基于支持向量机的问题分类新特征类型评价

Marcin Skowron, Kenji Araki
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引用次数: 5

摘要

问题分类对问题的回答至关重要。在问题分类中,发现机器学习算法的准确性明显优于其他方法。使用基于ml的方法进行分类的两个关键问题是分类器设计和特征选择。众所周知,支持向量机可以很好地解决稀疏、高维的问题。然而,经常使用的词袋法并不能充分利用问题所包含的信息。为了利用这些信息,我们引入了三种新的特征类型:从属词范畴、问题焦点和句法语义结构。结果表明,与标准词袋方法和其他基于ML的方法(如带树核的SVM、带纠错码的SVM和SNoW)相比,新特征的包含提供了更高的问题分类精度。使用这三种引入的特征类型获得了84.6%的分类准确率,这是迄今为止文献中报道的最高准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of the new feature types for question classification with support vector machines
Question classification is of crucial importance for question answering. In question classification, the accuracy of machine learning algorithms was found to significantly outperform other approaches. The two key issues in classification with a ML-based approach are classifier design and feature selection. Support vector machines is known to work well for sparse, high dimensional problems. However, the frequently used bag-of-words approach does not take full advantage of information contained in a question. To exploit this information we introduce three new feature types: subordinate word category, question focus and syntactic-semantic structure. As the results demonstrate, the inclusion of the new features provides higher accuracy of question classification compared to the standard bag-of-words approach and other ML based methods such as SVM with the tree kernel, SVM with error correcting codes and SNoW. A classification accuracy of 84.6% obtained using the three introduced feature types is as of yet the highest reported in the literature.
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