神经网络增强的双过分散泊松索赔保留模型

Andrea Gabrielli
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引用次数: 10

摘要

我们提出了一个精算损失准备技术,考虑到索赔计数和索赔金额。索赔数和索赔金额的独立(过度分散)泊松模型通过联合嵌入到神经网络架构中进行组合。作为神经网络校准的起点,我们正好使用这两个独立的(过度分散的)泊松模型。这样的嵌套模型可以解释为一个提升机器。它允许我们在两个单独的(过度分散的)泊松模型之外对索赔计数和索赔金额进行联合建模和相互学习。此外,这种神经网络初始化的选择保证了稳定性并加速了表征学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Neural Network Boosted Double Over-Dispersed Poisson Claims Reserving Model
We present an actuarial loss reserving technique that takes into account both claim counts and claim amounts. Separate (over-dispersed) Poisson models for the claim counts and the claim amounts are combined by a joint embedding into a neural network architecture. As starting point of the neural network calibration we use exactly these two separate (over-dispersed) Poisson models. Such a nested model can be interpreted as a boosting machine. It allows us for joint modeling and mutual learning of claim counts and claim amounts beyond the two individual (over-dispersed) Poisson models. Moreover, this choice of neural network initialization guarantees stability and accelerates representation learning.
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