Web Mining Techniques - A Framework to Enhance Customer Retention

Shimaa Ouf, Y. Helmy, M. Ashraf
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Abstract

In e-commerce, retaining customers on the web is a difficult task that requires a good understanding of customers' behavior to be able to predict their needs and interests. Web usage mining (WUM), which is the application of data mining techniques to improve business, helps in understanding customers' behavior on the web. Therefore, this paper proposes and implements a framework to enhance the quality of customer recommendations. Providing customers with what they are looking for helps increase their satisfaction, which will lead to improved retention with the company. The proposed framework was tested and evaluated. The result of testing the proposed framework illustrates that the recommendations based on merged techniques (like clustering, classification, association, and sequential discovery) achieve strong accuracy with a precision value of 74%, coverage of 100%, and an average overall efficiency of F-measure of 86%. which means that the merged technique outperformed each technique and attained much higher overall coverage.
Web挖掘技术——一个提高客户保留率的框架
在电子商务中,在网络上留住客户是一项艰巨的任务,这需要对客户的行为有很好的理解,以便能够预测他们的需求和兴趣。Web使用挖掘(WUM)是数据挖掘技术在商业中的应用,它有助于了解客户在Web上的行为。因此,本文提出并实施了一个提升客户推荐质量的框架。为客户提供他们想要的东西有助于提高他们的满意度,从而提高公司的保留率。对提出的框架进行了测试和评估。测试所提出的框架的结果表明,基于合并技术(如聚类、分类、关联和顺序发现)的推荐具有很强的准确性,精度值为74%,覆盖率为100%,F-measure的平均总体效率为86%。这意味着合并后的技术优于其他技术,并且获得了更高的总体覆盖率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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