Telematics combined actuarial neural networks for cross-sectional and longitudinal claim count data
Year of publication: |
2024
|
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Authors: | Duval, Francis ; Boucher, Jean-Philippe ; Pigeon, Mathieu |
Published in: |
ASTIN bulletin : the journal of the International Actuarial Association. - Cambridge : Cambridge Univ. Press, ISSN 1783-1350, ZDB-ID 2148228-7. - Vol. 54.2024, 2, p. 239-262
|
Subject: | Automobile insurance | claim count data | combined actuarial neural network | deep learning | multivariate negative binomial | Neuronale Netze | Neural networks | Kfz-Versicherung | Versicherungsmathematik | Actuarial mathematics | Generalisiertes lineares Modell | Generalized linear model |
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