Insurance industry is one of the most vulnerable sectors to climate change. Assessment of future number of claims and incurred losses is critical for disaster preparedness and risk management. In this project, we study the effect of precipitation on a joint dynamics of weather-induced home insurance claims and losses. We discuss utility and limitations of such machine learning procedures as Support Vector Machines and Artificial Neural Networks, in forecasting future claim dynamics and evaluating associated uncertainties. We illustrate our approach by application to attribution analysis and forecasting of weather-induced home insurance claims in a middle-sized city in the Canadian Prairies.
翻译:保险业是气候变化最脆弱的部门之一。评估未来索赔和遭受损失的数量对于备灾和风险管理至关重要。在这一项目中,我们研究了降水对天气引起的家庭保险索赔和损失联合动态的影响。我们讨论了支持病媒机和人工神经网络等机器学习程序在预测未来索赔动态和评估相关不确定性方面的效用和局限性。我们通过在加拿大普拉伊里斯的一个中等规模城市应用对天气引起的家庭保险索赔的归属分析和预测来说明我们的做法。