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Stochastic loss reserving with mixture density neural networks

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Academic paper
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Academic Paper attributes

arXiv ID
2108.079240
arXiv Classification
Statistics
Statistics
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Publication URL
arxiv.org/pdf/2108.079240
Publisher
ArXiv
ArXiv
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DOI
doi.org/10.48550/ar...08.079240
Paid/Free
Free0
Academic Discipline
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Quantitative finance
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Risk management
Risk management
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Statistics
Statistics
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Submission Date
August 18, 2021
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Author Names
Benjamin Avanzi0
Muhammed Taher Al-Mudafer0
Greg Taylor0
Bernard Wong0
Paper abstract

Neural networks offer a versatile, flexible and accurate approach to loss reserving. However, such applications have focused primarily on the (important) problem of fitting accurate central estimates of the outstanding claims. In practice, properties regarding the variability of outstanding claims are equally important (e.g., quantiles for regulatory purposes). In this paper we fill this gap by applying a Mixture Density Network (MDN) to loss reserving. The approach combines a neural network architecture with a mixture Gaussian distribution to achieve simultaneously an accurate central estimate along with flexible distributional choice. Model fitting is done using a rolling-origin approach. Our approach consistently outperforms the classical over-dispersed model both for central estimates and quantiles of interest, when applied to a wide range of simulated environments of various complexity and specifications. We further extend the MDN approach by proposing two extensions. Firstly, we present a hybrid GLM-MDN approach called ResMDN. This hybrid approach balances the tractability and ease of understanding of a traditional GLM model on one hand, with the additional accuracy and distributional flexibility provided by the MDN on the other. We show that it can successfully improve the errors of the baseline ccODP, although there is generally a loss of performance when compared to the MDN in the examples we considered. Secondly, we allow for explicit projection constraints, so that actuarial judgement can be directly incorporated in the modelling process. Throughout, we focus on aggregate loss triangles, and show that our methodologies are tractable, and that they out-perform traditional approaches even with relatively limited amounts of data. We use both simulated data -- to validate properties, and real data -- to illustrate and ascertain practicality of the approaches.

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