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From symbolic to sub-symbolic information in question classification

机译:从符号到子符号信息进行问题分类

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摘要

Question Answering (QA) is undoubtedly a growing field of current research in Artificial Intelligence. Question classification, a QA subtask, aims to associate a category to each question, typically representing the semantic class of its answer. This step is of major importance in the QA process, since it is the basis of several key decisions. For instance, classification helps reducing the number of possible answer candidates, as only answers matching the question category should be taken into account. This paper presents and evaluates a rule-based question classifier that partially founds its performance in the detection of the question headword and in its mapping into the target category through the use of WordNet. Moreover, we use the rule-based classifier as a features' provider of a machine learning-based question classifier. A detailed analysis of the rule-base contribution is presented. Despite using a very compact feature space, state of the art results are obtained.
机译:问答(QA)无疑是当前人工智能研究的一个增长领域。问题分类是QA子任务,旨在将类别与每个问题相关联,通常代表其答案的语义类别。此步骤在质量检查流程中至关重要,因为它是几个关键决策的基础。例如,分类有助于减少可能的候选答案的数量,因为仅应考虑与问题类别匹配的答案。本文介绍并评估了基于规则的问题分类器,该分类器部分地发现了其在检测问题词以及通过使用WordNet映射到目标类别中的性能。此外,我们使用基于规则的分类器作为基于机器学习的问题分类器的功能提供者。提出了对规则库贡献的详细分析。尽管使用了非常紧凑的特征空间,但仍获得了最新技术成果。

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