Research on Multifeature-Based Superposter Identification in Online Learning Forums

With the development of online learning and distance education, online learners’ discussions in forums become increasingly effective to facilitate learning. Superposters, who play a more and more important role in forums, have attracted researchers’ close attention. The key to the research is how to...

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Main Authors: Changri Luo, Xinhua Zhang, Tingting He, Yong Zhang, Neal Xiong, Zizhou Lu
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Journal of Advanced Transportation
Online Access:http://dx.doi.org/10.1155/2021/1496321
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spelling doaj-12c503b1069a478b8528334f925d395c2021-04-26T00:04:49ZengHindawi-WileyJournal of Advanced Transportation2042-31952021-01-01202110.1155/2021/1496321Research on Multifeature-Based Superposter Identification in Online Learning ForumsChangri Luo0Xinhua Zhang1Tingting He2Yong Zhang3Neal Xiong4Zizhou Lu5School of Vocational and Continuing EducationSchool of Computer Science Wuhan Vocational College of Software and EngineeringAcademy of Computer ScienceAcademy of Computer ScienceNortheastern State UniversitySchool of Vocational and Continuing EducationWith the development of online learning and distance education, online learners’ discussions in forums become increasingly effective to facilitate learning. Superposters, who play a more and more important role in forums, have attracted researchers’ close attention. The key to the research is how to identify superposters among a large number of participants. Some studies focus on the network interaction of superposters and some content-related features but neglect the basic quality like language expression that a superposter should possess and the learning-related features like learning collaboration. Based on the analysis of online learning corpus, through network interaction and combination of the different features of N-gram, the paper proposed the superposter identification method based on the three primary features including language expression (L), content quality (C), and social network interaction (S) and the eight secondary features including learning collaboration. The paper applied the method in the real online learning forum corpus for identifying 28 preset superposters, achieving the results of P@15=1.0, Avg.P@15=1.0, P@28=0.86, and Avg.P@28=0.95. Experiments showed that this was an effective superposter identification method in online learning forums.http://dx.doi.org/10.1155/2021/1496321
collection DOAJ
language English
format Article
sources DOAJ
author Changri Luo
Xinhua Zhang
Tingting He
Yong Zhang
Neal Xiong
Zizhou Lu
spellingShingle Changri Luo
Xinhua Zhang
Tingting He
Yong Zhang
Neal Xiong
Zizhou Lu
Research on Multifeature-Based Superposter Identification in Online Learning Forums
Journal of Advanced Transportation
author_facet Changri Luo
Xinhua Zhang
Tingting He
Yong Zhang
Neal Xiong
Zizhou Lu
author_sort Changri Luo
title Research on Multifeature-Based Superposter Identification in Online Learning Forums
title_short Research on Multifeature-Based Superposter Identification in Online Learning Forums
title_full Research on Multifeature-Based Superposter Identification in Online Learning Forums
title_fullStr Research on Multifeature-Based Superposter Identification in Online Learning Forums
title_full_unstemmed Research on Multifeature-Based Superposter Identification in Online Learning Forums
title_sort research on multifeature-based superposter identification in online learning forums
publisher Hindawi-Wiley
series Journal of Advanced Transportation
issn 2042-3195
publishDate 2021-01-01
description With the development of online learning and distance education, online learners’ discussions in forums become increasingly effective to facilitate learning. Superposters, who play a more and more important role in forums, have attracted researchers’ close attention. The key to the research is how to identify superposters among a large number of participants. Some studies focus on the network interaction of superposters and some content-related features but neglect the basic quality like language expression that a superposter should possess and the learning-related features like learning collaboration. Based on the analysis of online learning corpus, through network interaction and combination of the different features of N-gram, the paper proposed the superposter identification method based on the three primary features including language expression (L), content quality (C), and social network interaction (S) and the eight secondary features including learning collaboration. The paper applied the method in the real online learning forum corpus for identifying 28 preset superposters, achieving the results of P@15=1.0, Avg.P@15=1.0, P@28=0.86, and Avg.P@28=0.95. Experiments showed that this was an effective superposter identification method in online learning forums.
url http://dx.doi.org/10.1155/2021/1496321
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