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Courteously Yours: Inducing courteous behavior in Customer Care responses using Reinforced Pointer Generator Network

机译:礼貌您的:使用强化指针发生器网络诱导客户服务响应中的礼貌行为

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In this paper, we propose an effective deep learning framework for inducing courteous behavior in customer care responses. The interaction between a customer and the customer care representative contributes substantially to the overall customer experience. Thus, it is imperative for customer care agents and chat-bots engaging with humans to be personal, cordial and emphatic to ensure customer satisfaction and retention. Our system aims at automatically transforming neutral customer care responses into courteous replies. Along with stylistic transfer (of courtesy), our system ensures that responses are coherent with the conversation history, and generates courteous expressions consistent with the emotional state of the customer. Our technique is based on a reinforced pointer-generator model for the sequence to sequence task. The model is also conditioned on a hierarchically encoded and emotionally aware conversational context. We use real interactions on Twitter between customer care professionals and aggrieved customers to create a large conversational dataset having both forms of agent responses: generic and courteous. We perform quantitative and qualitative analyses on established and task-specific metrics, both automatic and human evaluation based. Our evaluation shows that (he proposed models can generate emotionally-appropriate courteous expressions while preserving the content. Experimental results also prove that our proposed approach performs better than the baseline models.
机译:在本文中,我们提出了一种有效的深度学习框架,可以在客户服务反应中诱导礼貌行为。客户与客户服务代表之间的互动大大贡献了整体客户体验。因此,客户关怀代理和与人类的聊天机器人所必需的是个人,亲切,强调,以确保客户满意度和保留。我们的系统旨在自动将中性客户服务响应自动转化为周围的回复。随着传感器转移(由礼节),我们的系统确保响应与对话历史相干,并产生与客户的情感状态一致的有礼貌的表达。我们的技术基于序列序列任务的增强指针发生器模型。该模型还在分层编码和情绪意识的会话环境中调节。我们在客户关怀专业人员之间的推特和委屈客户之间使用真实的互动,创建具有两种形式的代理响应的大型会话数据集:通用和有礼貌。我们对既定和任务特定度量进行定量和定性分析,包括自动和人为评估。我们的评估表明,(他提出的模型可以在保留内容的同时产生情绪适当的礼貌的表达。实验结果还证明我们所提出的方法比基线模型更好地表现更好。

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