We review the EfficientQA competition from NeurIPS 2020. The competition focused on open-domain question answering (QA), where systems take natural language questions as input and return natural language answers. The aim of the competition was to build systems that can predict correct answers while also satisfying strict on-disk memory budgets. These memory budgets were designed to encourage contestants to explore the trade-off between storing retrieval corpora or the parameters of learned models. In this report, we describe the motivation and organization of the competition, review the best submissions, and analyze system predictions to inform a discussion of evaluation for open-domain QA.
翻译:我们审查了NeurIPS 2020年的高效QA竞争。竞争侧重于公开回答问题(QA),系统将自然语言问题作为投入,并返回自然语言答案。竞争的目的是建立能够预测正确答案的系统,同时也满足严格的在磁盘上存储预算的要求。这些记忆预算旨在鼓励参赛者探索存储检索公司或学习模型参数之间的权衡。我们在本报告中描述了竞争的动机和组织,审查了提交的最佳文件,并分析了系统预测,以便为关于开放式QA评价的讨论提供信息。