AI RESEARCH
Multi-Agent Conformal Prediction with Personalized Statistical Validity
arXiv CS.AI
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ArXi:2606.00717v1 Announce Type: cross Uncertainty quantification is essential in high-stakes machine learning tasks. However, one of the principled solutions, conformal prediction, faces challenges under limited local calibration data, privacy constraints, and data heterogeneity. In multi-agent settings, existing works do not simultaneously and satisfactorily address these challenges with guarantees either limited to averages across agents or losing validity in heterogeneous settings.