VisForum

Author:

Fu Siwei1,Wang Yong1,Yang Yi1,Bi Qingqing2,Guo Fangzhou3,Qu Huamin1

Affiliation:

1. Hong Kong University of Science and Technology, Hong Kong

2. Nanyang Technological University, Nanyang Ave, Singapore

3. Zhijiang University, Hang Zhou, China

Abstract

User grouping in asynchronous online forums is a common phenomenon nowadays. People with similar backgrounds or shared interests like to get together in group discussions. As tens of thousands of archived conversational posts accumulate, challenges emerge for forum administrators and analysts to effectively explore user groups in large-volume threads and gain meaningful insights into the hierarchical discussions. Identifying and comparing groups in discussion threads are nontrivial, since the number of users and posts increases with time and noises may hamper the detection of user groups. Researchers in data mining fields have proposed a large body of algorithms to explore user grouping. However, the mining result is not intuitive to understand and difficult for users to explore the details. To address these issues, we present VisForum, a visual analytic system allowing people to interactively explore user groups in a forum. We work closely with two educators who have released courses in Massive Open Online Courses (MOOC) platforms to compile a list of design goals to guide our design. Then, we design and implement a multi-coordinated interface as well as several novel glyphs, i.e., group glyph, user glyph, and set glyph, with different granularities. Accordingly, we propose the group Detecting 8 Sorting Algorithm to reduce noises in a collection of posts, and employ the concept of “forum-index” for users to identify high-impact forum members. Two case studies using real-world datasets demonstrate the usefulness of the system and the effectiveness of novel glyph designs. Furthermore, we conduct an in-lab user study to present the usability of VisForum.

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Human-Computer Interaction

Reference49 articles.

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4. Rita Borgo Johannes Kehrer David H. Chung Eamonn Maguire Robert S. Laramee Helwig Hauser Matthew Ward and Min Chen. 2013. Glyph-based visualization: Foundations design guidelines techniques and applications. Eurographics State of the Art Reports (2013) 39--63. Rita Borgo Johannes Kehrer David H. Chung Eamonn Maguire Robert S. Laramee Helwig Hauser Matthew Ward and Min Chen. 2013. Glyph-based visualization: Foundations design guidelines techniques and applications. Eurographics State of the Art Reports (2013) 39--63.

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