Machine Learning in Least-Squares Monte Carlo Proxy Modeling of Life Insurance Companies
Under the Solvency II regime, life insurance companies are asked to derive their solvency capital requirements from the full loss distributions over the coming year. Since the industry is currently far from being endowed with sufficient computational capacities to fully simulate these distributions,...
Main Authors: | , , |
---|---|
Format: | Article |
Language: | English |
Published: |
MDPI AG
2020-02-01
|
Series: | Risks |
Subjects: | |
Online Access: | https://www.mdpi.com/2227-9091/8/1/21 |
id |
doaj-bc5ec292910c49dd859e0321e18e686e |
---|---|
record_format |
Article |
spelling |
doaj-bc5ec292910c49dd859e0321e18e686e2020-11-25T02:51:11ZengMDPI AGRisks2227-90912020-02-01812110.3390/risks8010021risks8010021Machine Learning in Least-Squares Monte Carlo Proxy Modeling of Life Insurance CompaniesAnne-Sophie Krah0Zoran Nikolić1Ralf Korn2Department of Mathematics, TU Kaiserslautern, Erwin-Schrödinger-Straße, Geb. 48, 67653 Kaiserslautern, GermanyMathematical Institute, University Cologne, Weyertal 86-90, 50931 Cologne, GermanyDepartment of Mathematics, TU Kaiserslautern, Erwin-Schrödinger-Straße, Geb. 48, 67653 Kaiserslautern, GermanyUnder the Solvency II regime, life insurance companies are asked to derive their solvency capital requirements from the full loss distributions over the coming year. Since the industry is currently far from being endowed with sufficient computational capacities to fully simulate these distributions, the insurers have to rely on suitable approximation techniques such as the least-squares Monte Carlo (LSMC) method. The key idea of LSMC is to run only a few wisely selected simulations and to process their output further to obtain a risk-dependent proxy function of the loss. In this paper, we present and analyze various adaptive machine learning approaches that can take over the proxy modeling task. The studied approaches range from ordinary and generalized least-squares regression variants over generalized linear model (GLM) and generalized additive model (GAM) methods to multivariate adaptive regression splines (MARS) and kernel regression routines. We justify the combinability of their regression ingredients in a theoretical discourse. Further, we illustrate the approaches in slightly disguised real-world experiments and perform comprehensive out-of-sample tests.https://www.mdpi.com/2227-9091/8/1/21least-squares monte carlo methodmachine learningproxy modelinglife insurancesolvency ii |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Anne-Sophie Krah Zoran Nikolić Ralf Korn |
spellingShingle |
Anne-Sophie Krah Zoran Nikolić Ralf Korn Machine Learning in Least-Squares Monte Carlo Proxy Modeling of Life Insurance Companies Risks least-squares monte carlo method machine learning proxy modeling life insurance solvency ii |
author_facet |
Anne-Sophie Krah Zoran Nikolić Ralf Korn |
author_sort |
Anne-Sophie Krah |
title |
Machine Learning in Least-Squares Monte Carlo Proxy Modeling of Life Insurance Companies |
title_short |
Machine Learning in Least-Squares Monte Carlo Proxy Modeling of Life Insurance Companies |
title_full |
Machine Learning in Least-Squares Monte Carlo Proxy Modeling of Life Insurance Companies |
title_fullStr |
Machine Learning in Least-Squares Monte Carlo Proxy Modeling of Life Insurance Companies |
title_full_unstemmed |
Machine Learning in Least-Squares Monte Carlo Proxy Modeling of Life Insurance Companies |
title_sort |
machine learning in least-squares monte carlo proxy modeling of life insurance companies |
publisher |
MDPI AG |
series |
Risks |
issn |
2227-9091 |
publishDate |
2020-02-01 |
description |
Under the Solvency II regime, life insurance companies are asked to derive their solvency capital requirements from the full loss distributions over the coming year. Since the industry is currently far from being endowed with sufficient computational capacities to fully simulate these distributions, the insurers have to rely on suitable approximation techniques such as the least-squares Monte Carlo (LSMC) method. The key idea of LSMC is to run only a few wisely selected simulations and to process their output further to obtain a risk-dependent proxy function of the loss. In this paper, we present and analyze various adaptive machine learning approaches that can take over the proxy modeling task. The studied approaches range from ordinary and generalized least-squares regression variants over generalized linear model (GLM) and generalized additive model (GAM) methods to multivariate adaptive regression splines (MARS) and kernel regression routines. We justify the combinability of their regression ingredients in a theoretical discourse. Further, we illustrate the approaches in slightly disguised real-world experiments and perform comprehensive out-of-sample tests. |
topic |
least-squares monte carlo method machine learning proxy modeling life insurance solvency ii |
url |
https://www.mdpi.com/2227-9091/8/1/21 |
work_keys_str_mv |
AT annesophiekrah machinelearninginleastsquaresmontecarloproxymodelingoflifeinsurancecompanies AT zorannikolic machinelearninginleastsquaresmontecarloproxymodelingoflifeinsurancecompanies AT ralfkorn machinelearninginleastsquaresmontecarloproxymodelingoflifeinsurancecompanies |
_version_ |
1724735845083119616 |