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Identifying learning-inductive content in programming discussion forums

机译:在编程讨论论坛中识别学习归纳的内容

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Online programming discussion forums are popular trouble-shooting and problem-solving sites for programmers and learners to reach out for help. The massive volumes of forum threads harbor tremendous amounts of information, but at the same time increase the complexity of search and navigation. In this work, we make use of programming discussions' syntactic, semantic and social features to model content associated with learning activities based on the ICAP learning framework. Our main goal is to detect useful content for learning programming in a large scale of questions and answers, while at the same time experiment with an artificial intelligence approach to detect learning-inductive content. We build regression models based on the defined constructive learning activities. Results reveal a passive-proactive learning behavior in an online programming discussion forum. The findings also reconfirm the value of programming discussion content, disregarding the crowds' approval. The automatic detection of constructive learning activities from programming discussions can be a helpful classifier in identifying relevant educational resources. Overall, this project contributes to our understanding on analyzing and utilizing mass programming discussion content for online programming language learning.
机译:在线编程讨论论坛是程序员和学习者可以寻求帮助的流行的故障排除和问题解决站点。大量的论坛线程包含大量信息,但同时又增加了搜索和导航的复杂性。在这项工作中,我们利用编程讨论的句法,语义和社交功能,基于ICAP学习框架对与学习活动相关的内容进行建模。我们的主要目标是检测大量问题和答案中对学习编程有用的内容,同时尝试使用人工智能方法检测学习归纳性内容。我们基于定义的建设性学习活动建立回归模型。结果显示了在线编程讨论论坛上的被动主动学习行为。调查结果也再次确认了节目讨论内容的价值,而无视人群的认可。从编程讨论中自动检测出建设性学习活动可能是有助于识别相关教育资源的有用分类器。总体而言,该项目有助于我们了解如何分析和利用大量编程讨论内容进行在线编程语言学习。

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