基于控制变量的区域化车险风险预测

IF 1.3 Q2 STATISTICS & PROBABILITY Statistics & Risk Modeling Pub Date : 2014-06-28 DOI:10.1515/strm-2013-1148
M. Christiansen, C. Hirsch, V. Schmidt
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引用次数: 0

摘要

我们展示了如何通过将解释模型与工业实践中的现象学模型相结合来改进更精细的子区域汽车保险风险的区域预测。在控制变量技术的激励下,我们提出了一个合适的组合预测器,当索赔数据可用于区域而非子区域时。我们提供了明确的条件,表明组合预测器的均方误差小于目前工业中使用的标准预测器的均方误差,也小于解释模型的预测器。我们还讨论了如何使用非参数随机森林方法来实际计算这些预测因子,并考虑将其应用于德国汽车保险数据。
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Prediction of regionalized car insurance risks based on control variates
Abstract We show how regional prediction of car insurance risks can be improved for finer subregions by combining explanatory modeling with phenomenological models from industrial practice. Motivated by the control-variates technique, we propose a suitable combined predictor when claims data are available for regions but not for subregions. We provide explicit conditions which imply that the mean squared error of the combined predictor is smaller than the mean squared error of the standard predictor currently used in industry and smaller than predictors from explanatory modeling. We also discuss how a non-parametric random forest approach may be used to practically compute such predictors and consider an application to German car insurance data.
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来源期刊
Statistics & Risk Modeling
Statistics & Risk Modeling STATISTICS & PROBABILITY-
CiteScore
1.80
自引率
6.70%
发文量
6
期刊介绍: Statistics & Risk Modeling (STRM) aims at covering modern methods of statistics and probabilistic modeling, and their applications to risk management in finance, insurance and related areas. The journal also welcomes articles related to nonparametric statistical methods and stochastic processes. Papers on innovative applications of statistical modeling and inference in risk management are also encouraged. Topics Statistical analysis for models in finance and insurance Credit-, market- and operational risk models Models for systemic risk Risk management Nonparametric statistical inference Statistical analysis of stochastic processes Stochastics in finance and insurance Decision making under uncertainty.
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