Estimating Risk Relativity of Driving Records using Generalized Additive Models: A Statistical Approach for Auto Insurance Rate Regulation

Shengkun Xie
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Abstract

Abstract Studying driving records (DR) and assessing their risk relativity is crucial for auto insurance rate regulation. Typically, the evaluation of DR involves estimating risk using empirical loss cost or modeling approaches such as Generalized Linear Models (GLM). This article presents a novel methodology employing Generalized Additive Models (GAM) to estimate the risk relativity of DR. By treating the integer level of DR as a continuous variable, the proposed method offers enhanced flexibility and practicality in evaluating the associated risk. Extending the linear model to GAM is a critical advancement that harnesses advanced statistical methods in actuarial practice, providing a more statistically robust application of the proposed approach. Moreover, the integration of functional patterns with Class or Territory enables the investigation of statistical evidence supporting the existence of associations between risk factors. This approach helps address the issue of potential double penalties in insurance pricing and calls for a statistical solution to overcome this challenge. Our study demonstrates that utilizing the GAM approach yields a more balanced estimation of DR relativity, thereby reducing discrimination among different DR levels. This finding highlights the potential of this statistical method to improve fairness and accuracy in auto insurance rate making and regulation.
使用广义加性模型估算驾驶记录的风险相对性:汽车保险费率监管的统计方法
摘要研究驾驶记录并评估其风险相关性是车险费率监管的关键。通常,灾害风险评估包括使用经验损失成本或广义线性模型(GLM)等建模方法来估计风险。本文提出了一种利用广义可加模型(GAM)来估计DR风险相关性的新方法,该方法将DR的整数水平作为一个连续变量,在评估相关风险时提供了更大的灵活性和实用性。将线性模型扩展到GAM是一个关键的进步,它利用了精算实践中先进的统计方法,为所提出的方法提供了更具统计稳健性的应用。此外,将功能模式与类别或领域结合起来,可以调查支持风险因素之间存在关联的统计证据。这种方法有助于解决保险定价中潜在的双重处罚问题,并呼吁采用统计解决方案来克服这一挑战。我们的研究表明,利用GAM方法可以更平衡地估计DR相关性,从而减少不同DR水平之间的歧视。这一发现突出了这种统计方法在提高汽车保险费率制定和监管的公平性和准确性方面的潜力。
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