Towards automatic content analysis of social presence in transcripts of online discussions

Maverick Andre Dionisio Ferreira, V. Rolim, R. F. Mello, R. Lins, Guanliang Chen, D. Gašević
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引用次数: 25

Abstract

This paper presents an approach to automatic labeling of the content of messages in online discussion according to the categories of social presence. To achieve this goal, the proposed approach is based on a combination of traditional text mining features and word counts extracted with the use of established linguistic frameworks (i.e., LIWC and Coh-metrix). The best performing classifier obtained 0.95 and 0.88 for accuracy and Cohen's kappa, respectively. This paper also provides some theoretical insights into the nature of social presence by looking at the classification features that were most relevant for distinguishing between the different categories. Finally, this study adopted epistemic network analysis to investigate the structural construct validity of the automatic classification approach. Namely, the analysis showed that the epistemic networks produced based on messages manually and automatically coded produced nearly identical results. This finding thus produced evidence of the structural validity of the automatic approach.
面向在线讨论文本中社会存在的自动内容分析
本文提出了一种根据社会存在类别对在线讨论信息内容进行自动标注的方法。为了实现这一目标,所提出的方法是基于传统的文本挖掘特征和使用已建立的语言框架(即LIWC和Coh-metrix)提取的单词计数的组合。表现最好的分类器的准确率和科恩kappa分别为0.95和0.88。本文还通过观察与区分不同类别最相关的分类特征,为社会存在的本质提供了一些理论见解。最后,本研究采用认知网络分析来考察自动分类方法的结构结构效度。也就是说,分析表明,基于手动和自动编码的信息产生的认知网络产生的结果几乎相同。这一发现为自动方法的结构有效性提供了证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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