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Pricing and reserving with an occurrence and development model for non-life insurance claims

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Authors : Antonio, Katrien (Author of the conference)
CIRM (Publisher )

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Abstract : Traditional non-life reserving models largely neglect the vast amount of information collected over the lifetime of a claim. This information includes covariates describing the policy, claim cause as well as the detailed history collected during a claim's development over time. We present the hierarchical reserving model as a modular framework for integrating a claim's history and claim-specific covariates into the development process. Hierarchical reserving models decompose the joint likelihood of the development process over time. Moreover, they are tailored to the portfolio at hand by adding a layer to the model for each of the events registered during the development of a claim (e.g. settlement, payment). Layers are modelled with statistical learning (e.g. generalized linear models) or machine learning methods (e.g. gradient boosting machines) and use claim-specific covariates. As a result of its flexibility, this framework incorporates many existing reserving models, ranging from aggregate models designed for run-off triangles to individual models using claim-specific covariates. This connection allows us to develop a data-driven strategy for choosing between aggregate and individual reserving; an important decision for reserving practitioners. We illustrate our method with a case study on a real insurance data set and deduce new insights in the covariates driving the development of claims. Moreover, we evaluate the method's performance on a large number of simulated portfolios representing several realistic development scenarios and demonstrate the flexibility and robustness of the hierarchical reserving model.

Keywords : individual claims reserving; covariate shift; model and variable selection; moving window evaluation; simulation machine

MSC Codes :
91B30 - Risk theory, insurance

    Information on the Video

    Film maker : Hennenfent, Guillaume
    Language : English
    Available date : 02/11/2022
    Conference Date : 29/09/2022
    Subseries : Research talks
    arXiv category : Quantitative Finance
    Mathematical Area(s) : Probability & Statistics
    Format : MP4 (.mp4) - HD
    Video Time : 00:43:58
    Targeted Audience : Researchers ; Graduate Students ; Doctoral Students, Post-Doctoral Students
    Download : https://videos.cirm-math.fr/2022-09-29_Antonio.mp4

Information on the Event

Event Title : Machine Learning in Insurance Sector Targeted to Risk Analysis and Losses / MLISTRAL
Event Organizers : Dutang, Christophe ; Eyraud-Loisel, Anne ; Gaucher, Fanny ; Milhaud, Xavier ; Pommeret, Denys ; Royer-Carenzi, Manuela
Dates : 26/09/2022 - 30/09/2022
Event Year : 2022
Event URL : https://conferences.cirm-math.fr/2634.html

Citation Data

DOI : 10.24350/CIRM.V.19962503
Cite this video as: Antonio, Katrien (2022). Pricing and reserving with an occurrence and development model for non-life insurance claims. CIRM. Audiovisual resource. doi:10.24350/CIRM.V.19962503
URI : http://dx.doi.org/10.24350/CIRM.V.19962503

See Also

Bibliography

  • CREVECOEUR, Jonas, ROBBEN, Jens, et ANTONIO, Katrien. A hierarchical reserving model for reported non-life insurance claims. Insurance: Mathematics and Economics, 2022, vol. 104, p. 158-184. - https://doi.org/10.48550/arXiv.1910.12692



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