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Research on a New Automatic Generation Algorithm of Concept Map Based on Text Clustering and Association Rules Mining

机译:基于文本聚类和关联规则挖掘的概念地图新自动生成算法研究

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As an important teaching tool of visualization, the concept map has become a hot spot in the field of smart education. The traditional concept map generation algorithm is hard to guarantee the construction process and quality because of the huge amount of work and the great influence of the expert experience. A TC-ARM algorithm for automatic generation of hybrid concept map based on text clustering and association rules mining is proposed. This algorithm takes full account of the attributes of the relationship between concepts, uses text clustering technology to replace the relationship between artificial mining concepts and test questions, combines association rules mining methods to generate the concept maps, and introduces consistency of answer record parameter to improve the efficiency of concept map generation. The experimental results show that the TC-ARM algorithm can automatically and rapidly construct the concept map, which not only reduces the impact of outside experts, but also dynamically adjusts the concept map based on the basic data. The concept map generated by the TC-ARM algorithm expresses the relationship between the concepts and the degree of closeness through the relationship pairs and relationship strength, and can clearly show the structural relationship between concepts, provide instructional optimization guidance for knowledge visualization.
机译:作为可视化的重要教学工具,概念地图已成为智能教育领域的热点。由于巨大的工作和专家体验的巨大影响,传统的概念地图生成算法很难保证施工过程和质量。提出了一种基于文本聚类和关联规则挖掘的用于自动生成混合概念地图的TC-ARM算法。该算法充分考虑了概念之间关系的属性,使用文本群集技术来替换人工挖掘概念和测试问题之间的关系,结合关联规则挖掘方法来生成概念映射,并介绍答案记录参数的一致性来改进概念映射生成的效率。实验结果表明,TC-ARM算法可以自动迅速构建概念图,这不仅可以减少外部专家的影响,而且还可以根据基本数据动态调整概念图。 TC-ARM算法生成的概念图表达了通过关系对和关系强度的概念与亲密度之间的关系,并且可以清楚地表明概念之间的结构关系,为知识可视化提供教学优化指导。

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