LocalGLMnet:精算师的深度学习架构

Jürg Schelldorfer, Mario V. Wuthrich
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引用次数: 0

摘要

本教程的目的是讨论针对精算师需求量身定制的LocalGLMnet体系结构。LocalGLMnet是用于表格数据的灵活网络架构,它允许变量选择、交互研究、给出很好的解释并允许对变量重要性进行排序。我们探索了一个关于意外保险索赔数据的LocalGLMnet,我们也有简短的索赔描述。在第二步中,我们试图通过添加递归神经网络层将索赔文本处理成表格数据来理解这些索赔描述的预测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LocalGLMnet: A Deep Learning Architecture for Actuaries
The purpose of this tutorial is to discuss the LocalGLMnet architecture which is tailored to the needs of actuaries. The LocalGLMnet is a flexible network architecture for tabular data that allows for variable selection, the study of interactions, gives nice interpretations and allows to rank variable importance. We explore a LocalGLMnet on accident insurance claims data for which we also have short claim descriptions. In a second step we try to understand the predictive power of these claim descriptions by adding a recurrent neural network layer to process the claim texts into tabular data.
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