The goal of building dialogue agents that can converse with humans naturally has been a long-standing dream of researchers since the early days of artificial intelligence. The well-known Turing Test proposed to judge the ultimate validity of an artificial intelligence agent on the indistinguishability of its dialogues from humans'. It should come as no surprise that human-level dialogue systems are very challenging to build. But, while early effort on rule-based systems found limited success, the emergence of deep learning enabled great advance on this topic. In this thesis, we focus on methods that address the numerous issues that have been imposing the gap between artificial conversational agents and human-level interlocutors. These methods were proposed and experimented with in ways that were inspired by general state-of-the-art AI methodologies. But they also targeted the characteristics that dialogue systems possess.
翻译:自人工智能早期以来,研究人员就一直梦想建立能够自然与人交流的对话代理人。众所周知的图灵试验建议判断人工智能代理人对人类对话的不可分性的最终有效性。人类层面的对话系统建设起来极具挑战性,这不足为奇。但是,尽管早期关于基于规则的系统的努力取得了有限的成功,但深层次的学习的出现使这一问题取得了很大进展。在这个论文中,我们侧重于解决在人为对话代理人和人际对话者之间造成差距的许多问题的方法。这些方法都是以一般的先进人工智能方法启发的。但它们也针对对话系统所具有的特点。