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M-RAG: Reinforcing Large Language Model Performance through Retrieval-Augmented Generation with Multiple Partitions

Zheng Wang, Shu Mei Teo, Jieer Ouyang, Yongjun Xu, Wei Shi

202421 citationsDOIOpen Access PDF

Abstract

Retrieval-Augmented Generation (RAG) enhances Large Language Models (LLMs) by retrieving relevant memories from an external database.However, existing RAG methods typically organize all memories in a whole database, potentially limiting focus on crucial memories and introducing noise.In this paper, we introduce a multiple partition paradigm for RAG (called M-RAG), where each database partition serves as a basic unit for RAG execution.Based on this paradigm, we propose a novel framework that leverages LLMs with Multi-Agent Reinforcement Learning to optimize different language generation tasks explicitly.Through comprehensive experiments conducted on seven datasets, spanning three language generation tasks and involving three distinct language model architectures, we confirm that M-RAG consistently outperforms various baseline methods, achieving improvements of 11%, 8%, and 12% for text summarization, machine translation, and dialogue generation, respectively.

Topics & Concepts

Computer scienceLanguage modelNatural language processingArtificial intelligenceTopic ModelingNatural Language Processing Techniques
M-RAG: Reinforcing Large Language Model Performance through Retrieval-Augmented Generation with Multiple Partitions | Litcius