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Predicting Speech Acts in MOOC Forum Posts

机译:预测MooC论坛帖子中的言语行为

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Students in a Massive Open Online Course (MOOC) interact with each other and the course staff through online discussion forums. While discussion forums play a central role in MOOCs, they also pose a challenge for instructors. The large number of student posts makes it difficult for instructors to know where to intervene to answer questions, resolve issues, and provide feedback. In this work, we focus on automatically predicting speech acts in MOOC forum posts. Our speech act categories describe the purpose or function of the post in the ongoing discussion. Specifically, we address three main research questions. First, we investigate whether crowdsourced workers can reliably label MOOC forum posts using our speech act definitions. Second, we investigate whether our speech acts can help predict instructor interventions and assignment completion and performance. Finally, we investigate which types of features (derived from the post content, author, and surrounding context) are most effective for predicting our different speech act categories.
机译:在大规模开放的在线课程中的学生(MooC)通过在线讨论论坛互相互动和课程人员。虽然讨论论坛在Moocs中发挥着核心作用,但它们也对教师构成了挑战。大量学生帖子使教师难以知道在哪里进行干预以回答问题,解决问题并提供反馈。在这项工作中,我们专注于自动预测MooC论坛帖子中的言论。我们的言语法类别描述了在正在进行的讨论中帖子的目的或功能。具体来说,我们解决了三个主要的研究问题。首先,我们调查众群工人是否可以使用我们的言语法案定义可靠地标记MooC论坛职位。其次,我们调查我们的言论行为是否有助于预测教练干预和分配完成和履行。最后,我们调查哪些类型的功能(源自帖子内容,作者和周围上下文)最有效地预测我们的不同语音法案类别。

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