Conversational systems have come a long way after decades of research and development, from Eliza and Parry in the 60's and 70's, to task-completion systems as in the ATIS project, to intelligent personal assistants such as Siri, and to today's social chatbots like XiaoIce. Social chatbots' appeal lies in not only their ability to respond to users' diverse requests, but also in being able to establish an emotional connection with users. The latter is done by satisfying the users' essential needs for communication, affection, and social belonging. The design of social chatbots must focus on user engagement and take both intellectual quotient (IQ) and emotional quotient (EQ) into account. Users should want to engage with the social chatbot; as such, we define the success metric for social chatbots as conversation-turns per session (CPS). Using XiaoIce as an illustrative example, we discuss key technologies in building social chatbots from core chat to visual sense to skills. We also show how XiaoIce can dynamically recognize emotion and engage the user throughout long conversations with appropriate interpersonal responses. As we become the first generation of humans ever living with AI, social chatbots that are well-designed to be both useful and empathic will soon be ubiquitous.
翻译:从60年代和70年代的Eliza和Parry,到ATIS项目中的任务完成系统,到Siri等智能个人助理,以及到今天象Shirice这样的社交聊天室。 社交聊天室的呼声不仅在于他们能够响应用户的不同要求,而且在于能够与用户建立情感联系,后者是通过满足用户对通信、感情和社会归属的基本需要来实现的。社交聊天室的设计必须注重用户的参与,并兼顾知识商数(IQ)和情感商数(EQ)两方面。用户应该想与社交聊天室接触;因此,我们确定社交聊天室的成功标准是每场对话的开始(CPS)。以小机会为例,我们讨论从核心聊天到视觉感知到技能建设社交聊天室的关键技术。我们还展示了小机会如何动态地认识情感,让用户在长时间的交谈中都参与到人际对话。