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Mimic and Rephrase: Reflective listening in open-ended dialogue

机译:模仿与措辞:开放式对话中的反思性聆听

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Reflective listening—demonstrating that you have heard your conversational partner—is key to effective communication. Expert human communicators often mimic and rephrase their conversational partner, e.g., when responding to sentimental stories or to questions they don't know the answer to. We introduce a new task and an associated dataset wherein dialogue agents similarly mimic and rephrase a user's request to communicate sympathy (I'm sorry to hear that) or lack of knowledge (I do not know that). We study what makes a rephrasal response good against a set of qualitative metrics. We then evaluate three models for generating responses: a syntax-aware rule-based system, a seq2seq LSTM neural models with attention (S2SA), and the same neural model augmented with a copy mechanism (S2SA+C). In a human evaluation, we find that S2SA+C and the rule-based system are comparable and approach human-generated response quality. In addition, experiences with a live deployment of S2SA+C in a customer support setting suggest that this generation task is a practical contribution to real world conversational agents.
机译:反思性聆听(表明您已听见会话伙伴)是有效沟通的关键。专家级的人类交流者通常会在例如情感故事或他们不知道答案的问题上模仿和改写他们的对话伙伴。我们引入了一个新任务和一个关联的数据集,其中对话代理类似地模仿和重新表达用户传达同情(很抱歉听到)或缺乏知识(我不知道)的请求。我们研究了使定律反应与一组定性指标相吻合的原因。然后,我们评估了三种用于生成响应的模型:基于语法的基于规则的系统,具有注意力的seq2seq LSTM神经模型(S2SA)和具有复制机制的相同神经模型(S2SA + C)。在人类评估中,我们发现S2SA + C和基于规则的系统具有可比性,并且接近人类产生的响应质量。此外,在客户支持环境中实时部署S2SA + C的经验表明,此生成任务是对现实世界中的对话代理的实际贡献。

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