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Matching knowledge elements in concept maps using a similarity flooding algorithm

机译:使用相似性泛洪算法在概念图中匹配知识元素

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Concept mapping systems used in education and knowledge management emphasize flexibility of representation to enhance learning and facilitate knowledge capture. Collections of concept maps exhibit terminology variance, informality, and organizational variation. These factors make it difficult to match elements between maps in comparison, retrieval, and merging processes. In this work, we add an element anchoring mechanism to a similarity flooding (SF) algorithm to match nodes and substructures between pairs of simulated maps and student-drawn concept maps. Experimental results show significant improvement over simple string matching with combined recall accuracy of 91% for conceptual nodes and concept → link → concept propositions in student-drawn maps.
机译:教育和知识管理中使用的概念映射系统强调表示的灵活性,以增强学习和促进知识获取。概念图的集合显示出术语差异,非正式性和组织变化。这些因素使得在比较,检索和合并过程中很难在地图之间匹配元素。在这项工作中,我们向相似性泛洪(SF)算法中添加了元素锚定机制,以匹配成对的模拟图和学生绘制的概念图之间的节点和子结构。实验结果表明,与简单字符串匹配相比,在学生绘制的地图中,概念节点和概念→链接→概念命题的组合召回准确率达到91%,具有明显的改进。

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