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Joint Topic-Semantic-aware Social Matrix Factorization for online voting recommendation

机译:联合主题 - 语义意识到在线投票推荐的社会矩阵分解

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摘要

Social voting is an emerging new feature in online social platforms, through which users can express their attitudes and opinions towards various interested subjects. Since both social relations and textual content decide the votes propagation, the diverse sources present opportunities and challenges for recommender systems. In this paper, we jointly consider these two factors for the online voting recommendation. First, we conduct feature learning on the vote content. Note that the vote questions are usually short and contain informal expressions, existing text mining methods cannot handle it well. We propose a novel topic-enhanced word embedding (TEWE) method, which learns the word vectors by considering both token-level semantics and document-level mixture topics. Second, we propose two Joint Topic-Semantic-aware Social Matrix Factorization (JTS-MF) models, which fuse social relations and textual content for the vote recommendation. Specifically, JTS-MF1 directly identifies the interaction strength to calculate the similarity among users and votes, while JTS-MF2 aims to preserve inter-user and inter-vote similarities during matrix factorization. Extensive experimental results on real online voting dataset show the effectiveness of our approaches against several state-of-the-art baselines. JTS-MF1 and JTS-MF2 models surpass the matrix factorization based method, with 25.4% and 57.1% improvements in the top-1 recall, and 59.12% and 25.1% improvements in the top-10 recall. (C) 2020 Elsevier B.V. All rights reserved.
机译:社会投票是在线社交平台中的新功能,通过该特色,用户可以向各种感兴趣的科目表达他们的态度和意见。由于社会关系和文本内容都决定了投票传播,因此各种来源目前为推荐制度提供了机会和挑战。在本文中,我们共同考虑了这两个因素在线投票推荐。首先,我们对投票内容进行特色学习。请注意,投票问题通常很短,包含非正式表达式,现有的文本挖掘方法无法处理。我们提出了一种新颖的主题增强词嵌入(TEWE)方法,它通过考虑令牌级语义和文档级混合主题来学习单词向量。其次,我们提出了两个联合主题 - 语义感知的社会矩阵分解(JTS-MF)模型,融合了投票推荐的社会关系和文本内容。具体地,JTS-MF1直接识别交互强度以计算用户和投票之间的相似性,而JTS-MF2则旨在在矩阵分组期间保留用户间和投票间相似性。真正的在线投票数据集的广泛实验结果显示了我们对几个最先进的基线的方法的有效性。 JTS-MF1和JTS-MF2型号超越基于基于矩阵分解的方法,最高1次召回的25.4%和57.1%的改进,59.12%和25.1%的召回。 (c)2020 Elsevier B.v.保留所有权利。

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