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Utilization of Exercise Difficulty Rating by Students for Recommendation

机译:利用学生的运动难度等级进行推荐

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Recommendation plays a vital role in adaptive educational systems. Learners often face large body of educational materials including not only texts (explanations), but also interactive content such as exercises and questions. These require various knowledge levels of multiple topics. For effective learning, personalized recommendation of the most appropriate items according to the learner's current knowledge level and preferences is an essential feature. In this paper, we describe a learning object recommendation method based on students' explicit difficulty ratings during and after exercise/question solving. It is based on comparing the learner's state when the recommendation is to be made against his peers with similar knowledge in the moment when they rated the difficulty. To deal with sparsity of ratings that are even further filtered, we also propose two solutions to either adaptively elicit ratings in appropriate moments during learners work, or to predict ratings from implicit user actions. We evaluate the method in ALEF - adaptive web-based educational system.
机译:推荐在适应性教育系统中起着至关重要的作用。学习者经常面对大量的教学材料,不仅包括课文(说明),还包括互动内容,例如练习和问题。这些要求涉及多个主题的各种知识水平。为了有效学习,根据学习者当前的知识水平和喜好个性化推荐最合适的项目是一项基本功能。在本文中,我们描述了一种基于学生在运动/问题解决期间和之后明确的难度等级的学习对象推荐方法。它是基于将学习者的建议状态与有类似知识的同龄人在评估难度时的建议状态进行比较。为了处理甚至被进一步过滤的稀疏等级,我们还提出了两种解决方案,要么是在学习者工作期间的适当时刻自适应地得出等级,要么是通过隐式用户行为来预测等级。我们在ALEF-自适应网络教育系统中评估该方法。

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