In open-domain question answering, dense passage retrieval has become a new paradigm to retrieve relevant passages for finding answers. Typically, the dual-encoder architecture is adopted to learn dense representations of questions and passages for semantic matching. However, it is difficult to effectively train a dual-encoder due to the challenges including the discrepancy between training and inference, the existence of unlabeled positives and limited training data. To address these challenges, we propose an optimized training approach, called RocketQA, to improving dense passage retrieval. We make three major technical contributions in RocketQA, namely cross-batch negatives, denoised hard negatives and data augmentation. The experiment results show that RocketQA significantly outperforms previous state-of-the-art models on both MSMARCO and Natural Questions. We also conduct extensive experiments to examine the effectiveness of the three strategies in RocketQA. Besides, we demonstrate that the performance of end-to-end QA can be improved based on our RocketQA retriever.
翻译:在开放式解答中,密集通道检索已成为获取相关通道以找到答案的新范例,通常采用双编码结构来学习大量的问题和通道用于语义匹配,然而,由于培训和推断之间的差异、未贴标签的正数和有限的培训数据等挑战,很难有效地培训双编码器。为了应对这些挑战,我们提议采用称为火箭QA的优化培训方法来改进密集通道的检索。我们在火箭QA中做出了三大技术贡献,即交叉组合负数、分解硬负数和数据增强。实验结果表明,火箭QA大大优于以前关于MSMARCO和自然问题的最新模型。我们还进行了广泛的实验,以审查火箭QA的三项战略的有效性。此外,我们还表明,最终QA的性能可以在火箭QA检索器的基础上得到改进。