What If Bots Feel Moods?

L. Qiu, Yingwai Shiu, Pingping Lin, Ruihua Song, Yue Liu, Dongyan Zhao, Rui Yan
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引用次数: 14

Abstract

For social bots, smooth emotional transitions are essential for delivering a genuine conversation experience to users. Yet, the task is challenging because emotion is too implicit and complicated to understand. Among previous studies in the domain of retrieval-based conversational model, they only consider the factors of semantic and functional dependencies of utterances. In this paper, to implement a more empathetic retrieval-based conversation system, we incorporate emotional factors into context-response matching from two aspects: 1) On top of semantic matching, we propose an emotion-aware transition network to model the dynamic emotional flow and enhance context-response matching in retrieval-based dialogue systems with learnt intrinsic emotion features through a multi-task learning framework; 2) We design several flexible controlling mechanisms to customize social bots in terms of emotion. Extensive experiments on two benchmark datasets indicate that the proposed model can effectively track the flow of emotions throughout a human-machine conversation and significantly improve response selection in dialogues over the state-of-the-art baselines. We also empirically validate the emotion-control effects of our proposed model on three different emotional aspects. Finally, we apply such functionalities to a real IoT application.
如果机器人能感觉到情绪呢?
对于社交机器人来说,流畅的情感转换对于向用户提供真实的对话体验至关重要。然而,这项任务是具有挑战性的,因为情感太过含蓄和复杂,难以理解。在基于检索的会话模型领域中,以往的研究只考虑话语的语义依赖和功能依赖因素。为了实现一个基于共情检索的对话系统,我们从两个方面将情感因素纳入到上下文-反应匹配中:1)在语义匹配的基础上,我们提出了一个情感感知转换网络来模拟动态情绪流,并通过多任务学习框架增强基于检索的对话系统中习得的内在情感特征的上下文-反应匹配;2)我们设计了一些灵活的控制机制,从情感方面定制社交机器人。在两个基准数据集上进行的大量实验表明,所提出的模型可以有效地跟踪整个人机对话中的情绪流动,并在最先进的基线上显著改善对话中的响应选择。我们还在三个不同的情绪方面实证验证了我们提出的模型的情绪控制效果。最后,我们将这些功能应用于实际的物联网应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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