English

Fundamental Novel Consistency Theory: $H$-Consistency Bounds

Machine Learning 2025-12-30 v1 Machine Learning

Abstract

In machine learning, the loss functions optimized during training often differ from the target loss that defines task performance due to computational intractability or lack of differentiability. We present an in-depth study of the target loss estimation error relative to the surrogate loss estimation error. Our analysis leads to HH-consistency bounds, which are guarantees accounting for the hypothesis set HH. These bounds offer stronger guarantees than Bayes-consistency or HH-calibration and are more informative than excess error bounds. We begin with binary classification, establishing tight distribution-dependent and -independent bounds. We provide explicit bounds for convex surrogates (including linear models and neural networks) and analyze the adversarial setting for surrogates like ρ\rho-margin and sigmoid loss. Extending to multi-class classification, we present the first HH-consistency bounds for max, sum, and constrained losses, covering both non-adversarial and adversarial scenarios. We demonstrate that in some cases, non-trivial HH-consistency bounds are unattainable. We also investigate comp-sum losses (e.g., cross-entropy, MAE), deriving their first HH-consistency bounds and introducing smooth adversarial variants that yield robust learning algorithms. We develop a comprehensive framework for deriving these bounds across various surrogates, introducing new characterizations for constrained and comp-sum losses. Finally, we examine the growth rates of HH-consistency bounds, establishing a universal square-root growth rate for smooth surrogates in binary and multi-class tasks, and analyze minimizability gaps to guide surrogate selection.

Keywords

Cite

@article{arxiv.2512.22880,
  title  = {Fundamental Novel Consistency Theory: $H$-Consistency Bounds},
  author = {Yutao Zhong},
  journal= {arXiv preprint arXiv:2512.22880},
  year   = {2025}
}

Comments

Ph.D. Dissertation, New York University