How Retrieved Context Shapes Internal Representations in RAG
This provides insights into RAG system design by examining internal mechanisms rather than just outputs, though it's incremental in focusing on representation analysis.
The researchers investigated how retrieved documents of varying relevance affect the internal representations of large language models in retrieval-augmented generation systems, analyzing hidden states across multiple datasets and models to explain output behaviors.
Retrieval-augmented generation (RAG) enhances large language models (LLMs) by conditioning generation on retrieved external documents, but the effect of retrieved context is often non-trivial. In realistic retrieval settings, the retrieved document set often contains a mixture of documents that vary in relevance and usefulness. While prior work has largely examined these phenomena through output behavior, little is known about how retrieved context shapes the internal representations that mediate information integration in RAG. In this work, we study RAG through the lens of latent representations. We systematically analyze how different types of retrieved documents affect the hidden states of LLMs, and how these internal representation shifts relate to downstream generation behavior. Across four question-answering datasets and three LLMs, we analyze internal representations under controlled single- and multi-document settings. Our results reveal how context relevancy and layer-wise processing influence internal representations, providing explanations on LLMs output behaviors and insights for RAG system design.