Training machines to understand natural language and interact with humans is an elusive and essential task of artificial intelligence. A diversity of dialogue systems has been designed with the rapid development of deep learning techniques, especially the recent pre-trained language models (PrLMs). Among these studies, the fundamental yet challenging type of task is dialogue comprehension whose role is to teach the machines to read and comprehend the dialogue context before responding. In this paper, we review the previous methods from the technical perspective of dialogue modeling for the dialogue comprehension task. We summarize the characteristics and challenges of dialogue comprehension in contrast to plain-text reading comprehension. Then, we discuss three typical patterns of dialogue modeling. In addition, we categorize dialogue-related pre-training techniques which are employed to enhance PrLMs in dialogue scenarios. Finally, we highlight the technical advances in recent years and point out the lessons from the empirical analysis and the prospects towards a new frontier of researches.
翻译:理解自然语言和与人类互动的培训机器是人工智能的一项难以捉摸的重要任务。随着深层次学习技术的迅速发展,设计了多种多样的对话系统,特别是最近培训前语言模型(PrLMs),在这些研究中,根本性但具有挑战性的任务类型是对话理解,其作用是教机器阅读和理解对话背景,然后做出答复。在本文件中,我们从对话理解任务的对话模式的技术角度,审视了以往的方法。我们总结了对话理解的特点和挑战,而不是简单的阅读理解。然后,我们讨论了对话模式的三种典型模式。此外,我们将用于在对话情景中加强PrLMs的与对话有关的培训前技术分类。最后,我们强调近年来的技术进步,并指出从经验分析中得出的教训以及探索新研究领域的前景。