Evaluation of question classification systems using differing features

A. Harb, M. Beigbeder, J. Girardot
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引用次数: 8

Abstract

Most question and answer systems”Q&A” are based on three research themes: question classification and analysis, document retrieval and answer extraction. The performance in every stage affects the final result. The classification of questions appears as an important task because it deduces the type of expected answers. A method of improving the performance of question classification is presented, based on linguistic analysis (semantic, syntactic and morphological) as well as statistical approaches guided by a layered semantic hierarchy of fine grained question types. Actually, methods of question expansion are studied. This method adds for each word a higher representation. Various features of questions, diverse term weightings and several machine learning algorithms are compared. Experiments were conducted on real data are presented. They demonstrate an improvement in precision for question classification.
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用不同的特征评价问题分类系统
大多数问答系统“Q&A”基于三个研究主题:问题分类和分析,文档检索和答案提取。每个阶段的表现都会影响最终的结果。问题分类似乎是一项重要的任务,因为它推断出预期答案的类型。提出了一种基于语言分析(语义、句法和形态)以及基于细粒度问题类型分层语义层次的统计方法来提高问题分类性能的方法。实际上,研究了问题展开的方法。这种方法为每个单词添加了更高的表示形式。比较了问题的各种特征、不同的术语权重和几种机器学习算法。并在实际数据上进行了实验。他们展示了问题分类精度的提高。
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