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A Knowledge Graph Based Approach for Mobile Application Recommendation

机译:基于知识图的移动应用推荐方法

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With the rapid prevalence of mobile devices and the dramatic proliferation of mobile applications (apps), app recommendation becomes an emergent task that would benefit both app users and stockholders. How to effectively organize and make full use of rich side information of users and apps is a key challenge to address the sparsity issue for traditional approaches. To meet this challenge, we proposed a novel end-to-end Knowledge Graph Convolutional Embedding Propagation Model (KGEP) for app recommendation. Specifically, we first designed a knowledge graph construction method to model the user and app side information, then adopted KG embedding techniques to capture the factual triplet-focused semantics of the side information related to the first-order structure of the KG, and finally proposed a relation-weighted convolutional embedding propagation model to capture the recommendation-focused semantics related to high-order structure of the KG. Extensive experiments conducted on a real-world dataset validate the effectiveness of the proposed approach compared to the state-of-the-art recommendation approaches.
机译:随着移动设备的迅速流行和移动应用程序的戏剧性增殖(应用程序),应用程序推荐成为一个突出的任务,可以使App用户和股东受益。如何有效地组织和充分利用丰富的用户和应用程序,是解决传统方法的稀疏问题的关键挑战。为满足这一挑战,我们提出了一种用于应用推荐的新型端到端知识图形卷积嵌入传播模型(KGEP)。具体而言,我们首先设计了一个知识图形施工方法来模拟用户和应用程序侧信息,然后采用kg嵌入技术来捕获与kg的一阶结构相关的侧面信息的事实三重态聚焦的语义,最后提出关系加权卷积嵌入传播模型,以捕获与kg的高阶结构相关的推荐的专注语义。与现实世界数据集进行的广泛实验验证了与最先进的推荐方法相比拟议方法的有效性。

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