AI RESEARCH

Training the Knowledge Base through Evidence Distillation and Write-Back Enrichment

arXiv CS.AI

ArXi:2603.25737v1 Announce Type: new The knowledge base in a retrieval-augmented generation (RAG) system is typically assembled once and never revised, even though the facts a query requires are often fragmented across documents and buried in irrelevant content. We argue that the knowledge base should be treated as a trainable component and propose WriteBack-RAG, a framework that uses labeled examples to identify where retrieval succeeds, isolate the relevant documents, and distill them into compact knowledge units that are indexed alongside the original corpus.