The Confidence Dichotomy: Analyzing and Mitigating Miscalibration in Tool-Use Agents
Abstract
Tool-integrated language model agents exhibit different calibration behaviors based on tool type, with a reinforcement learning framework improving both task accuracy and reliable uncertainty estimation across diverse domains.
Autonomous agents based on large language models (LLMs) are rapidly evolving to handle multi-turn tasks, but ensuring their trustworthiness remains a critical challenge. A fundamental pillar of this trustworthiness is calibration, which refers to an agent's ability to express confidence that reliably reflects its actual performance. While calibration is well-established for static models, its dynamics in tool-integrated agentic workflows remain underexplored. In this work, we systematically investigate verbalized calibration in tool-use agents, revealing a fundamental confidence dichotomy driven by tool type. Specifically, our pilot study identifies that evidence tools (e.g., web search) systematically induce severe overconfidence due to inherent noise in retrieved information, while verification tools (e.g., code interpreters) can ground reasoning through deterministic feedback and mitigate miscalibration. To robustly improve calibration across tool types, we propose a reinforcement learning (RL) fine-tuning framework that jointly optimizes task accuracy and calibration, supported by a holistic benchmark of reward designs. We demonstrate that our trained agents not only achieve superior calibration but also exhibit robust generalization from local training environments to noisy web settings and to distinct domains such as mathematical reasoning. Our results highlight the necessity of domain-specific calibration strategies for tool-use agents. More broadly, this work establishes a foundation for building self-aware agents that can reliably communicate uncertainty in high-stakes, real-world deployments.
Community
We reveal a "confidence dichotomy" in tool-use LLM agents, finding that evidence tools like web search systematically induce overconfidence due to noisy retrieval, while verification tools like code interpreters help ground reasoning and reduce miscalibration. To address this, we propose Calibration Agentic RL (CAR), a reinforcement learning framework that jointly optimizes task accuracy and calibration through a novel reward design, demonstrating significant reductions in calibration error while maintaining competitive performance across different domains and environments.
This is an automated message from the Librarian Bot. I found the following papers similar to this paper.
The following papers were recommended by the Semantic Scholar API
- ET-Agent: Incentivizing Effective Tool-Integrated Reasoning Agent via Behavior Calibration (2026)
- EpiCaR: Knowing What You Don't Know Matters for Better Reasoning in LLMs (2026)
- From Failure to Mastery: Generating Hard Samples for Tool-use Agents (2026)
- LRAS: Advanced Legal Reasoning with Agentic Search (2026)
- SCRIBE: Structured Mid-Level Supervision for Tool-Using Language Models (2026)
- GRACE: Reinforcement Learning for Grounded Response and Abstention under Contextual Evidence (2026)
- Dr. Zero: Self-Evolving Search Agents without Training Data (2026)
Please give a thumbs up to this comment if you found it helpful!
If you want recommendations for any Paper on Hugging Face checkout this Space
You can directly ask Librarian Bot for paper recommendations by tagging it in a comment:
@librarian-bot
recommend
Models citing this paper 0
No model linking this paper
Datasets citing this paper 0
No dataset linking this paper
Spaces citing this paper 0
No Space linking this paper