Alongside huge volumes of research on deep learning models in NLP in the recent years, there has been also much work on benchmark datasets needed to track modeling progress. Question answering and reading comprehension have been particularly prolific in this regard, with over 80 new datasets appearing in the past two years. This study is the largest survey of the field to date. We provide an overview of the various formats and domains of the current resources, highlighting the current lacunae for future work. We further discuss the current classifications of ``reasoning types" in question answering and propose a new taxonomy. We also discuss the implications of over-focusing on English, and survey the current monolingual resources for other languages and multilingual resources. The study is aimed at both practitioners looking for pointers to the wealth of existing data, and at researchers working on new resources.
翻译:近些年来,除了对全国劳工规划的深层学习模式进行大量研究外,在跟踪模型进展所需的基准数据集方面也进行了大量工作,在这方面,回答问题和阅读理解特别大,过去两年中出现了80多个新的数据集,这是迄今为止对实地进行的最大调查,我们概述了现有资源的各种格式和领域,突出了当前工作的缺陷。我们进一步讨论了有关回答中目前“理由类型”的分类,并提出了新的分类法。我们还讨论了过分注重英语的影响,并调查了目前用于其他语文和多种语文资源的单一语言资源。这项研究的对象是寻找现有数据财富的从业人员和从事新资源工作的研究人员。