Eliciting In-context Retrieval and Reasoning for Long-context Large Language Models
About
Recent advancements in long-context language models (LCLMs) promise to transform Retrieval-Augmented Generation (RAG) by simplifying pipelines. With their expanded context windows, LCLMs can process entire knowledge bases and perform retrieval and reasoning directly -- a capability we define as In-Context Retrieval and Reasoning (ICR^2). However, existing benchmarks like LOFT often overestimate LCLM performance by providing overly simplified contexts. To address this, we introduce ICR^2, a benchmark that evaluates LCLMs in more realistic scenarios by including confounding passages retrieved with strong retrievers. We then propose three methods to enhance LCLM performance: (1) retrieve-then-generate fine-tuning, (2) retrieval-attention-probing, which uses attention heads to filter and de-noise long contexts during decoding, and (3) joint retrieval head training alongside the generation head. Our evaluation of five well-known LCLMs on LOFT and ICR^2 demonstrates significant gains with our best approach applied to Mistral-7B: +17 and +15 points by Exact Match on LOFT, and +13 and +2 points on ICR^2, compared to vanilla RAG and supervised fine-tuning, respectively. It even outperforms GPT-4-Turbo on most tasks despite being a much smaller model.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Retrieval-Augmented Generation | LOFT | NQ Score95 | 42 | |
| Retrieval-Augmented Generation | ICR2 | NQ Score64 | 37 | |
| Retrieval-Augmented Generation | LOFT and ICR2 Combined | -- | 18 | |
| Question Answering | HELMET RAG subset | HotpotQA Accuracy51.4 | 8 | |
| Retrieval | ICR^2 | NQ Score0.9 | 7 |