基于知识图的学习诊断与资源推荐系统的构建

Kaiyu Dai, Yiyang Qiu, Rui Zhang
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引用次数: 0

摘要

随着人工智能融合的不断深入,ICT在教育领域正接近智能教育阶段,智能教育的主要目的是实现个性化学习。本文构建了一个基于本体的智能辅导系统,使教师能够直观地建立课程知识模型。该系统使用全局预测精度优化算法自动生成的测试来评估学生的学习情况。根据学生的学习情况和基于节点贡献的知识图谱结构分析,实现了学习诊断模块。资源推荐模块通过对学习资源的重要性排序实现。搭建了原型系统并进行了实验。结果表明,该方法在一定范围内可以很好地实现个性化学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Construction of Learning Diagnosis and Resources Recommendation System Based on Knowledge Graph
With the deepening integration of artificial intelligence, ICT in education is approaching to the stage of smart education, the main purpose of which is to realize learning personalization. This paper constructs an intelligent tutoring system to allow teacher establish the course knowledge model visually based on ontology. This system evaluates the learning situation of students using a test auto-generated by a global prediction accuracy optimization algorithm. The learning diagnosis module is implemented according to the learning situations of students and the structure analysis of knowledge graph based on node contribution. The resource recommendation module is implemented through the importance ranking of learning resources. The prototype system is constructed and the experiments are conducted. The results show that our approach can achieve personalized learning well in a certain range.
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