在学习资源中区分已定义概念和先决概念

S. Changuel, Nicolas Labroche
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引用次数: 3

摘要

任何辅导系统的目标都是为学习者提供有意义的学习,因此了解文件中提到的概念是学习该文件的先决条件还是可以从中学习是很重要的。在本文中,我们研究了从网络上可用的学习资源中识别定义概念和前提概念的问题。利用统计和机器学习工具来预测每个概念的类别。构建了两组特征来对概念进行分类:上下文特征和局部特征。上下文特征包含语言信息,局部特征包含概念属性,如字体大小和字体重量。针对一个定义概念在文档中多次出现的问题,提出了一种聚合方法。结果表明,SVM分类器的分类效果优于其他分类器。
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Distinguishing defined concepts from prerequisite concepts in learning resources
The objective of any tutoring system is to provide meaningful learning to the learner, thence it is important to know whether a concept mentioned in a document is a prerequisite for studying that document, or it can be learned from it. In this paper, we study the problem of identifying defined concepts and prerequisite concepts from learning resources available on the web. Statistics and machine learning tools are exploited in order to predict the class of each concept. Two groups of features are constructed to categorise the concepts: contextual features and local features. The contextual features enclose linguistic information and the local features contain the concept properties such as font size and font weigh. An aggregation method is proposed as a solution to the problem of the multiple occurrences of a defined concept in a document. This paper shows that best results are obtained with the SVM classifier than with other classifiers.
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