Most chatbot literature that focuses on improving the fluency and coherence of a chatbot, is dedicated to making chatbots more human-like. However, very little work delves into what really separates humans from chatbots -- humans intrinsically understand the effect their responses have on the interlocutor and often respond with an intention such as proposing an optimistic view to make the interlocutor feel better. This paper proposes an innovative framework to train chatbots to possess human-like intentions. Our framework includes a guiding chatbot and an interlocutor model that plays the role of humans. The guiding chatbot is assigned an intention and learns to induce the interlocutor to reply with responses matching the intention, for example, long responses, joyful responses, responses with specific words, etc. We examined our framework using three experimental setups and evaluated the guiding chatbot with four different metrics to demonstrate flexibility and performance advantages. Additionally, we performed trials with human interlocutors to substantiate the guiding chatbot's effectiveness in influencing the responses of humans to a certain extent. Code will be made available to the public.
翻译:大部分侧重于改进聊天室流利和一致性的聊天室文献,都致力于使聊天室更像人。然而,很少的工作涉及真正将人与聊天室区分开来的东西 -- -- 人类从本质上理解其回应对对话者的影响,并经常作出反应,例如提出乐观观点,使对话者感觉更好。本文提出了培训聊天室以拥有类似人类意图的创新框架。我们的框架包括一个指导聊天室和一个发挥人类作用的对话模式。指导聊天室被赋予一种意图,并学习如何引导对话者作出与意图相匹配的答复,例如长期反应、喜乐反应、用具体语言回应等。我们利用三个实验性设置对框架进行了检查,用四个不同的标准对指导聊天室进行了评估,以显示灵活性和性能优势。此外,我们与人的对话者进行了试验,以证实指导聊天室在一定程度上影响人类反应的有效性。守则将提供给公众。