论文标题
一项有效开放域问题回答的调查
A Survey for Efficient Open Domain Question Answering
论文作者
论文摘要
开放域问题回答(ODQA)是一项长期任务,旨在从大型知识语料库中回答事实问题,而没有任何自然语言处理(NLP)的明确证据。最近的著作主要集中在提高答案的准确性并取得了有希望的进步上。但是,较高的精度通常会带有更多的记忆消耗和推理潜伏期,这可能不一定足够有效地在现实世界中直接部署。因此,追求准确性,记忆消耗和处理速度之间的权衡。在本文中,我们对ODQA模型效率的最新进展进行了调查。我们浏览ODQA模型,并结论效率的核心技术。给出了记忆成本,处理速度,准确性和整体比较的定量分析。我们希望这项工作能够使学者感兴趣地了解ODQA效率研究的进步和公开挑战,从而有助于进一步发展ODQA效率。
Open domain question answering (ODQA) is a longstanding task aimed at answering factual questions from a large knowledge corpus without any explicit evidence in natural language processing (NLP). Recent works have predominantly focused on improving the answering accuracy and achieved promising progress. However, higher accuracy often comes with more memory consumption and inference latency, which might not necessarily be efficient enough for direct deployment in the real world. Thus, a trade-off between accuracy, memory consumption and processing speed is pursued. In this paper, we provide a survey of recent advances in the efficiency of ODQA models. We walk through the ODQA models and conclude the core techniques on efficiency. Quantitative analysis on memory cost, processing speed, accuracy and overall comparison are given. We hope that this work would keep interested scholars informed of the advances and open challenges in ODQA efficiency research, and thus contribute to the further development of ODQA efficiency.