415
Views
0
CrossRef citations to date
0
Altmetric
Applications and Case Studies

Leveraging Weather Dynamics in Insurance Claims Triage Using Deep Learning

, &
Pages 825-838 | Received 08 Feb 2022, Accepted 05 Jan 2024, Published online: 06 Mar 2024
 

Abstract

In property insurance claims triage, insurers often use static information to assess the severity of a claim and to identify the subsequent actions. We hypothesize that the pattern of weather conditions throughout the course of a loss event is predictive of the insured losses, and hence appropriate use of weather dynamics improves the operation of insurers’ claim management. To test this hypothesis, we propose a deep learning method to incorporate dynamic weather information in the predictive modeling of the insured losses for reported claims. The proposed method features a hierarchical network architecture to address the challenges in claims triage due to the nature of weather dynamics. In the empirical analysis, we examine a portfolio of hail damage property insurance claims obtained from a major U.S. insurance carrier. When supplemented by dynamic weather information, the deep learning method exhibits substantial improvement in the hold-out predictive performance. We further design a cost-conscious decision strategy for triaging claims using the probabilistic forecasts of the insurance claim amounts. We show that leveraging weather dynamics in claims triage leads to a reduction of up to 9% and 6% in operational costs compared to when the triaging decision is based on forecasts without any weather information and with only static weather information, respectively. Supplementary materials for this article are available online.

Supplementary Materials

Supplementary materials summarize additional data features and analytical results. The sample data and program codes are also provided.

Acknowledgments

We thank Editor Prof. Michael Stein, the Associate Editor, and anonymous reviewers for their invaluable and insightful comments that have significantly improved the quality of our paper. The first author also acknowledge the generous support for this research from the Data Science Institute of University of Wisconsin-Madison and the Wisconsin Alumni Research Foundation.

Disclosure Statement

No potential conflict of interest was reported by the author(s).

Log in via your institution

Log in to Taylor & Francis Online

PDF download + Online access

  • 48 hours access to article PDF & online version
  • Article PDF can be downloaded
  • Article PDF can be printed
USD 61.00 Add to cart

Issue Purchase

  • 30 days online access to complete issue
  • Article PDFs can be downloaded
  • Article PDFs can be printed
USD 343.00 Add to cart

* Local tax will be added as applicable

Related Research

People also read lists articles that other readers of this article have read.

Recommended articles lists articles that we recommend and is powered by our AI driven recommendation engine.

Cited by lists all citing articles based on Crossref citations.
Articles with the Crossref icon will open in a new tab.