MeLA: A Metacognitive LLM-Driven Architecture for Automatic Heuristic Design
MeLA: A Metacognitive LLM-Driven Architecture for Automatic Heuristic Design
This paper introduces MeLA, a Metacognitive LLM-Driven Architecture that presents a new paradigm for Automatic Heuristic Design (AHD). Traditional evolutionary methods operate directly on heuristic code; in contrast, MeLA evolves the instructional prompts used to guide a Large Language Model (LLM) in generating these heuristics. This process of "prompt evolution" is driven by a novel metacognitive framework where the system analyzes performance feedback to systematically refine its generative strategy. MeLA's architecture integrates a problem analyzer to construct an initial strategic prompt, an error diagnosis system to repair faulty code, and a metacognitive search engine that iteratively optimizes the prompt based on heuristic effectiveness. In comprehensive experiments across both benchmark and real-world problems, MeLA consistently generates more effective and robust heuristics, significantly outperforming state-of-the-art methods. Ultimately, this research demonstrates the profound potential of using cognitive science as a blueprint for AI architecture, revealing that by enabling an LLM to metacognitively regulate its problem-solving process, we unlock a more robust and interpretable path to AHD.
Zishang Qiu、Xinan Chen、Long Chen、Ruibin Bai
计算技术、计算机技术
Zishang Qiu,Xinan Chen,Long Chen,Ruibin Bai.MeLA: A Metacognitive LLM-Driven Architecture for Automatic Heuristic Design[EB/OL].(2025-08-03)[2025-08-10].https://arxiv.org/abs/2507.20541.点此复制
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