Agent-Pro: Learning to Evolve via Policy-Level Reflection and Optimization
Abstract
Large Language Models (LLMs) exhibit robust problem-solving capabilities for diverse tasks. However, most LLM-based agents are designed as specific task solvers with sophisticated prompt engineering, rather than agents capable of learning and evolving through interactions. These task solvers necessitate manually crafted prompts to inform task rules and regulate LLM behaviors, inherently incapacitating to address complex dynamic scenarios e.g., large interactive games. In light of this, we propose Agent-Pro: an LLM-based Agent with Policy-level Reflection and Optimization that can learn a wealth of expertise from interactive experiences and progressively elevate its behavioral policy. Specifically, it involves a dynamic belief generation and reflection process for policy evolution. Rather than action-level reflection, Agent-Pro iteratively reflects on past trajectories and beliefs, "fine-tuning" its irrational beliefs for a better policy. Moreover, a depth-first search is employed for policy optimization, ensuring continual enhancement in policy payoffs. Agent-Pro is evaluated across two games: Blackjack and Texas Hold’em, outperforming vanilla LLM and specialized models. Our results show Agent-Pro can learn and evolve in complex and dynamic scenes, which also benefits numerous LLM-based applications.
Cite
Text
Zhang et al. "Agent-Pro: Learning to Evolve via Policy-Level Reflection and Optimization." ICLR 2024 Workshops: LLMAgents, 2024.Markdown
[Zhang et al. "Agent-Pro: Learning to Evolve via Policy-Level Reflection and Optimization." ICLR 2024 Workshops: LLMAgents, 2024.](https://mlanthology.org/iclrw/2024/zhang2024iclrw-agentpro/)BibTeX
@inproceedings{zhang2024iclrw-agentpro,
title = {{Agent-Pro: Learning to Evolve via Policy-Level Reflection and Optimization}},
author = {Zhang, Wenqi and Tang, Ke and Wu, Hai and Wang, Mengna and Shen, Yongliang and Hou, Guiyang and Tan, Zeqi and Li, Peng and Zhuang, Yueting and Lu, Weiming},
booktitle = {ICLR 2024 Workshops: LLMAgents},
year = {2024},
url = {https://mlanthology.org/iclrw/2024/zhang2024iclrw-agentpro/}
}