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Designing an e-commerce recommender system based on collaborative filtering using a data mining approach

机译:使用数据挖掘方法设计基于协作滤波的电子商务推荐系统

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E-commerce recommender systems have been converted to a very important decision-making helper for customers, and provide online personalised recommendations using information technology and customers' information. In the meantime, collaborative filtering (CF) recommender systems are one of the key components of successful e-commerce systems. Despite the popularity and successes of CF, these systems still face a series of serious limitations, including cold start, sparsity of user-item matrix, scalability and change of user interest during the time, that impede exact recommendations to customers. Although much research has been presented to overcome these limitations, no comprehensive model is yet offered to reduce them: 1) customer segmentation based on LRFM variables in the level of product category to evaluate the length of customer relationship with the company, recency, frequency, and monetary of purchasing product categories; 2) extracting association rules based on user-category matrixes in the level of each cluster; 3) customer segmentation according to demographic variables; 4) change of user-item matrix and reduction of its dimensions; 5) developing a new similarity function by weighted combination of results of segmentation methods and CF. According to the gained results, the proposed system of this research has resulted in the removal of traditional CF constraints and presents more accurate and appropriate recommendations for the preferences of customers.
机译:电子商务推荐系统已转换为客户的一个非常重要的决策助手,并使用信息技术和客户信息提供在线个性化建议。同时,协作滤波(CF)推荐系统是成功电子商务系统的关键组件之一。尽管有CF的受欢迎程度和成功,但这些系统仍然面临着一系列严重限制,包括冷启动,用户项矩阵的稀疏性,缩小性和用户兴趣的变化,这阻碍了客户的确切建议。虽然已经提出了很多研究来克服这些限制,但没有提供全面的模型来减少它们:1)基于LRFM变量的客户分割在产品类别水平中,评估客户关系的长度,频率,频率,和购买产品类别的货币; 2)基于每个群集中的用户类矩阵提取关联规则; 3)根据人口变量的客户分割; 4)更改用户项矩阵和减少其尺寸; 5)通过对分段方法和CF的结果的加权组合开发新的相似性功能。根据所获得的结果,该研究的拟议系统导致了传统的CF限制,并为客户的偏好提供更准确和适当的建议。

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