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SemStim: Exploiting Knowledge Graphs for Cross-Domain Recommendation

机译:SemStim:利用知识图进行跨域推荐

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In this paper we introduce SemStim, an unsupervised graph-based algorithm that addresses the cross-domain recommendation task. In this task, preferences from one conceptual domain (e.g. movies) are used to recommend items belonging to another domain (e.g. music). SemStim exploits the semantic links found in a knowledge graph (e.g. DBpedia), to connect domains and thus generate recommendations. As a key benefit, our algorithm does not require (1) ratings in the target domain, thus mitigating the cold-start problem and (2) overlap between users or items from the source and target domains. In contrast, current state-of-the-art personalisation approaches either have an inherent limitation to one domain or require rating data in the source and target domains. We evaluate SemStim by comparing its accuracy to state-of-the-art algorithms for the top-k recommendation task, for both single-domain and cross-domain recommendations. We show that SemStim enables cross-domain recommendation, and that in addition, it has a significantly better accuracy than the baseline algorithms.
机译:在本文中,我们介绍了SemStim,这是一种基于无监督图的算法,可解决跨域推荐任务。在此任务中,来自一个概念域(例如电影)的首选项用于推荐属于另一域(例如音乐)的项目。 SemStim利用知识图中(例如DBpedia)中的语义链接来连接域,从而生成建议。作为一个关键优势,我们的算法不需要(1)在目标域中进行评级,从而缓解了冷启动问题,并且(2)在源域和目标域中的用户或项之间存在重叠。相反,当前的最新个性化方法要么对一个域具有固有的局限性,要么需要源域和目标域中的评级数据。我们通过将SemStim的准确性与针对前域推荐任务(针对单域和跨域推荐)的最新算法的准确性进行比较,从而对其进行评估。我们证明了SemStim支持跨域推荐,并且与基线算法相比,它具有明显更好的准确性。

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