面向情感链接预测的签名异构信息网络嵌入

Hongwei Wang, Fuzheng Zhang, Min Hou, Xing Xie, M. Guo, Qi Liu
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引用次数: 279

摘要

在网络社交网络中,人们经常表达对他人的态度,这在用户之间形成了大量的情感链接。预测情感链接的迹象是许多领域的基本任务,如个人广告和民意分析。以往的工作主要集中在文本情感分类上,而文本信息只能揭示用户真实意见的“冰山一角”,其中大部分是未被观察到的,而是被社会关系、用户简介等其他信息源所暗示。为了解决这个问题,在本文中,我们研究了如何在存在异构信息的情况下预测可能存在的情感链接。首先,针对主流社交网络缺乏明确的情感链接的问题,采用实体级情感提取方法,建立了由用户情感关系、社会关系和个人资料知识组成的标记异构情感数据集;然后,我们提出了一种新颖灵活的端到端签名异构信息网络嵌入(SHINE)框架,从异构网络中提取用户的潜在表示,并预测未观察到的情感链接的符号。SHINE利用多个深度自编码器将每个用户映射到低维特征空间中,同时保留网络结构。在两个真实数据集中,我们证明了SHINE在链路预测和节点推荐方面优于最先进的基线。实验结果也证明了SHINE在冷启动场景下的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SHINE: Signed Heterogeneous Information Network Embedding for Sentiment Link Prediction
In online social networks people often express attitudes towards others, which forms massive sentiment links among users. Predicting the sign of sentiment links is a fundamental task in many areas such as personal advertising and public opinion analysis. Previous works mainly focus on textual sentiment classification, however, text information can only disclose the "tip of the iceberg»» about users» true opinions, of which the most are unobserved but implied by other sources of information such as social relation and users» profile. To address this problem, in this paper we investigate how to predict possibly existing sentiment links in the presence of heterogeneous information. First, due to the lack of explicit sentiment links in mainstream social networks, we establish a labeled heterogeneous sentiment dataset which consists of users» sentiment relation, social relation and profile knowledge by entity-level sentiment extraction method. Then we propose a novel and flexible end-to-end Signed Heterogeneous Information Network Embedding (SHINE) framework to extract users» latent representations from heterogeneous networks and predict the sign of unobserved sentiment links. SHINE utilizes multiple deep autoencoders to map each user into a low-dimension feature space while preserving the network structure. We demonstrate the superiority of SHINE over state-of-the-art baselines on link prediction and node recommendation in two real-world datasets. The experimental results also prove the efficacy of SHINE in cold start scenario.
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