RESEARCHarXiv CS.AI·5/4/2026
Are Tools All We Need? Unveiling the Tool-Use Tax in LLM Agents
This research challenges the assumption that tool-augmented reasoning always improves LLM performance, showing that it can underperform native CoT due to a "tool-use tax" from the tool-calling protocol, especially with semantic noise. A Factorized Intervention Framework is proposed to analyze this, and G-STEP is introduced as a partial mitigation for protocol-induced errors.
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