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An Efficient Association Rule Mining Method for Personalized Recommendation in Mobile E-commerce

机译:移动电子商务中个性化建议的高效关联规则挖掘方法

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The association rule mining (ARM) is an important method to solve personalized recommendation problem in e-commerce. However, when applied in personalized recommendation system in mobile ecommerce (MEC), traditional ARMs are with low mining efficiency and accuracy. To enhance the efficiency in obtaining frequent itemsets and the accuracy of rules mining, this paper proposes an algorithm based on matrix and interestingness, named MIbARM, which only scans the database once, can deletes infrequent items in the mining process to compressing searching space. Finally, experiments among Apriori, CBAR and BitTableFI with two synthetic datasets and 64 different parameter combinations were carried out to verify MIbARM. The results show that the MIbARM succeed to avoid redundant candidate itemsets and significantly reduce the number of redundant rules, and it is efficient and effective for personalized recommendation in MEC.
机译:关联规则挖掘(ARM)是解决电子商务中个性化推荐问题的重要方法。但是,当在移动电子商务(MEC)中的个性化推荐系统中应用时,传统手臂具有低采矿效率和准确性。为了提高获得频繁项目集的效率和规则挖掘的准确性,提出了一种基于矩阵和有趣的算法,名为Mibarm,该算法仅扫描数据库一次,可以删除挖掘过程中的不常见项目以压缩搜索空间。最后,执行了具有两个合成数据集和64种不同参数组合的APRiori,CBAR和BittableFI之间的实验,以验证MIBARM。结果表明,MIBARM成功避免了冗余候选项目,并显着减少了冗余规则的数量,并且在MEC中的个性化推荐是有效且有效的。

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