As climate change poses new and more unpredictable challenges to society, insurance is an essential avenue to protect against loss caused by extreme events. Traditional insurance risk models employ statistical analyses that are inaccurate and are becoming increasingly flawed as climate change renders weather more erratic and extreme. Data-driven parametric insurance could provide necessary protection to supplement traditional insurance. We use a technique referred to as the deep sigma point process, which is one of the Bayesian neural network approaches, for the data analysis portion of parametric insurance using residential internet connectivity dropout in US as a case study. We show that our model has significantly improved accuracy compared to traditional statistical models. We further demonstrate that each state in US has a unique weather factor that primarily influences dropout rates and that by combining multiple weather factors we can build highly accurate risk models for parametric insurance. We expect that our method can be applied to many types of risk to build parametric insurance options, particularly as climate change makes risk modeling more challenging.
翻译:由于气候变化给社会带来了新的和更难以预测的挑战,保险是防止极端事件造成的损失的重要途径。传统的保险风险模式采用不准确的统计分析,而且随着气候变化使天气更加不稳定和极端,这种分析越来越有缺陷。数据驱动的参数保险可以提供必要的保护来补充传统保险。我们使用一种称为深西格玛点过程的技术,这是巴伊西亚神经网络方法之一,用于美国使用住宅互联网连通性辍学进行模拟保险的数据分析部分。我们表明,与传统统计模式相比,我们的模型大大提高了准确性。我们进一步表明,美国各州都有一个独特的天气因素,主要影响辍学率,而通过结合多种天气因素,我们可以建立非常准确的参数保险风险模型。我们预计,我们的方法可以应用于许多类型的风险,以建立参数保险选项,特别是因为气候变化使得风险模型更具挑战性。