MARS: toward more efficient multi-agent collaboration for LLM reasoning
By: Xiao Wang , Jia Wang , Yijie Wang and more
Potential Business Impact:
Makes AI think better, faster, and cheaper.
Large language models (LLMs) have achieved impressive results in natural language understanding, yet their reasoning capabilities remain limited when operating as single agents. Multi-Agent Debate (MAD) has been proposed to address this limitation by enabling collaborative reasoning among multiple models in a round-table debate manner. While effective, MAD introduces substantial computational overhead due to the number of agents involved and the frequent communication required. In this paper, we propose MARS (Multi-Agent Review System), a role-based collaboration framework inspired by the review process. In MARS, an author agent generates an initial solution, reviewer agents provide decisions and comments independently, and a meta-reviewer integrates the feedback to make the final decision and guide further revision. This design enhances reasoning quality while avoiding costly reviewer-to-reviewer interactions, thereby controlling token consumption and inference time. We compared MARS with both MAD and other state-of-the-art reasoning strategies across multiple benchmarks. Extensive experiments with different LLMs show that MARS matches the accuracy of MAD while reducing both token usage and inference time by approximately 50\%. Code is available at https://github.com/xwang97/MARS.
Similar Papers
MARS: Optimizing Dual-System Deep Research via Multi-Agent Reinforcement Learning
Artificial Intelligence
Helps computers think faster and learn new things.
MARS: Reinforcing Multi-Agent Reasoning of LLMs through Self-Play in Strategic Games
Artificial Intelligence
Teaches AI to work together and win games.
MARS: Multi-Agent Robotic System with Multimodal Large Language Models for Assistive Intelligence
Robotics
Helps robots help people safely in their homes.