In this paper, we propose LaPraDoR, a pretrained dual-tower dense retriever that does not require any supervised data for training. Specifically, we first present Iterative Contrastive Learning (ICoL) that iteratively trains the query and document encoders with a cache mechanism. ICoL not only enlarges the number of negative instances but also keeps representations of cached examples in the same hidden space. We then propose Lexicon-Enhanced Dense Retrieval (LEDR) as a simple yet effective way to enhance dense retrieval with lexical matching. We evaluate LaPraDoR on the recently proposed BEIR benchmark, including 18 datasets of 9 zero-shot text retrieval tasks. Experimental results show that LaPraDoR achieves state-of-the-art performance compared with supervised dense retrieval models, and further analysis reveals the effectiveness of our training strategy and objectives. Compared to re-ranking, our lexicon-enhanced approach can be run in milliseconds (22.5x faster) while achieving superior performance.
LaPraDoR: Unsupervised Pretrained Dense Retriever for Zero-Shot Text Retrieval
LaPraDoR, a pretrained dual-tower dense retriever using Iterative Contrastive Learning and Lexicon-Enhanced Dense Retrieval, achieves state-of-the-art performance on zero-shot text retrieval tasks with faster inference.
- Year
- 2022
- Venue
- Findings (ACL) 2022 5
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- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2203.06169v2ARXIV-DEFAULT
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