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Revealing Learner Interests through Topic Mining from Question-Answering Data

机译:通过问题解答数据中的主题挖掘来揭示学习者的兴趣

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摘要

In a question-answering system, learner generated content including asked and answered questions is a meaningful resource to capture learning interests. This paper proposes an approach based on question topic mining for revealing learners' concerned topics in real community question-answering systems. The authors' approach firstly preprocesses all questions associated with learners. Afterwards, it analyzes each question with text features and generates a weight feature matrix using a revised TF/ IDF method. In order to decrease the sparsity issue of data distribution, the authors employ three concept-mapping strategies including named entity recognition, synonym extension, and hyponym replacement. Applying an SVM classifier, their approach categorizes user questions into representative topics. Three experiments are conducted based on a TREC dataset and an actual dataset containing 1,120 questions posted by learners from a commercial question-answering community. Results demonstrate the effectiveness of the method compared with conventional classifiers as baselines.
机译:在问答系统中,学习者生成的包含问与答问题的内容是捕获学习兴趣的有意义的资源。本文提出了一种基于问题主题挖掘的方法,用于在真实社区问答系统中揭示学习者的相关主题。作者的方法首先对与学习者相关的所有问题进行预处理。然后,它使用文本特征分析每个问题,并使用修订的TF / IDF方法生成权重特征矩阵。为了减少数据分配的稀疏性问题,作者采用了三种概念映射策略,包括命名实体识别,同义词扩展和下位词替换。应用SVM分类器,他们的方法将用户问题分类为代表性主题。基于TREC数据集和包含来自商业问题解答社区的学习者的1,120个问题的实际数据集进行了三个实验。结果证明了与传统分类器相比,该方法的有效性。

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