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Towards Coherent and Engaging Spoken Dialog Response Generation Using Automatic Conversation Evaluators

机译:使用自动对话评估员致致相干和参与口头对话响应生成

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Encoder-decoder based neural architectures serve as the basis of state-of-the-art approaches in end-to-end open domain dialog systems. Since most of such systems are trained with a maximum likelihood (MLE) objective they suffer from issues such as lack of generalizability and the generic response problem, i.e., a system response that can be an answer to a large number of user utterances, e.g., "Maybe, I don't know." Having explicit feedback on the relevance and interestingness of a system response at each turn can be a useful signal for mitigating such issues and improving system quality by selecting responses from different approaches. Towards this goal, we present a system that evaluates chatbot responses at each dialog turn for coherence and engagement. Our system provides explicit turn-level dialog quality feedback, which we show to be highly correlated with human evaluation. To show that incorporating this feedback in the neural response generation models improves dialog quality, we present two different and complementary mechanisms to incorporate explicit feedback into a neural response generation model: reranking and direct modification of the loss function during training. Our studies show that a response generation model that incorporates these combined feedback mechanisms produce more engaging and coherent responses in an open-domain spoken dialog setting, significantly improving the response quality using both automatic and human evaluation.
机译:基于编码器 - 解码器的神经架构用作端到端开放域对话系统中最先进的方法的基础。由于大多数这样的系统受到最大可能性(MLE)目标的培训,因此它们遭受缺乏概括的问题和通用响应问题,即可以成为大量用户话语的答案的系统响应,例如, “也许,我不知道。”关于每个转弯系统响应的相关性和有趣的明确反馈可以是用于通过选择来自不同方法的响应来缓解此类问题的有用信号和提高系统质量。对此目标来说,我们提出了一个系统,该系统在每个对话框中转向一致性和参与时评估Chatbot响应。我们的系统提供了明确的转向级对话质量反馈,我们展示与人类评估高度相关。为了表明,在神经响应生成模型中结合该反馈来提高对话质量,我们提出了两个不同和互补的机制,将显式反馈结合到神经响应生成模型中:重新划分和直接修改训练期间损失功能。我们的研究表明,一种结合这些组合反馈机制的响应生成模型在开放式域名口语场中产生更多的接合和相干响应,可以使用自动和人类评估来显着提高响应质量。

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