English

A Sample Complexity Measure with Applications to Learning Optimal Auctions

Computer Science and Game Theory 2017-04-18 v2 Machine Learning Statistics Theory Statistics Theory

Abstract

We introduce a new sample complexity measure, which we refer to as split-sample growth rate. For any hypothesis HH and for any sample SS of size mm, the split-sample growth rate τ^H(m)\hat{\tau}_H(m) counts how many different hypotheses can empirical risk minimization output on any sub-sample of SS of size m/2m/2. We show that the expected generalization error is upper bounded by O(log(τ^H(2m))m)O\left(\sqrt{\frac{\log(\hat{\tau}_H(2m))}{m}}\right). Our result is enabled by a strengthening of the Rademacher complexity analysis of the expected generalization error. We show that this sample complexity measure, greatly simplifies the analysis of the sample complexity of optimal auction design, for many auction classes studied in the literature. Their sample complexity can be derived solely by noticing that in these auction classes, ERM on any sample or sub-sample will pick parameters that are equal to one of the points in the sample.

Keywords

Cite

@article{arxiv.1704.02598,
  title  = {A Sample Complexity Measure with Applications to Learning Optimal Auctions},
  author = {Vasilis Syrgkanis},
  journal= {arXiv preprint arXiv:1704.02598},
  year   = {2017}
}
R2 v1 2026-06-22T19:12:07.146Z