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Support Vector Machines for Text Categorization in Chinese Question Classification

机译:支持向量机在中文问题分类中的文本分类

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Question classification plays a crucial important role in the question answering system because categorizing a given question is beneficial to identify an answer in the documents. The goal of question classification is to accurately assign labels to question based on expected answer type. Recently, many machine learning algorithms are used for question classification. However many research results show that SVM perform best in this task, because it is well known to work well for nonlinear, sparse, high dimensional problems. In this experiment, we perform the One-against-One SVM algorithm and a feature extraction method of Chinese questions to get high classification accuracy.
机译:问题分类在问题回答系统中起着至关重要的重要作用,因为对给定问题进行分类有助于识别文档中的答案。问题分类的目的是根据期望的答案类型为问题正确分配标签。最近,许多机器学习算法被用于问题分类。但是,许多研究结果表明,SVM在此任务中表现最佳,因为众所周知,它可以很好地解决非线性,稀疏,高维问题。在本实验中,我们执行了“一对多” SVM算法和中文问题的特征提取方法,以实现较高的分类精度。

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