Extracting Compact Sets of Features for Question Classification in Cognitive Systems: A Comparative Study

Marco Pota, Angela Fuggi, M. Esposito, G. Pietro
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引用次数: 13

Abstract

Question Classification is one of the key tasks of Cognitive Systems based on the Question Answering paradigm. It aims at identifying the type of the possible answer for a question expressed in natural language. Machine learning techniques are typically employed for this task, and exploit a high number of features extracted from labelled questions of benchmark training sets in order to achieve good classification results. However, the high dimensionality of the feature space often limits the possibility of applying more efficient classification approaches, due to high training costs. In this work, more compact sets of lexical and syntactic features are proposed to distinguish question classes. In particular, the widely used unigrams are substituted with a smaller number of features, extracted by modifying typical Natural Language Processing procedures for question analysis. The accuracy values gained on a benchmark dataset by using these different sets of features are compared among them and with the state-of-the-art, taking into account the required complexity at the same time. The new sets of extracted features show a good trade-off between accuracy and complexity.
认知系统中问题分类的压缩特征提取:比较研究
问题分类是基于问答范式的认知系统的关键任务之一。它旨在识别用自然语言表达的问题的可能答案的类型。机器学习技术通常用于此任务,并利用从基准训练集的标记问题中提取的大量特征来获得良好的分类结果。然而,由于训练成本高,特征空间的高维常常限制了应用更有效分类方法的可能性。在这项工作中,提出了更紧凑的词汇和句法特征集来区分问题类别。特别是,通过修改典型的自然语言处理程序以进行问题分析,将广泛使用的单字图替换为数量较少的特征。通过使用这些不同的特征集在基准数据集上获得的精度值在它们之间进行比较,并与最先进的进行比较,同时考虑到所需的复杂性。新提取的特征集在准确性和复杂性之间取得了很好的平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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