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User community detection via embedding of social network structure and temporal content
Institution:1. University of New Brunswick, Fredericton, NB, Canada;2. Ryerson University, Toronto, ON, Canada;3. Zayed University, United Arab Emirates;1. School of Mathematical Sciences, University of Adelaide, SA 5005, Australia;2. ARC Centre of Excellence for Mathematical and Statistical Frontiers (ACEMS), Australia;3. Data to Decisions Cooperative Research Centre (D2D CRC), Kent Town, SA 5067, Australia;4. D2D CRC stream lead, Australia;1. School of Information, Central University of Finance and Economics, Beijing, China;2. Department of Sociology, Tsinghua University, Beijing, China;3. School of Systems Science, Beijing Normal University, Beijing, China;4. National School of Development, Peking University, Beijing, China;1. Software and Information Systems Engineering Department, Ben-Gurion University, Beer-Sheva, Israel;2. Paul G. Allen School of Computer Science & Engineering, University of Washington, Seattle, WA, Israel;1. College of Computer Science and Software Engineering, Shenzhen University, Shenzhen 518060, China;2. School of Computer Science, Hangzhou Electronic Science and Technology University, Hangzhou 310018,China;3. School of Electronic Engineering, the Key Laboratory of Intelligent Perception and Image Understanding of Ministry of Education, Xidian University, No. 2 South TaiBai Road, Xi’an 710071, China;1. School of Computer Science and Engineering, Key Laboratory of Computer Network and Information Integration, Ministry of Education, Southeast University, China;2. Department of Computer Science, University of Warwick, UK
Abstract: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.
Keywords:
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