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ACTUARIAL APPLICATIONS OF WORD EMBEDDING MODELS

Published online by Cambridge University Press:  22 October 2019

Gee Y Lee*
Affiliation:
Department of Statistics and Probability Department of MathematicsMichigan State UniversityC337 Wells Hall, 619 Red Cedar Rd, East Lansing, MI 48824, USA E-Mail: leegee@msu.edu
Scott Manski
Affiliation:
Department of Statistics and ProbabilityMichigan State UniversityC511 Wells Hall, 619 Red Cedar Rd, East Lansing, MI 48824, USA E-Mail: manskisc@stt.msu.edu
Tapabrata Maiti
Affiliation:
Department of Statistics and ProbabilityMichigan State UniversityC424 Wells Hall, 619 Red Cedar Rd, East Lansing, MI 48824, USA E-Mail: maiti@stt.msu.edu
*

Abstract

In insurance analytics, textual descriptions of claims are often discarded, because traditional empirical analyses require numeric descriptor variables. This paper demonstrates how textual data can be easily used in insurance analytics. Using the concept of word similarities, we illustrate how to extract variables from text and incorporate them into claims analyses using standard generalized linear model or generalized additive regression model. This procedure is applied to the Wisconsin Local Government Property Insurance Fund (LGPIF) data, in order to demonstrate how insurance claims management and risk mitigation procedures can be improved. We illustrate two applications. First, we show how the claims classification problem can be solved using textual information. Second, we analyze the relationship between risk metrics and the probability of large losses. We obtain good results for both applications, where short textual descriptions of insurance claims are used for the extraction of features.

Type
Research Article
Copyright
© Astin Bulletin 2019 

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