基于用户档案的个性化学习路径推荐

Dihua Xu, Zhijian Wang, Ke-Jia Chen, Weidong Huang
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引用次数: 12

摘要

目前,许多研究人员致力于开发具有个性化学习机制的学习系统,以自适应地提供学习路径,以提高个体学习者的学习绩效。同时,对于想要快速有效地学习新事物的学习者来说,寻找合适的学习路径已经成为一个至关重要的问题。本文提出了一个个性化的学习路径推荐器,它可以推荐学习者学习过程中每一步的学习材料。众所周知,推荐系统的性能取决于用于表示用户特征的用户配置文件的准确性。我们首先利用社会标签来构建用户档案。我们认为学习路径中的知识单元具有优先关系。然后我们利用贝叶斯公式来预测大多数相似学习者中下一个学习材料的概率。实验结果表明,该方法是实用有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personalized Learning Path Recommender Based on User Profile Using Social Tags
Nowadays, many researchers focus on developing learning systems with personalized learning mechanisms to adaptively provide learning paths in order to promote the learning performance of individual learner. Meanwhile, finding a suitable learning path has become a crucial issue for learners who want to learn new things quickly and effectively. We propose a personalized learning path recommender in this paper, which can recommend learning materials of every step in the learning process of a learner. as we all known, the performance of a recommender system depends on the accuracy of the user profiles used to represent the characteristics of the users. We firstly make advantage of social tags to construct user profiles. We consider that the knowledge units in the learning path have precedence relationship. then we make use of Bayes formula to predict the probability of the next learning materials within mostly similar learners. the Experiments show that our method is practical and effective.
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