Adaptive Sampling for Convex Regression
Abstract
In this paper, we introduce the first principled adaptive-sampling procedure for learning a convex function in the norm, a problem that arises often in the behavioral and social sciences. We present a function-specific measure of complexity and use it to prove that, for each convex function , our algorithm nearly attains the information-theoretically optimal, function-specific error rate. We also corroborate our theoretical contributions with numerical experiments, finding that our method substantially outperforms passive, uniform sampling for favorable synthetic and data-derived functions in low-noise settings with large sampling budgets. Our results also suggest an idealized "oracle strategy", which we use to gauge the potential advance of any adaptive-sampling strategy over passive sampling, for any given convex function.
Cite
@article{arxiv.1808.04523,
title = {Adaptive Sampling for Convex Regression},
author = {Max Simchowitz and Kevin Jamieson and Jordan W. Suchow and Thomas L. Griffiths},
journal= {arXiv preprint arXiv:1808.04523},
year = {2018}
}