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Referral Augmentation for Zero-Shot Information Retrieval

Authors :
Tang, Michael
Yao, Shunyu
Yang, John
Narasimhan, Karthik
Publication Year :
2023

Abstract

We propose Referral-Augmented Retrieval (RAR), a simple technique that concatenates document indices with referrals, i.e. text from other documents that cite or link to the given document, to provide significant performance gains for zero-shot information retrieval. The key insight behind our method is that referrals provide a more complete, multi-view representation of a document, much like incoming page links in algorithms like PageRank provide a comprehensive idea of a webpage's importance. RAR works with both sparse and dense retrievers, and outperforms generative text expansion techniques such as DocT5Query and Query2Doc a 37% and 21% absolute improvement on ACL paper retrieval Recall@10 -- while also eliminating expensive model training and inference. We also analyze different methods for multi-referral aggregation and show that RAR enables up-to-date information retrieval without re-training.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2305.15098
Document Type :
Working Paper