构建开放式会话代理的见解

Khyatti Gupta, Meghana Joshi, Ankush Chatterjee, Sonam Damani, Kedhar Nath Narahari, Puneet Agrawal
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引用次数: 5

摘要

对话系统和会话代理在现代社会中越来越受欢迎。我们构想了一个这样的对话代理,微软的“Ruuh”,它承诺能够与用户就他们选择的任何主题进行对话。建立一个像Ruuh这样的开放式对话代理一开始似乎是一项艰巨的任务,因为代理需要超越仅仅产生“相关”响应的实用概念,满足更广泛的用户社交需求,比如在用户最喜欢的运动队获胜时表达快乐,在展示用户宠物的照片时分享可爱的评论等等。代理还需要检测和响应辱骂语言,敏感话题和用户的拖钓行为。许多这些问题构成了重大的研究挑战和产品设计限制,因为人们需要绕过技术限制来创建可接受的用户体验。然而,当产品接触到真正的用户时,真正的考验就开始了,人们意识到在广阔的对话领域中存在着挑战和机遇。到目前为止,Ruuh有超过250万的真实用户,他们与Ruuh产生了超过3亿的用户对话,我们将在本文中讨论大量的学习、见解和机会。
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Insights from Building an Open-Ended Conversational Agent
Dialogue systems and conversational agents are becoming increasingly popular in modern society. We conceptualized one such conversational agent, Microsoft’s “Ruuh” with the promise to be able to talk to its users on any subject they choose. Building an open-ended conversational agent like Ruuh at onset seems like a daunting task, since the agent needs to think beyond the utilitarian notion of merely generating “relevant” responses and meet a wider range of user social needs, like expressing happiness when user’s favourite sports team wins, sharing a cute comment on showing the pictures of the user’s pet and so on. The agent also needs to detect and respond to abusive language, sensitive topics and trolling behaviour of the users. Many of these problems pose significant research challenges as well as product design limitations as one needs to circumnavigate the technical limitations to create an acceptable user experience. However, as the product reaches the real users the true test begins, and one realizes the challenges and opportunities that lie in the vast domain of conversations. With over 2.5 million real-world users till date who have generated over 300 million user conversations with Ruuh, there is a plethora of learning, insights and opportunities that we will talk about in this paper.
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