User community detection via embedding of social network structure and temporal content

计算机科学 嵌入 用户生成的内容 社交网络(社会语言学) 相似性(几何) 社会化媒体 情报检索 特征(语言学) 社会网络分析 图形 万维网 机器学习 人工智能 理论计算机科学 图像(数学) 哲学 语言学
作者
Hossein Fani,Eric Jiang,Ebrahim Bagheri,Feras Al‐Obeidat,Weichang Du,Mehdi Kargar
出处
期刊:Information Processing and Management [Elsevier]
卷期号:57 (2): 102056-102056 被引量:41
标识
DOI:10.1016/j.ipm.2019.102056
摘要

Identifying and extracting user communities is an important step towards understanding social network dynamics from a macro perspective. For this reason, the work in this paper explores various aspects related to the identification of user communities. To date, user community detection methods employ either explicit links between users (link analysis), or users’ topics of interest in posted content (content analysis), or in tandem. Little work has considered temporal evolution when identifying user communities in a way to group together those users who share not only similar topical interests but also similar temporal behavior towards their topics of interest. In this paper, we identify user communities through multimodal feature learning (embeddings). Our core contributions can be enumerated as (a) we propose a new method for learning neural embeddings for users based on their temporal content similarity; (b) we learn user embeddings based on their social network connections (links) through neural graph embeddings; (c) we systematically interpolate temporal content-based embeddings and social link-based embeddings to capture both social network connections and temporal content evolution for representing users, and (d) we systematically evaluate the quality of each embedding type in isolation and also when interpolated together and demonstrate their performance on a Twitter dataset under two different application scenarios, namely news recommendation and user prediction. We find that (1) content-based methods produce higher quality communities compared to link-based methods; (2) methods that consider temporal evolution of content, our proposed method in particular, show better performance compared to their non-temporal counter-parts; (3) communities that are produced when time is explicitly incorporated in user vector representations have higher quality than the ones produced when time is incorporated into a generative process, and finally (4) while link-based methods are weaker than content-based methods, their interpolation with content-based methods leads to improved quality of the identified communities.
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