In a dynamic landscape where portfolios and environments evolve, maintaining the accuracy of pricing models is critical. To the best of our knowledge, this is the first study to systematically examine concept drift in non-life insurance pricing. We (i) provide an overview of the relevant literature and commonly used methodologies, clarify the distinction between virtual drift and concept drift, and explain their implications for long-run model performance; (ii) review and formalize common performance measures, including the Gini index and deviance loss, and articulate their interpretation; (iii) derive the asymptotic distribution of the Gini index, enabling valid inference and hypothesis testing; and (iv) present a standardized monitoring procedure that indicates when refitting is warranted. We illustrate the framework using a modified real-world portfolio with induced concept drift and discuss practical considerations and pitfalls.
翻译:在投资组合与环境动态演变的背景下,维持定价模型的准确性至关重要。据我们所知,本研究首次系统性地探讨了非寿险定价中的概念漂移问题。我们(i)梳理了相关文献与常用方法,厘清了虚拟漂移与概念漂移的区别,并阐释二者对模型长期性能的影响;(ii)回顾并形式化了包括基尼系数与偏差损失在内的常用性能度量指标,阐明其统计含义;(iii)推导了基尼系数的渐近分布,从而支持有效的统计推断与假设检验;(iv)提出了一种标准化的监控流程,用于判断模型何时需要重新拟合。我们通过一个引入概念漂移的修正实际投资组合案例演示该框架,并讨论了实际应用中的注意事项与潜在缺陷。