Joint Topic-Semantic-aware Social Recommendation for Online Voting

Hongwei Wang, Jia Wang, Miao Zhao, Jiannong Cao, M. Guo
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引用次数: 28

Abstract

Online voting is an emerging feature in social networks, in which users can express their attitudes toward various issues and show their unique interest. Online voting imposes new challenges on recommendation, because the propagation of votings heavily depends on the structure of social networks as well as the content of votings. In this paper, we investigate how to utilize these two factors in a comprehensive manner when doing voting recommendation. First, due to the fact that existing text mining methods such as topic model and semantic model cannot well process the content of votings that is typically short and ambiguous, we propose a novel Topic-Enhanced Word Embedding (TEWE) method to learn word and document representation by jointly considering their topics and semantics. Then we propose our Joint Topic-Semantic-aware social Matrix Factorization (JTS-MF) model for voting recommendation. JTS-MF model calculates similarity among users and votings by combining their TEWE representation and structural information of social networks, and preserves this topic-semantic-social similarity during matrix factorization. To evaluate the performance of TEWE representation and JTS-MF model, we conduct extensive experiments on real online voting dataset. The results prove the efficacy of our approach against several state-of-the-art baselines.
面向在线投票的联合主题语义社会推荐
在线投票是社交网络的新兴功能,用户可以在其中表达对各种问题的态度,并显示自己独特的兴趣。在线投票给推荐带来了新的挑战,因为投票的传播严重依赖于社交网络的结构以及投票的内容。本文主要研究在进行投票推荐时,如何综合利用这两个因素。首先,由于现有的文本挖掘方法如主题模型和语义模型不能很好地处理典型的简短和模糊的投票内容,我们提出了一种新的主题增强词嵌入(topic - enhanced Word Embedding, TEWE)方法,通过联合考虑词和文档的主题和语义来学习词和文档的表示。然后,我们提出了联合主题语义感知社会矩阵分解(JTS-MF)投票推荐模型。JTS-MF模型通过结合用户和投票的TEWE表示和社会网络的结构信息来计算用户和投票之间的相似度,并在矩阵分解过程中保持这种主题-语义-社会相似度。为了评估TEWE表示和JTS-MF模型的性能,我们在真实的在线投票数据集上进行了大量的实验。结果证明了我们的方法对几种最先进的基线的有效性。
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