A conversational information retrieval (CIR) system is an information retrieval (IR) system with a conversational interface which allows users to interact with the system to seek information via multi-turn conversations of natural language, in spoken or written form. Recent progress in deep learning has brought tremendous improvements in natural language processing (NLP) and conversational AI, leading to a plethora of commercial conversational services that allow naturally spoken and typed interaction, increasing the need for more human-centric interactions in IR. As a result, we have witnessed a resurgent interest in developing modern CIR systems in both research communities and industry. This book surveys recent advances in CIR, focusing on neural approaches that have been developed in the last few years. This book is based on the authors' tutorial at SIGIR'2020 (Gao et al., 2020b), with IR and NLP communities as the primary target audience. However, audiences with other background, such as machine learning and human-computer interaction, will also find it an accessible introduction to CIR. We hope that this book will prove a valuable resource for students, researchers, and software developers. This manuscript is a working draft. Comments are welcome.
翻译:对话信息检索系统是一个信息检索系统,具有一个对话界面,使用户能够与系统互动,通过语言或书面形式的自然语言多方向对话寻求信息。在深入学习方面最近的进展使自然语言处理(NLP)和对话AI方面大有改进,导致大量商业对话服务,允许自然交谈和打字互动,从而增加了在IR对更多以人为中心的互动的需求。因此,我们目睹了在研究界和工业界发展现代CIR系统的新兴趣。这本书调查了CIR的最新进展,重点是过去几年开发的神经学方法。这本书以SIGIR '20(Gao等人,2020b)的作者辅导为基础,以IR和NLP社区为主要目标受众。然而,有其他背景的受众,如机器学习和人-计算机互动,也会发现它是CIR的一个无障碍的介绍。我们希望这本书能够证明学生、研究人员和软件开发者的宝贵资源。这份草稿是一份受欢迎的工作稿。