cs.AI updates on arXiv.org 07月09日 12:02
Adaptive Tool Use in Large Language Models with Meta-Cognition Trigger
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文章提出了一种基于元认知的LLMs工具使用决策策略MeCo,通过量化高级认知信号,指导工具调用,有效提升工具使用决策能力,降低延迟与错误。

arXiv:2502.12961v2 Announce Type: replace Abstract: Large language models (LLMs) have shown remarkable emergent capabilities, transforming the execution of functional tasks by leveraging external tools for complex problems that require specialized processing or up-to-date data. While existing research expands LLMs access to diverse tools (e.g., program interpreters, search engines, calculators), the necessity of using these tools is often overlooked, leading to indiscriminate tool invocation. This naive approach raises two key issues: increased latency due to unnecessary tool calls, and potential errors resulting from faulty interactions with external tools. In this paper, we introduce meta-cognition as a proxy for LLMs self-assessment of their capabilities, reflecting the model's awareness of its own limitations. Based on this, we propose MeCo, an adaptive decision-making strategy for external tool use. MeCo quantifies metacognitive scores by capturing high-level cognitive signals in the representation space, guiding when to invoke tools. Notably, MeCo is fine-tuning-free and incurs minimal cost. Experiments across multiple backbone models and benchmarks show that MeCo reliably detects LLMs' internal cognitive signals and significantly improves tool-use decision-making.

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LLMs 工具使用决策 元认知 MeCo
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