Highlight
BERAG: Bayesian Ensemble Retrieval-Augmented Generation for Knowledge-based Visual Question Answering
A framework for retrieval-augmented generation that conditions language models on individual retrieved documents.
Based on
By Jinghong Chen, Jingbiao Mei, Guangyu Yang, Bill ByrnearXiv
Read original article →The paper proposes a new approach to question answering, called BERAG, which uses Bayesian ensemble methods to condition language models on individual documents. This allows for probabilistic re-ranking and clear attribution of document contribution.
The authors evaluate BERAG on knowledge-based visual question answering tasks and demonstrate substantial improvements over standard RAG.
Share
Take the next step
Try CoreModels, talk with our team, or explore more resources.