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On Exploiting Classification Taxonomies In Recommender Systems

机译:推荐系统中分类分类法的开发

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Massive taxonomies for product classification are currently gaining popularity among e-commerce systems for diverse domains. For instance, Amazon.com maintains an entire plethora of hand-crafted taxonomies classifying books, movies, apparel and various other types of consumer goods. We use such taxonomic background knowledge for the computation of personalized recommendations, exploiting relationships between super-concepts and sub-concepts during profile generation. Empirical analysis, both offline and online, demonstrates our proposal's superiority over existing approaches when user information is sparse and implicit ratings prevail. Besides addressing the sparsity issue, we use parts of our taxonomy-based recommender framework for balancing and diversifying personalized recommendation lists in order to reflect the user's complete spectrum of interests. Though being detrimental to average accuracy, we show that our method improves user satisfaction with recommendation lists, in particular for lists generated using the common item-based collaborative filtering algorithm. We evaluate our method using book recommendation data, including offline analysis on 361,349 ratings and an online study involving more than 2,100 subjects.
机译:当前,用于产品分类的大规模分类法在各种领域的电子商务系统中越来越流行。例如,Amazon.com维护了整个手工分类法,将书籍,电影,服装和各种其他类型的消费品分类。我们使用这种分类学背景知识来计算个性化推荐,并在配置文件生成过程中利用超级概念和子概念之间的关系。离线和在线的经验分析表明,当用户信息稀少且隐含评分占优势时,我们的建议优于现有方法。除了解决稀疏性问题之外,我们还使用基于分类法的推荐程序框架的某些部分来平衡和多样化个性化推荐列表,以反映用户的全部兴趣范围。尽管不利于平均准确性,但我们证明了我们的方法提高了用户对推荐列表的满意度,尤其是对于使用基于常规项目的协作过滤算法生成的列表而言。我们使用书本推荐数据评估我们的方法,包括对361,349个评分的离线分析以及涉及2,100多个主题的在线研究。

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