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SBTM: A joint sentiment and behaviour topic model for online course discussion forums

机译:SBTM:在线课程讨论论坛的联合情感和行为主题模型

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摘要

Large quantities of textual posts are increasingly generated in course discussion forums, and the accumulation of these data greatly increases the cognitive loads on online participants. It is imperative for them to automatically identify the potential semantic information derived from these textual discourse interactions. Moreover, existing topic models can discover the latent topics or sentimental polarities from textual data, but these models typically ignore the interactive ways of discussing topics, thus making it difficult to further construct topics' semantic space from the perspective of document generation. To solve this issue, we proposed a joint sentiment and behaviour topic model called SBTM, which was an unsupervised approach for automatic analysis of learners' discussed posts. The results demonstrated that SBTM was quantitatively effective on both model generalisation and topic exploration, and rich topic content was qualitatively characterised. Furthermore, the model can be potentially employed in some practical applications, such as information summarisation and behaviour-oriented personalised recommendation.
机译:在课程讨论论坛中越来越多地产生大量文本帖子,这些数据的积累大大增加了在线参与者上的认知负荷。它们必须自动识别从这些文本话语交互导出的潜在语义信息。此外,现有主题模型可以发现文本数据的潜在主题或感情极性,但这些模型通常忽略讨论主题的交互式方式,从而难以从文档生成的角度进一步构建主题的语义空间。为了解决这个问题,我们提出了一个名为SBTM的联合情感和行为主题模型,这是一种无监督的学习者自动分析帖子的方法。结果表明,SBTM对模型泛化和主题探索的定量有效,并且富有的主题内容具有定性特征。此外,该模型可以在一些实际应用中使用,例如信息汇总和面向行为的个性化推荐。

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