Statistical Foundations of Actuarial Learning and its Applications

Mario V. Wuthrich, M. Merz
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引用次数: 39

Abstract

The aim of this manuscript is to provide the mathematical and statistical foundations of actuarial learning. This is key to most actuarial tasks like insurance pricing, product development, claims reserving and risk management. The basic approach to these tasks is regression modeling. This manuscript describes the exponential dispersion family which is the most commonly used family of distributions in actuarial modeling. It discusses model fitting and parameter estimation using classical tools from mathematical statistics. It then introduces the crucial tools for prediction and forecast evaluation. Based on these statistical concepts various regression models are studied such as generalized linear models, mixture models and neural network regression models. We explore these modeling approaches from a theoretical and a practical viewpoint on publicly available data and we discuss their applications to insurance modeling. This involves model fitting using Fisher's scoring method, gradient descent algorithms or the expectation-maximization algorithm, model selection, parameter selection, regularization, etc.
精算学习的统计基础及其应用
这份手稿的目的是提供精算学习的数学和统计基础。这是大多数精算任务的关键,如保险定价、产品开发、索赔准备金和风险管理。完成这些任务的基本方法是回归建模。本文描述了指数离散族,这是最常用的家族分布在精算建模。讨论了用数理统计的经典工具进行模型拟合和参数估计。然后介绍了预测和预测评价的关键工具。在这些统计概念的基础上,研究了各种回归模型,如广义线性模型、混合模型和神经网络回归模型。我们从理论和实践的角度探讨了这些建模方法,并讨论了它们在保险建模中的应用。这包括使用Fisher评分法的模型拟合、梯度下降算法或期望最大化算法、模型选择、参数选择、正则化等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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