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Mining Sequential Patterns of Historical Purchases for E-commerce Recommendation

机译:电子商务推荐的历史采购汇集模式

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In E-commerce Recommendation system, accuracy will be improved if more complex sequential patterns of user purchase behavior are learned and included in its user-item matrix input, to make it more informative before collaborative filtering. Existing recommendation systems that attempt to use mining and some sequences are those referred to as LiuRec09, ChoiRec12, SuChenRec15, and HPCRec18. These systems use mining based techniques of clustering, frequent pattern mining with similarity measures of purchases and clicks to predict the probability of purchases by users as their ratings before running collaborative filtering algorithm. HPCRec18 improved on the user-item matrix both quantitatively (finding values where there were 0 ratings) and qualitatively (finding specific interest values where there were 1 ratings). None of these algorithms explored enriching the user-item matrix with sequential pattern of customer clicks and purchases to capture better customer behavior. This paper proposes an algorithm called BSPRec (Historical Sequential Pattern Recommendation System), which mines frequent sequential click and purchase patterns for enriching the (i) user-item matrix quantitatively, and (ii) qualitatively. Then, finally, the improved matrix is used for collaborative filtering for better recommendations. Experimental results with mean absolute error, precision and recall show that the proposed sequential pattern mining based recommendation system, HSPRec provides more accurate recommendations than the tested existing systems.
机译:在电子商务推荐系统中,如果学习更复杂的用户购买行为的顺序模式并包含在其用户项矩阵输入中,将提高准确度,以使其在协同过滤之前更具信息。尝试使用挖掘和一些序列的现有推荐系统是那些被称为LiuRec09,Choirec12,SubseRec15和HPCrec18的推荐系统。这些系统使用基于挖掘的聚类技术,频繁的模式挖掘与购买的相似度测量,点击以预测用户在运行协同过滤算法之前作为其额定值的购买概率。 HPCrec18在用户项矩阵上改进(定量)(查找有0个额定值的值)和定性(在有1个评分中找到特定的兴趣值)。这些算法都没有探索丰富用户项矩阵,并使用顺序模式的客户点击和购买以捕获更好的客户行为。本文提出了一种名为BSPREC(历史顺序模式推荐系统)的算法,该算法频繁顺序点击和购买模式定量地,并定性地,(ii)。然后,最后,改进的矩阵用于协作滤波以获得更好的建议。具有平均绝对误差,精度和召回的实验结果表明,所提出的顺序模式基于挖掘的推荐系统,HSPREC提供比测试的现有系统更准确的建议。

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