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MARS: Multi-Agent Adaptive Reasoning with Socratic Guidance for Automated Prompt Optimization

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Large language models (LLMs) typically operate in a question-answering paradigm, where the quality of the input prompt critically affects the response. Automated Prompt Optimization (APO) aims to overcome the cognitive biases of manually crafted prompts and explore a broader prompt design space. However, existing APO methods often suffer from rigid template structures and inefficient exploration in the prompt space. To this end, we propose a Multi-Agent Adaptive Reasoning with Socratic guidance framework (MARS) for APO. MARS consists of five complementary agents and formulates the optimization process as a Partially Observable Markov Decision Process (POMDP), enabling adaptive prompt refinement through explicit state modeling and interactive feedback. Specifically, a Planner agent generates flexible optimization trajectories, a Teacher-Critic-Student triad engages in Socratic-style dialogue to iteratively optimize the prompt based on pseudo-gradient signals in the text space, and a Target agent executes the prompt in downstream tasks to provide performance feedback. MARS integrates reasoning, feedback, and state transition into a unified hidden-state evolution process, improving both the effectiveness and interpretability of optimization. Extensive experiments on multiple datasets demonstrate that MARS outperforms existing APO methods in terms of optimization performance, search efficiency, and interpretability.

Jian Zhang, Zhangqi Wang, Haiping Zhu, Kangda Cheng, Kai He, Bo Li, Qika Lin, Jun Liu, Erik Cambria• 2025

Related benchmarks

TaskDatasetResultRank
ReasoningBBH
Accuracy77.22
672
Mathematical ReasoningAQUA-RAT
Accuracy89.15
120
Prompt Optimization EvaluationHelpSteer 1
Helpfulness41.59
14
Prompt Optimization EvaluationHelpSteer2
Helpfulness0.4791
14
Multi-task Language UnderstandingMMLU & MMLU-Pro
Accuracy74.27
10
ReasoningAGIEval
AGIEval Reasoning Accuracy45.33
10
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