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Discovering Individual and Collaborative Problem-Solving Modes with Hidden Markov Models

机译:发现具有隐马尔可夫模型的个人和协作问题解决模式

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Supporting students during learning tasks is the main goal of intelligent tutoring systems, and the most effective systems can adapt to students based on a model of their current state of knowledge or their problem-solving actions. Most tutoring systems focus on individual students, but there is growing interest in supporting student pairs. However, modeling student pairs involves considerations that may differ from individual students. This paper reports on hidden Markov models (HMMs) of student interactions within a visual programming environment. We compare HMMs for individual students to those of student pairs and examine the different approaches the students take. The resulting models suggest that there are some important differences across both conditions. There is potential for using these models to predict problem-solving modes and support adaptive tutoring for collaboration in problem-solving domains.
机译:在学习任务期间支持学生是智能辅导系统的主要目标,最有效的系统可以根据其当前知识状态或其问题解决行动的模型适应学生。大多数辅导系统专注于个别学生,但对支持学生对的兴趣日益增长。但是,建模学生对涉及可能与个别学生不同的考虑因素。本文报告了在可视化编程环境中的学生交互的隐马尔可夫模型(HMMS)。我们将个别学生的HMMS与学生对的比较,并检查学生采取的不同方法。结果模型表明,这两个条件都存在一些重要的差异。有可能使用这些模型来预测问题解决模式,并支持解决问题域中的协作的自适应辅导。

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