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Investigating the Contribution of Distributional Semantic Information for Dialogue Act Classification

机译:调查分布语义信息对对话法分类的贡献

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This paper presents a series of experiments in applying compositional distributional semantic models to dialogue act classification. In contrast to the widely used bag-of-words approach, we build the meaning of an utterance from its parts by composing the distributional word vectors using vector addition and multiplication. We investigate the contribution of word sequence, dialogue act sequence, and distributional information to the performance, and compare with the current state of the art approaches. Our experiment suggests that that distributional information is useful for dialogue act tagging but that simple models of compositionality fail to capture crucial information from word and utterance sequence; more advanced approaches (e.g. sequence- or grammar-driven, such as categorical, word vector composition) are required.
机译:本文提出了将成分分布语义模型应用于对话行为分类的一系列实验。与广泛使用的词袋方法相反,我们通过使用向量加法和乘法来构成分布词向量,从而从其各个部分构建话语的含义。我们研究了单词序列,对话行为序列和分布信息对性能的贡献,并与当前的最新方法进行了比较。我们的实验表明,分布信息对于对话行为标记很有用,但是简单的构图模型无法从单词和话语序列中捕获关键信息。需要更高级的方法(例如,顺序或语法驱动的方法,例如分类,词向量组合)。

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