This study focuses on a reverse question answering (QA) procedure, in which machines proactively raise questions and humans supply the answers. This procedure exists in many real human-machine interaction applications. However, a crucial problem in human-machine interaction is answer understanding. The existing solutions have relied on mandatory option term selection to avoid automatic answer understanding. However, these solutions have led to unnatural human-computer interaction and negatively affected user experience. To this end, the current study proposes a novel deep answer understanding network, called AntNet, for reverse QA. The network consists of three new modules, namely, skeleton attention for questions, relevance-aware representation of answers, and multi-hop based fusion. As answer understanding for reverse QA has not been explored, a new data corpus is compiled in this study. Experimental results indicate that our proposed network is significantly better than existing methods and those modified from classical natural language processing deep models. The effectiveness of the three new modules is also verified.
翻译:本研究侧重于反向回答(QA)程序,在这种程序中,机器积极主动地提出问题,人类提供答案。这个程序存在于许多真正的人体机器互动应用中。然而,人体机器互动的一个关键问题是答案理解。现有的解决方案依靠强制性选择术语来避免自动回答理解。然而,这些解决方案导致了非自然的人体计算机互动和消极的用户经验。为此,本研究提议建立一个新型的深层次答案理解网络,称为AntNet,用于反向QA。网络由三个新的模块组成,即对问题的骨干关注、对答案的适切性表示和基于多节的聚合。由于对反向QA的答案理解尚未探讨,因此在本研究中汇编了一个新的数据集。实验结果表明,我们提议的网络比现有方法和古典自然语言处理深层模型所修改的方法要好得多。三个新模块的有效性也得到了验证。