个性化行为推荐:edX 13门课程适用性案例研究

Steven Tang, Z. Pardos
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引用次数: 10

摘要

个性化和个性化学习在数字化学习环境中呈现出不同的形式。在智能辅导系统中,个性化侧重于评估学生的认知掌握程度,学生通过材料的进步速度取决于她的个人掌握程度。在前人的研究中,提出并发展了一种基于学习者行为而非学习者认知能力的推荐框架。这个框架根据数百万以前的学生行为训练了一个行为模型,以估计未来的学习者可能会如何行为。这个行为模型可以包含在每个课程页面上花费的时间,这样模型就可以考虑学习者以前的行为,并提供一个特定的课程页面建议,告诉学习者下一步可能想去哪里,他们可以在哪里花费大量的时间。我们认为,这种方法涉及到与个性化更一致的因素,因为对行为的预测是学生认知能力、情感状态和偏好的集合。该模型应用于精心挑选的一对MOOC课程,模型结果预计是有利的。在本文中,我们通过将这种行为预测方法应用于在edX平台上运行的13门加州大学伯克利分校mooc的扩展集来研究这种方法的适用性。提出了基于时间增强递归神经网络(RNN)的行为模型方法的初步结果,并与基线模型进行了比较。这些发现有助于讨论这种基于协作的个性化推荐形式何时以及在何种背景下适用于mooc。
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Personalized Behavior Recommendation: A Case Study of Applicability to 13 Courses on edX
Individualized and personalized learning has taken on different forms in the context of digital learning environments. In intelligent tutoring systems, individualization is focused on estimation of the cognitive mastery of the student and the speed at which the student progresses through the material is conditioned on her individual rate of mastery. In prior work, a recommendation framework based on learner behaviors, rather than learner's cognitive abilities, was proposed and developed. This framework trained a behavior model on millions of previous student actions in order to estimate how a future learner might behave. This behavior model can incorporate the amount of time spent on each course page, such that the model can take into account a learner's previous behaviors and provide a specific course page recommendation to where the learner may want to go next where they can be expected to spend a significant amount of time on. We stipulate that this approach touches on factors more aligned with personalization, since the prediction of behavior is an aggregation of the student's cognitive abilities, affective state, and preferences. This model was applied to a hand-picked pair of MOOC offerings where model results were expected to be favorable. In this paper, we investigate the suitability of this behavioral prediction approach by applying it to an expanded set of 13 UC Berkeley MOOCs run on the edX platform. Preliminary results from applying the time-augmented Recurrent Neural Network (RNN) based behavior model approach are presented and compared to baseline models. These findings contribute to the discussion of when and in what context this form of collaborative based personalized recommendation is appropriate in MOOCs.
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