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Model-agnostic Selective Labeling with Provable Statistical Guarantees

Machine Learning 2026-02-17 v3 Artificial Intelligence

Abstract

Obtaining high-quality labels for large datasets is expensive, requiring massive annotations from human experts. While AI models offer a cost-effective alternative by predicting labels, their label quality is compromised by the unavoidable labeling errors. Existing methods mitigate this issue through selective labeling, where AI labels a subset and human labels the remainder. However, these methods lack theoretical guarantees on the quality of AI-assigned labels, often resulting in unacceptably high labeling error within the AI-labeled subset. To address this, we introduce \textbf{Conformal Labeling}, a novel method to identify instances where AI predictions can be provably trusted. This is achieved by controlling the false discovery rate (FDR), the proportion of incorrect labels within the selected subset. In particular, we construct a conformal pp-value for each test instance by comparing AI models' predicted confidence to those of calibration instances mislabeled by AI models. Then, we select test instances whose pp-values are below a data-dependent threshold, certifying AI models' predictions as trustworthy. We provide theoretical guarantees that Conformal Labeling controls the FDR below the nominal level, ensuring that a predefined fraction of AI-assigned labels is correct on average. Extensive experiments demonstrate that our method achieves tight FDR control with high power across various tasks, including image and text labeling, and LLM QA.

Keywords

Cite

@article{arxiv.2510.14581,
  title  = {Model-agnostic Selective Labeling with Provable Statistical Guarantees},
  author = {Huipeng Huang and Wenbo Liao and Huajun Xi and Hao Zeng and Mengchen Zhao and Hongxin Wei},
  journal= {arXiv preprint arXiv:2510.14581},
  year   = {2026}
}
R2 v1 2026-07-01T06:41:05.313Z