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Q-RAG: Long Context Multi-step Retrieval via Value-based Embedder Training

Published: November 10, 2025 | arXiv ID: 2511.07328v1

By: Artyom Sorokin , Nazar Buzun , Alexander Anokhin and more

Potential Business Impact:

Helps computers answer hard questions by searching more.

Business Areas:
Semantic Search Internet Services

Retrieval-Augmented Generation (RAG) methods enhance LLM performance by efficiently filtering relevant context for LLMs, reducing hallucinations and inference cost. However, most existing RAG methods focus on single-step retrieval, which is often insufficient for answering complex questions that require multi-step search. Recently, multi-step retrieval approaches have emerged, typically involving the fine-tuning of small LLMs to perform multi-step retrieval. This type of fine-tuning is highly resource-intensive and does not enable the use of larger LLMs. In this work, we propose Q-RAG, a novel approach that fine-tunes the Embedder model for multi-step retrieval using reinforcement learning (RL). Q-RAG offers a competitive, resource-efficient alternative to existing multi-step retrieval methods for open-domain question answering and achieves state-of-the-art results on the popular long-context benchmarks Babilong and RULER for contexts up to 10M tokens.

Page Count
16 pages

Category
Computer Science:
Machine Learning (CS)