SARA: Selective and Adaptive Retrieval-augmented Generation with Context Compression
Abstract
Retrieval-augmented Generation (RAG) extends large language models (LLMs) with external knowledge but faces key challenges: restricted effective context length and redundancy in retrieved documents. Pure compression-based approaches reduce input size but often discard fine-grained details essential for factual accuracy. We propose SARA, a unified RAG framework that balances local precision and global knowledge coverage under tight context budgets. SARA combines natural-language text snippets with semantic compression vectors to jointly enhance context efficiency and answer correctness. It represents contexts at two complementary levels: 1) fine-grained natural-language spans that preserve critical entities and numerical values, and 2) compact, interpretable vectors that summarize high-level semantics. An iterative evidence-selection module employs the compression vectors for dynamic reranking of contexts. Across 9 datasets and 5 open-source LLMs spanning 3 model families (Mistral, Llama, and Gemma), SARA consistently improves answer relevance (+17.71), answer correctness (+13.72), and semantic similarity (+15.53), demonstrating the importance of integrating textual and compressed representations for robust, context-efficient RAG.
Cite
@article{arxiv.2507.05633,
title = {SARA: Selective and Adaptive Retrieval-augmented Generation with Context Compression},
author = {Yiqiao Jin and Kartik Sharma and Vineeth Rakesh and Yingtong Dou and Menghai Pan and Mahashweta Das and Srijan Kumar},
journal= {arXiv preprint arXiv:2507.05633},
year = {2025}
}
Comments
20 pages