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A Machine Learning Approach to Speech Act Classification Using Function Words

机译:一种基于功能词的语音行为分类的机器学习方法

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This paper presents a novel technique for the classification of sentences as Dialogue Acts, based on structural information contained in function words. It focuses on classifying questions or non-questions as a generally useful task in agent-based systems. The proposed technique extracts salient features by replacing function words with numeric tokens and replacing each content word with a standard numeric wildcard token. The Decision Tree, which is a well-established classification technique, has been chosen for this work. Experiments provide evidence of potential for highly effective classification, with a significant achievement on a challenging dataset, before any optimisation of feature extraction has taken place.
机译:本文基于功能词中包含的结构信息,提出了一种将句子分类为“对话行为”的新技术。它着重于将问题或非问题分类为基于代理的系统中通常有用的任务。所提出的技术通过用数字标记替换功能词并用标准数字通配符标记替换每个内容词来提取显着特征。这项工作已经选择了一种成熟的分类技术“决策树”。实验提供了可能进行高效分类的证据,并且在进行特征提取的任何优化之前,在具有挑战性的数据集上都取得了重大成就。

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