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360\(^i̧rc\)rea: Towards A Reusable Experience Accumulation With 360ẹg Assessment For Multi-agent System

·2024

Abstract

Large language model agents have demonstrated remarkable advancements across various complex tasks. Recent works focus on optimizing the agent team or employing self-reflection to iteratively solve complex tasks. Since these agents are all based on the same LLM, only conducting self-evaluation or removing underperforming agents does not substantively enhance the capability of the agents. We argue that a comprehensive evaluation and accumulating experience from evaluation feedback is an effective approach to improving system performance. In this paper, we propose Reusable Experience Accumulation with 360^\circ Assessment (360^\circREA), a hierarchical multi-agent framework inspired by corporate organizational practices. The framework employs a novel 360^\circ performance assessment method for multi-perspective performance evaluation with fine-grained assessment. To enhance the capability of agents in addressing complex tasks, we introduce dual-level experience pool for agent

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