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A Data Mining Model for Risk Assessment and Customer Segmentation in the Insurance Industry

机译:保险业风险评估和客户细分的数据挖掘模型

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Customer segmentation on the basis of predictable risks can help insurance firms maximize their earnings and minimize their losses. Car insurance is one of the most lucrative and profitable branches in the insurance industry. Utilizing the concept of self-organizing map, the authors propose a two-phase model called 'Auto Insurance Customers Segmentation Intelligent Tool 'to segment customers in insurance companies on basis of risk. In the first phase, the authors extract 18 risk factors in four categories consisting of demographic specifications, auto specifications, policy specifications, and the driver s record extracted from the literature review. In the second phase, they finalize the selection process by drawing on expert opinion polls. The authors utilize self-organizing maps since they are able to display the output in the form of illustrative and comprehensible graphical maps capable of representing linear and non-linear relationships among variables, insensitive to the learning input, and slightly sensitive to the noise in the learning input. Finally, K-means are employed to compare the results with those obtained through self-organizing maps.
机译:根据可预测的风险对客户进行细分可以帮助保险公司最大限度地提高其收益并减少其损失。汽车保险是保险业中最赚钱和最赚钱的分支之一。利用自组织图的概念,作者提出了一个称为“汽车保险客户细分智能工具”的两阶段模型,用于基于风险对保险公司中的客户进行细分。在第一阶段,作者从四个类别中提取了18种风险因素,包括人口统计规格,汽车规格,政策规格以及从文献综述中提取的驾驶员记录。在第二阶段,他们通过专家意见调查最终确定选拔过程。作者利用自组织图,因为他们能够以说明性和可理解的图形图的形式显示输出,这些图能够表示变量之间的线性和非线性关系,对学习输入不敏感,对噪声不敏感。学习投入。最后,使用K均值将结果与通过自组织图获得的结果进行比较。

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