English

From learnable objects to learnable random objects

Logic in Computer Science 2025-05-28 v2 Machine Learning Logic

Abstract

We consider the relationship between learnability of a "base class" of functions on a set XX, and learnability of a class of statistical functions derived from the base class. For example, we refine results showing that learnability of a family hp:pYh_p: p \in Y of functions implies learnability of the family of functions hμ=λp:Y.Eμ(hp)h_\mu=\lambda p: Y. E_\mu(h_p), where EμE_\mu is the expectation with respect to μ\mu, and μ\mu ranges over probability distributions on XX. We will look at both Probably Approximately Correct (PAC) learning, where example inputs and outputs are chosen at random, and online learning, where the examples are chosen adversarily. For agnostic learning, we establish improved bounds on the sample complexity of learning for statistical classes, stated in terms of combinatorial dimensions of the base class. We connect these problems to techniques introduced in model theory for "randomizing a structure". We also provide counterexamples for realizable learning, in both the PAC and online settings.

Keywords

Cite

@article{arxiv.2504.00847,
  title  = {From learnable objects to learnable random objects},
  author = {Aaron Anderson and Michael Benedikt},
  journal= {arXiv preprint arXiv:2504.00847},
  year   = {2025}
}