--- title: README emoji: 🐠 colorFrom: pink colorTo: blue sdk: static pinned: false license: cc-by-sa-4.0 --- # Welcome to RLHN (EMNLP 2025 Findings) RLHN (ReLabeing Hard Negatives) uses a cascading LLM framework to identify and relabel *false negatives* in IR training datasets. This repository contains training datasets curated by RLHN \& models fine-tuned on these curated datasets. List of Contributors: - Nandan Thakur* - Crystina Zhang* - Xueguang Ma - Jimmy Lin Paper URL: https://aclanthology.org/2025.findings-emnlp.481/ # Citation ``` @inproceedings{thakur-etal-2025-hard, title = "Hard Negatives, Hard Lessons: Revisiting Training Data Quality for Robust Information Retrieval with {LLM}s", author = "Thakur, Nandan and Zhang, Crystina and Ma, Xueguang and Lin, Jimmy", editor = "Christodoulopoulos, Christos and Chakraborty, Tanmoy and Rose, Carolyn and Peng, Violet", booktitle = "Findings of the Association for Computational Linguistics: EMNLP 2025", month = nov, year = "2025", address = "Suzhou, China", publisher = "Association for Computational Linguistics", url = "https://aclanthology.org/2025.findings-emnlp.481/", doi = "10.18653/v1/2025.findings-emnlp.481", pages = "9064--9083", ISBN = "979-8-89176-335-7", abstract = "Training robust retrieval and reranker models typically relies on large-scale retrieval datasets; for example, the BGE collection contains 1.6 million query-passage pairs sourced from various data sources. However, we find that certain datasets can negatively impact model effectiveness {---} pruning 8 out of 15 datasets from the BGE collection, reduces the training set size by 2.35{\texttimes}, surprisingly increases nDCG@10 on BEIR by 1.0 point. This motivates a deeper examination of training data quality, with a particular focus on ``false negatives'', where relevant passages are incorrectly labeled as irrelevant. We utilize LLMs as a simple, cost-effective approach to \textit{identify} and \textit{relabel} false negatives in training datasets. Experimental results show that relabeling false negatives as true positives improves both E5 (base) and Qwen2.5-7B retrieval models by 0.7-1.4 points on BEIR and by 1.7-1.8 points at nDCG@10 on zero-shot AIR-Bench evaluation. Similar gains are observed for rerankers fine-tuned on the relabeled data, such as Qwen2.5-3B on BEIR. The reliability of LLMs to identify false negatives is supported by human annotation results. Our training dataset and code are publicly available." } ```