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Dialoguc-act-driven Conversation Model: An Experimental Study

机译:对话行为驱动的会话模型:实验研究

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The utility of additional semantic information for the task of next utterance selection in an automated dialogue system is the focus of study in this paper. In particular, we show that additional information available in the form of dialogue acts -when used along with context given in the form of dialogue history- improves the performance irrespective of the underlying model being generative or discriminative. In order to show the model agnostic behavior of dialogue acts, we experiment with several well-known models such as sequence-to-sequence encoder-decoder model, hierarchical encoder-decoder model, and Siamese-based models with and without hierarchy; and show that in all models, incorporating dialogue acts improves the performance by a significant margin. We. furthermore, propose a novel way of encoding dialogue act information, and use it along with hierarchical encoder to build a model that can use the sequential dialogue act information in a natural way. Our proposed model achieves an MRR of about 84.8% for the task of next utterance selection on a newly introduced DailyDialog dataset, and outperform the baseline models. We also provide a detailed analysis of results including key insights that explain the improvement in MRR because of dialogue act information.
机译:在自动对话系统中,将附加语义信息用于下一个话语选择的任务是本文研究的重点。尤其是,我们表明,以对话行为形式使用的其他信息(与以对话历史形式给出的上下文一起使用)可以提高性能,而与基础模型是生成性的还是歧视性的无关。为了显示对话行为的模型不可知行为,我们尝试使用几种众所周知的模型,例如序列到序列编码器-解码器模型,分层编码器-解码器模型以及具有和不具有层次结构的基于暹罗语的模型;并表明,在所有模型中,合并对话行为都可以显着提高绩效。我们。此外,提出一种对对话行为信息进行编码的新颖方法,并将其与分层编码器一起使用,以构建可以自然使用顺序对话行为信息的模型。我们提出的模型在新引入的DailyDialog数据集上的下一次话语选择任务上实现了约84.8%的MRR,并且胜过了基线模型。我们还提供了对结果的详细分析,其中包括可以解释由于对话行为信息而导致的MRR改善的关键见解。

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