A Novel Intelligence Recommendation Model for Insurance Products with Consumer Segmentation

Wei Xu, Jiajia Wang, Ziqi Zhao, Caihong Sun, Jian Ma
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引用次数: 12

Abstract

Abstract As one of the financial industries, the insurance industry is now facing a vast market and significant growth opportunities. The insurance company will generate a lot transaction data each day, thus forming a huge database. Recommending insurance products for customers accurately and efficiently can help to improve the competitiveness of insurance company. Data mining technologies such as association rules have been applied to the recommendation of insurance products. However, large policyholders’ data will be calculated when it being processed with associate rule algorithm. It not only requires higher cost of time and space, but also can lead to the final rules lack of accuracy and differentiation. In this paper, a recommendation model for insurance products based on consumer segmentation is constructed, which first divides consumer group into different classes and then processed with associate rule algorithm. The empirical results show that our proposed method not only makes the consumption of association rules analysis reduced, it has also got more effective product recommendation results.
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基于消费者细分的保险产品智能推荐模型
保险业作为金融行业之一,目前面临着广阔的市场和重大的增长机遇。保险公司每天都会产生大量的交易数据,从而形成一个庞大的数据库。准确、高效地为客户推荐保险产品有助于提高保险公司的竞争力。关联规则等数据挖掘技术已应用于保险产品推荐。但是,在使用关联规则算法处理大型投保人数据时,需要对其进行计算。它不仅需要较高的时间和空间成本,而且还可能导致最终规则缺乏准确性和差异性。本文构建了一个基于消费者细分的保险产品推荐模型,该模型首先将消费者群体划分为不同的类别,然后用关联规则算法对其进行处理。实证结果表明,本文提出的方法不仅减少了关联规则分析的消耗,而且得到了更有效的产品推荐结果。
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