Enhancing claim classification with feature extraction from anomaly-detection-derived routine and peculiarity profiles
Year of publication: |
2023
|
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Authors: | Duval, Francis ; Boucher, Jean-Philippe ; Pigeon, Mathieu |
Published in: |
The journal of risk & insurance. - Malvern, Pa. : American Risk and Insurance Ass., ISSN 1539-6975, ZDB-ID 2066637-8. - Vol. 90.2023, 2, p. 421-458
|
Subject: | automobile insurance | claim classification | driving habits | feature extraction | supervised learning | telematics car driving data | unsupervised anomaly detection | Kfz-Versicherung | Automobile insurance | Klassifikation | Classification | Kraftfahrzeug | Motor vehicle | Data Mining | Data mining |
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