An Interpretable Deep Learning Model for General Insurance Pricing
- URL: http://arxiv.org/abs/2509.08467v1
- Date: Wed, 10 Sep 2025 10:15:59 GMT
- Title: An Interpretable Deep Learning Model for General Insurance Pricing
- Authors: Patrick J. Laub, Tu Pho, Bernard Wong,
- Abstract summary: This paper introduces an inherently interpretable deep learning model for general insurance pricing.<n>It offers fully transparent and interpretable results while retaining the strong predictive power of neural networks.
- Score: 1.478364697333309
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper introduces the Actuarial Neural Additive Model, an inherently interpretable deep learning model for general insurance pricing that offers fully transparent and interpretable results while retaining the strong predictive power of neural networks. This model assigns a dedicated neural network (or subnetwork) to each individual covariate and pairwise interaction term to independently learn its impact on the modeled output while implementing various architectural constraints to allow for essential interpretability (e.g. sparsity) and practical requirements (e.g. smoothness, monotonicity) in insurance applications. The development of our model is grounded in a solid foundation, where we establish a concrete definition of interpretability within the insurance context, complemented by a rigorous mathematical framework. Comparisons in terms of prediction accuracy are made with traditional actuarial and state-of-the-art machine learning methods using both synthetic and real insurance datasets. The results show that the proposed model outperforms other methods in most cases while offering complete transparency in its internal logic, underscoring the strong interpretability and predictive capability.
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