学术报告:Analyzing User Behaviors Across Multiple Online Social Platforms.

发布人:张璐发布时间:2019-05-13动态浏览次数:324

报告人:新加坡管理大学Roy Ka-Wei Lee博士

时间:2019515日上午10:30(星期三)

地点:东南大学九龙湖校区计算机楼313会议室


报告摘要:Online social platforms (OSPs), such as Facebook, Twitter, and Instagram, have grown monumentally over recent years. It was reported that as of August 2017, Facebook has over 2 billion monthly active users, while Instagram and Twitter have over 700 million and 300 million monthly active user accounts respectively. The vast amount of user-generated content and social data gathered in these behemoth platforms have made them rich data sources for academic and industrial research. However many of the existing research work has focused on analyzing and modeling users behaviors in a single platform setting, neglecting the inter-dependencies of user behaviors across multiple OSPs. In this sharing, I will present our recent work on analyzing and modeling user behaviors in multiple OSPs. In particular, I will focus on (i) analyzing users' topical interests and platform preferences across multiple OSPs, and (ii) modeling influential users in multiple OSPs.

  

报告人简介:Roy Ka-Wei Lee is a Research Scientist at Living Analytics Research Centre (LARC). He obtained his Ph.D. Degree in Information Systems from the Singapore Management University in 2018 on a fully funded scholarship from the university. His research lies in the intersection of data mining, machine learning, and social computing. In particular, he is interested in studying user behaviors and information diffusion across multiple social networks. Roy will also begin his faculty journey as an Assistant Professor of Computer Science at the University of Saskatchewan from Aug 2019.