CLIRLGOct 25, 2022

Bridging the Training-Inference Gap for Dense Phrase Retrieval

Meta AI
arXiv:2210.13678v1290 citationsh-index: 63
Originality Incremental advance
AI Analysis

This work addresses a practical bottleneck in dense retrieval systems for researchers and practitioners, offering an incremental improvement in validation efficiency and retrieval performance.

The paper tackles the misalignment between training objectives and inference scenarios in dense phrase retrieval by proposing an efficient validation method using a small corpus subset, which improves top-1 phrase retrieval accuracy by 2-3 points and top-20 passage retrieval accuracy by 2-4 points for open-domain question answering.

Building dense retrievers requires a series of standard procedures, including training and validating neural models and creating indexes for efficient search. However, these procedures are often misaligned in that training objectives do not exactly reflect the retrieval scenario at inference time. In this paper, we explore how the gap between training and inference in dense retrieval can be reduced, focusing on dense phrase retrieval (Lee et al., 2021) where billions of representations are indexed at inference. Since validating every dense retriever with a large-scale index is practically infeasible, we propose an efficient way of validating dense retrievers using a small subset of the entire corpus. This allows us to validate various training strategies including unifying contrastive loss terms and using hard negatives for phrase retrieval, which largely reduces the training-inference discrepancy. As a result, we improve top-1 phrase retrieval accuracy by 2~3 points and top-20 passage retrieval accuracy by 2~4 points for open-domain question answering. Our work urges modeling dense retrievers with careful consideration of training and inference via efficient validation while advancing phrase retrieval as a general solution for dense retrieval.

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