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A new model of selecting most relevant ratings in recommender systems

机译:在推荐系统中选择最相关评分的新模型

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A major assumption of collaborative filtering is that similar users will always agree on a majority of items, regardless of their domain. This concept establishes strong connections among neighbors. However, it eliminates potentially good users on the premise that they are not similar enough. Furthermore, this assumption allows for the possibility of a neighbor to be chosen simply because he/she shares a lot of similar ratings in unrelated domains and offers little useful information in the active item domain. This effectively reduces the amount of useful information that is considered for each recommendation. We propose a new way to identify relevant ratings that relies on somewhat weaker, but more abundantly available neighbors.
机译:协作过滤的主要假设是,相似的用户将始终在大多数项目上达成一致,无论其域如何。这个概念在邻居之间建立了牢固的联系。但是,它消除了潜在的好用户,前提是他们之间的相似度不够。此外,该假设允许选择邻居的可能性仅是因为他/她在无关领域中共享许多相似的评分,并且在活动项目领域中提供的有用信息很少。这有效地减少了为每个建议考虑的有用信息的数量。我们提出了一种新的方法来识别相关等级,该等级依赖于较弱但可提供的资源更多的邻居。

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