Expanding insurability through exploiting linear partial information

This contribution aims to expand insurability using partial linear information (LPI) on probabilities of the type, $ {r}_{1}\ge {r}_{3} $ (with $ {r}_{1}+{r}_{2}+{r}_{3}+\dots {r}_{n} = {1} $). LPI theory permits to exploit such weak information for systematic decision-making provided the decision-m...

Full description

Bibliographic Details
Main Author: Peter Zweifel
Format: Article
Language:English
Published: AIMS Press 2022-03-01
Series:Data Science in Finance and Economics
Subjects:
Online Access:https://www.aimspress.com/article/doi/10.3934/DSFE.2022001?viewType=HTML
Description
Summary:This contribution aims to expand insurability using partial linear information (LPI) on probabilities of the type, $ {r}_{1}\ge {r}_{3} $ (with $ {r}_{1}+{r}_{2}+{r}_{3}+\dots {r}_{n} = {1} $). LPI theory permits to exploit such weak information for systematic decision-making provided the decision-maker is willing to apply the maxEmin criterion in a game against Nature. The maxEmin rule is a natural generalization of expected profit (probabilities are known) and the maximin rule (probabilities are unknown). LPI theory is used to find out whether a crypto assets portfolio offered to an insurance company is insurable. In an example, an unfavorable future development of losses causes maximum expected loss to exceed the present value of premiums, rendering the portfolio uninsurable according to maxEmin. However, this changes when LPI concerning this development is available, while the integration of uncertain returns from investing the extra premium fails to achieve insurability in this example. Evidently, LPI theory enables insurers to accept risks that otherwise are deemed uninsurable.
ISSN:2769-2140