DiRec:无语义协同过滤的多样化建议

Rubi Boim, T. Milo, Slava Novgorodov
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引用次数: 11

摘要

在这个演示中,我们介绍了DiRec,这是一个插件,它允许协同过滤(CF)推荐系统向用户提供多样化的推荐。DiRec通过比较不同用户对物品的排名来估计物品的多样性,从而即使在没有关于物品的语义信息的常见场景中也能实现多样化。项目是基于一种新颖的优先级媒介概念进行聚类的,这在呈现高排名项目与高度多样化项目之间提供了一种自然的平衡。我们在电影推荐系统的背景下演示了DiRec的操作。我们展示了多样化推荐的优势及其在缺乏语义信息的情况下的可行性。
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DiRec: Diversified recommendations for semantic-less Collaborative Filtering
In this demo we present DiRec, a plug-in that allows Collaborative Filtering (CF) Recommender systems to diversify the recommendations that they present to users. DiRec estimates items diversity by comparing the rankings that different users gave to the items, thereby enabling diversification even in common scenarios where no semantic information on the items is available. Items are clustered based on a novel notion of priority-medoids that provides a natural balance between the need to present highly ranked items vs. highly diverse ones. We demonstrate the operation of DiRec in the context of a movie recommendation system. We show the advantage of recommendation diversification and its feasibility even in the absence of semantic information.
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