Conversational Machine Reading (CMR) aims at answering questions in a complicated manner. Machine needs to answer questions through interactions with users based on given rule document, user scenario and dialogue history, and ask questions to clarify if necessary. In this paper, we propose a dialogue graph modeling framework to improve the understanding and reasoning ability of machine on CMR task. There are three types of graph in total. Specifically, Discourse Graph is designed to learn explicitly and extract the discourse relation among rule texts as well as the extra knowledge of scenario; Decoupling Graph is used for understanding local and contextualized connection within rule texts. And finally a global graph for fusing the information together and reply to the user with our final decision being either "Yes/No/Irrelevant" or to ask a follow-up question to clarify.
翻译:计算机需要根据给定规则文件、用户情景和对话历史与用户进行互动,以便回答问题,必要时提出问题以澄清。在本文中,我们提议了一个对话图模型框架,以提高机器对遗留集束弹药任务的理解和推理能力。共有三类图表。具体地说,分解图旨在明确学习并提取规则文本之间的讨论关系以及额外情景知识;脱钩图用于理解规则文本中的本地和背景联系。最后,我们的最后决定是“是/否/不相关”或提出后续问题以澄清,我们最后决定是“是/否/不相关”或请求澄清。