对话的神经话语建模

John M. Pierre
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引用次数: 0

摘要

深度神经网络最近在许多与语言相关的任务中显示出了前景,比如对话建模。我们将基于rnn的序列扩展到序列模型,以捕获跨多个会话回合的远程话语。我们对额外的上下文对表现的影响程度进行了敏感性分析,并提供了定量和定性的证据,证明这些模型可以捕获多个话语之间的话语关系。我们的研究结果表明,添加一个额外的RNN层来建模话语可以提高输出话语的质量,并且提供更多之前的对话作为输入也可以提高性能。通过搜索特定话语标记的生成输出,我们展示了神经话语模型如何在对话中表现出增强的连贯性和凝聚力。
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Neural Discourse Modelling of Conversations
Deep neural networks have shown recent promise in many language-related tasks such as the modelling of conversations. We extend RNN-based sequence to sequence models to capture the long-range discourse across many turns of conversation. We perform a sensitivity analysis on how much additional context affects performance, and provide quantitative and qualitative evidence that these models can capture discourse relationships across multiple utterances. Our results show how adding an additional RNN layer for modelling discourse improves the quality of output utterances and providing more of the previous conversation as input also improves performance. By searching the generated outputs for specific discourse markers, we show how neural discourse models can exhibit increased coherence and cohesion in conversations.
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