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Cross Domain Recommender Systems: A Systematic Literature Review

机译:跨域推荐系统:系统文献综述

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Cross domain recommender systems (CDRS) can assist recommendations in a target domain based on knowledge learned from a source domain. CDRS consists of three building blocks: domain, user-item overlap scenarios, and recommendation tasks. The objective of this research is to identify themost widely used CDRS building-block definitions, identify common features between them, classify current research in the frame of identified definitions, group together research with respect to algorithm types, present existing problems, and recommend future directions for CDRS research. To achieve this objective, we have conducted a systematic literature review of 94 shortlisted studies. We classified the selected studies using the tag-based approach and designed classification grids. Using classification grids, it was found that the category-domain contributed a maximum of 62%, whereas the time domain contributed at least 3%. User-item overlaps were found to have equal contribution. Single target domain recommendation task was found at a maximum of 78%, whereas cross-domain recommendation task had a minor influence at only 10%. MovieLens contributed the most at 22%, whereas Yahoo-music provided 1% between 29 datasets. Factorization-based algorithms contributed a total of 37%, whereas semantics-based algorithms contributed 6% among seven types of identified algorithm groups. Finally, future directions were grouped into five categories.
机译:跨域推荐器系统(CDRS)可以基于从源域中学习到的知识来协助目标域中的推荐。 CDRS包含三个构建块:域,用户项重叠方案和推荐任务。这项研究的目的是确定最广泛使用的CDRS构建基块定义,确定它们之间的共同特征,在确定的定义范围内对当前研究进行分类,对算法类型进行分组研究,提出存在的问题,并提出未来的方向用于CDRS研究。为了实现这一目标,我们对94项入围研究进行了系统的文献综述。我们使用基于标签的方法对选定的研究进行分类,并设计了分类网格。使用分类网格,发现类别域最多贡献了62%,而时域至少贡献了3%。发现用户项目重叠具有相同的贡献。发现单个目标域推荐任务的最大比例为78%,而跨域推荐任务的影响较小,仅为10%。 MovieLens贡献最大,为22%,而Yahoo-music在29个数据集中提供了1%。基于因子分解的算法总共贡献了37%,而基于语义的算法在7种已识别算法组中贡献了6%。最后,未来的方向分为五类。

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