Graph explorer

Aggregated Hold-Out

Aggregated hold-out (Agghoo) is a method which averages learning rules selected by hold-out (that is, cross-validation with a single split). We provide the first theoretical guarantees on Agghoo, ensuring that it can be used safely: Agghoo performs at worst like the hold-out when the risk is convex. The same holds true in classification with the 0-1 risk, with an additional constant factor. For the hold-out, oracle inequalities are known for bounded losses, as in binary classification. We show that similar results can be proved, under appropriate assumptions, for other risk-minimization problems. In particular, we obtain an oracle inequality for regularized kernel regression with a Lip-schitz loss, without requiring that the Y variable or the regressors be bounded. Numerical experiments show that aggregation brings a significant improvement over the hold-out and that Agghoo is competitive with cross-validation.

8 nodes10 linksoverview previewAggregated Hold-Out
8 nodes10 links
Aggregated Hold-Out8 visible / 8 total nodes / 13 links
Related contextRelated contextRelated contextCo-authorshipCo-authorshipCo-authorshipAuthorshipAuthorshipAuthorshipTopic signalTopic signalTopic signalTopic signalWAggregated Hold-Outpreprint / 2019AGuillaume MaillardResearcherASylvain ArlotResearcherAMatthieu LerasleResearcherTMachine Learning49008 worksTMethodology5119 worksTmath.ST3384 worksTStatistics Theory3281 works
PaperSignal 107 links

Aggregated Hold-Out

preprint / 2019

Open