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doaj-95634fa87f5245cd9d28815c6db1df3a2020-11-24T23:24:36ZengMDPI AGRisks2227-90912015-01-0131356010.3390/risks3010035risks3010035Safety Margins for Systematic Biometric and Financial Risk in a Semi-Markov Life Insurance FrameworkAndreas Niemeyer0Institut für Versicherungswissenschaften, Universität Ulm, D-89069 Ulm, GermanyInsurance companies use conservative first order valuation bases to calculate insurance premiums and reserves. These valuation bases have a significant impact on the insurer’s solvency and on the premiums of the insurance products. Safety margins for systematic biometric and financial risk are in practice typically chosen as time-constant percentages on top of the best estimate transition intensities. We develop a risk-oriented method for the allocation of a total safety margin to the single safety margins at each point in time and each state. In a case study, we demonstrate the suitability of the proposed method in different frameworks. The results show that the traditional method yields an unwanted variability of the safety level with respect to time, whereas the variability can be significantly reduced by the new method. Furthermore, the case study supports the German 60 percent rule for the technical interest rate.http://www.mdpi.com/2227-9091/3/1/35safety marginfirst order basissystematic biometric riskfinancial risksemi-Markov multi-state modelrisk decomposition |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Andreas Niemeyer |
spellingShingle |
Andreas Niemeyer Safety Margins for Systematic Biometric and Financial Risk in a Semi-Markov Life Insurance Framework Risks safety margin first order basis systematic biometric risk financial risk semi-Markov multi-state model risk decomposition |
author_facet |
Andreas Niemeyer |
author_sort |
Andreas Niemeyer |
title |
Safety Margins for Systematic Biometric and Financial Risk in a Semi-Markov Life Insurance Framework |
title_short |
Safety Margins for Systematic Biometric and Financial Risk in a Semi-Markov Life Insurance Framework |
title_full |
Safety Margins for Systematic Biometric and Financial Risk in a Semi-Markov Life Insurance Framework |
title_fullStr |
Safety Margins for Systematic Biometric and Financial Risk in a Semi-Markov Life Insurance Framework |
title_full_unstemmed |
Safety Margins for Systematic Biometric and Financial Risk in a Semi-Markov Life Insurance Framework |
title_sort |
safety margins for systematic biometric and financial risk in a semi-markov life insurance framework |
publisher |
MDPI AG |
series |
Risks |
issn |
2227-9091 |
publishDate |
2015-01-01 |
description |
Insurance companies use conservative first order valuation bases to calculate insurance premiums and reserves. These valuation bases have a significant impact on the insurer’s solvency and on the premiums of the insurance products. Safety margins for systematic biometric and financial risk are in practice typically chosen as time-constant percentages on top of the best estimate transition intensities. We develop a risk-oriented method for the allocation of a total safety margin to the single safety margins at each point in time and each state. In a case study, we demonstrate the suitability of the proposed method in different frameworks. The results show that the traditional method yields an unwanted variability of the safety level with respect to time, whereas the variability can be significantly reduced by the new method. Furthermore, the case study supports the German 60 percent rule for the technical interest rate. |
topic |
safety margin first order basis systematic biometric risk financial risk semi-Markov multi-state model risk decomposition |
url |
http://www.mdpi.com/2227-9091/3/1/35 |
work_keys_str_mv |
AT andreasniemeyer safetymarginsforsystematicbiometricandfinancialriskinasemimarkovlifeinsuranceframework |
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1725559777769029632 |