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A Case Study on Reducing Auto Insurance Attrition with Econometrics, Machine Learning, and A/B Testing

机译:通过计量经济学,机器学习和A / B测试减少汽车保险损耗的案例研究

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Acquiring a new customer costs insurance companies several times more than what it costs to retain current ones, which is why reducing attrition (also known as churn) is so important. To retain their customers, insurance companies need to do three things: a) understand why clients churn, b) predict which clients will churn, and c) try to retain potential churning clients through interventions or campaigns that address the reasons for potential churning. However, companies struggle to execute these three tasks in a data-driven and integrated way. Therefore, we propose a data science and advanced analytics framework that integrates these three tasks using econometrics, machine learning, and A/B testing (i.e. randomized control trials). We argue that to take full advantage of data science, companies need to integrate both prediction and causation efforts. We provide a case study where we show how econometrics and machine learning can help design experimental studies to uncover causal effects (prediction enabling causation), and how econometric techniques can help inform and improve machine learning's feature engineering and selection tasks (quasi-causation improving prediction). We demonstrate its use and effectiveness in one of Latin America's largest insurance companies. Our framework provided the evidence that a phone call reminding clients of the benefits of their policy could reduce auto insurance churn by 6 percentage points, which after a year will represent an additional US$750,000 in revenue.
机译:获得新客户的成本是保险公司维持现有客户的成本的几倍,这就是为什么减少人员流失(也称为流失率)如此重要的原因。为了留住客户,保险公司需要做三件事:a)了解客户流失的原因,b)预测哪些客户流失,以及c)尝试通过解决潜在搅动原因的干预或运动来留住潜在搅动客户。但是,公司很难以数据驱动和集成的方式执行这三个任务。因此,我们提出了一个数据科学和高级分析框架,该框架使用计量经济学,机器学习和A / B测试(即随机对照试验)整合了这三个任务。我们认为,要充分利用数据科学,公司需要整合预测和因果关系方面的努力。我们提供了一个案例研究,其中我们展示了计量经济学和机器学习如何帮助设计实验研究以发现因果效应(可预测因果关系),计量经济学技术如何可以帮助告知和改善机器学习的特征工程和选择任务(准因果关系改善预测)。我们在拉丁美洲最大的保险公司之一中证明了其用法和有效性。我们的框架提供的证据表明,通过电话提醒客户其政策的好处可以将汽车保险流失率降低6个百分点,一年后将再增加750,000美元的收入。

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