Improving e-commerce product recommendation using semantic context and sequential historical purchases

被引:0
|
作者
Mahreen Nasir
C. I. Ezeife
Abdulrauf Gidado
机构
[1] University of Windsor,School of Computer Science
来源
Social Network Analysis and Mining | 2021年 / 11卷
关键词
Recommendation systems; Sequential pattern mining; Semantics; Sequential model; Clickstream data; Historical purchases; Collaborative filtering; TF-IDF; Vector space model; Cold start; Sparsity; E-commerce;
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摘要
Collaborative Filtering (CF)-based recommendation methods suffer from (i) sparsity (have low user–item interactions) and (ii) cold start (an item cannot be recommended if no ratings exist). Systems using clustering and pattern mining (frequent and sequential) with similarity measures between clicks and purchases for next-item recommendation cannot perform well when the matrix is sparse, due to rapid increase in number of items. Additionally, they suffer from: (i) lack of personalization: patterns are not targeted for a specific customer and (ii) lack of semantics among recommended items: they can only recommend items that exist as a result of a matching rule generated from frequent sequential purchase pattern(s).
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