Recent Challenges in Actuarial Science

Posted: 24 Mar 2022

Date Written: March 1, 2022

Abstract

For centuries, mathematicians and, later, statisticians, have found natural research and employment opportunities in the realm of insurance. By definition, insurance offers financial cover against unforeseen events that involve an important component of randomness, and consequently, probability theory and mathematical statistics enter insurance modeling in a fundamental way. In recent years, a data deluge, coupled with ever-advancing information technology and the birth of data science, has revolutionized or is about to revolutionize most areas of actuarial science as well as insurance practice. We discuss parts of this evolution and, in the case of non-life insurance, show how a combination of classical tools from statistics, such as generalized linear models and, e.g., neural networks contribute to better understanding and analysis of actuarial data. We further review areas of actuarial science where the cross fertilization between stochastics and insurance holds promise for both sides. Of course, the vastness of the field of insurance limits our choice of topics; we mainly focus on topics closer to our main areas of research.

Suggested Citation

Embrechts, Paul and Wüthrich, Mario V., Recent Challenges in Actuarial Science (March 1, 2022). Annual Review of Statistics and Its Application, Vol. 9, Issue 1, pp. 119-140, 2022, Available at SSRN: https://ssrn.com/abstract=4065365 or http://dx.doi.org/10.1146/annurev-statistics-040120-030244

Paul Embrechts (Contact Author)

ETH Zürich ( email )

LEE G104
Leonhardstrasse 21
Zurich
Switzerland

Mario V. Wüthrich

ETH Zürich ( email )

LEE G104
Leonhardstrasse 21
Zurich
Switzerland

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