基于递归神经网络的学习路径推荐系统

Tomohiro Saito, Y. Watanobe
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引用次数: 17

摘要

由于对编程和信息技术技能的需求日益增长,编程教育最近受到越来越多的关注。然而,缺乏教材和人力资源是满足日益增长的编程教育需求的主要挑战。弥补训练有素的教师短缺的一种方法是使用机器学习技术来帮助学习者。因此,我们提出了一种基于学习者能力图的递归神经网络学习路径推荐系统。简而言之,学习路径是通过试错过程从学习者的提交历史中构建的,学习者的能力图表被用作他们当前知识的晴雨表。本文提出了一种利用能力图构建学习路径推荐系统的方法,并基于递归神经网络的顺序预测模型实现了该方法。还提供了电子学习系统数据的实验评估。
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Learning Path Recommender System based on Recurrent Neural Network
Programming education has recently received increased attention due to growing demands for programming and information technology skills. However, a lack of teaching materials and human resources presents a major challenge to meeting the growing demand for programming education. One way to compensate for a shortage of trained teachers is to use machine learning techniques to assist learners. Therefore, we propose a learning path recommendation system based on a learner’s ability charts by means of a recurrent neural network. In brief, a learning path is constructed from a learner’s submission history with a trial-and-error process, and the learner’s ability chart is used as a barometer of their current knowledge. In this paper, an approach for constructing a learning path recommendation system by using ability charts and its implementation based on a sequential prediction model by a recurrent neural network, are presented. Experimental evaluation with data from an e-learning system is also provided.
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