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Bridging Semantic Gap Between App Names: Collective Matrix Factorization for Similar Mobile App Recommendation

机译:应用程序名称之间的语义差距:相似移动应用程序推荐的集体矩阵分解

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With the increase of mobile apps, i.e. applications, it is more and more difficult for users to discover their desired apps. Similar app recommendation, which plays a critical role in the app discovering process, is of our main concern in this paper. Intuitively, name is an important feature to distinguish apps. So app names are often used to learn the app similarity. However, existing studies do not perform well because names are usually very short. In this paper, we explore the phenomenon of the ill performance, and dive into the underlying reason, which motivates us to leverage additional corpus to bridge the gap between similar words. Specifically, we learn app representation from names and other related corpus, and formalize it as a collective matrix factorization problem. Moreover, we propose to utilize alternating direction method of multipliers to solve this collective matrix factorization problem. Experimental results on real-world data sets indicate that our proposed approach outperforms state-of-the-art methods on similar app recommendation.
机译:随着移动应用程序的增加,即应用程序,用户越来越困难地发现所需的应用程序。类似的应用程序推荐在应用程序发现过程中发挥着关键作用,这是我们本文主要关注的问题。直观地,名称是区分应用程序的重要功能。因此,应用程序名称通常用于了解应用程序的相似性。然而,现有的研究表现不佳,因为名称通常很短。在本文中,我们探讨了绩效的现象,并潜入了潜在的原因,激励我们利用额外的语料库来弥合类似词语之间的差距。具体来说,我们从名称和其他相关语料库中学习应用程序表示,并将其正式形式化为集体矩阵分解问题。此外,我们建议利用乘法器的交替方向方法来解决该集体矩阵分解问题。实验结果对现实世界数据集表明,我们提出的方法优于类似的应用推荐的最先进的方法。

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