基于DBpedia的语义感知推荐嵌入知识图

C. Musto, Pierpaolo Basile, G. Semeraro
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引用次数: 7

摘要

在本文中,我们提出了一种语义感知的推荐策略,该策略使用图嵌入技术来学习要推荐的项目的向量空间表示。这种表示依赖于连接从DBpedia收集的用户、项目和实体的三方图,因此它既编码协作信息,也编码基于内容的信息。然后使用这些嵌入来提供积极和消极的例子(用户喜欢和不喜欢的项目)分类模型,最终利用该模型将新项目分类为目标用户感兴趣或不感兴趣。在实验评估中,我们评估了我们的方法在不同的图嵌入技术和图的几种拓扑上的有效性。结果表明,通过将协作数据点与从DBpedia收集的信息相结合来学习的嵌入产生了最好的结果,并且也击败了一些最先进的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Embedding Knowledge Graphs for Semantics-aware Recommendations based on DBpedia
In this paper we present a semantics-aware recommendation strategy that uses graph embedding techniques to learn a vector space reresentation of the items to be recommended. Such a representation relies on the tripartite graph which connects users, items and entities gathered from DBpedia, thus it encodes both collaborative and content-based information. These embeddings are then used to feed with positive and negative examples (the items the user liked and those she did not like) a classification model, which is finally exploited to classify new items as interesting or not interesting for the target user. In the experimental evaluation we evaluate the effectiveness of our method on varying of different graph embedding techniques and on several topologies of the graph. Results show that the embeddings learnt by combining collaborative data points with the information gathered from DBpedia led to the best results and also beat several state-of-the-art techniques.
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