Optimal Learning
Peter Binev, Andrea Bonito, Ronald DeVore, and Guergana Petrova

TL;DR
This paper demonstrates that over-parameterized learning with suitable loss functions can achieve near-optimal approximation of unknown functions from data, providing quantitative bounds and extending results to noisy data scenarios.
Contribution
It establishes theoretical guarantees for over-parameterized models to attain near-optimal function recovery, including bounds and noise robustness.
Findings
Over-parameterization leads to near-optimal function approximation.
Quantitative bounds on over-parameterization and penalization are provided.
Results extend to deterministic noise in data.
Abstract
This paper studies the problem of learning an unknown function from given data about . The learning problem is to give an approximation to that predicts the values of away from the data. There are numerous settings for this learning problem depending on (i) what additional information we have about (known as a model class assumption), (ii) how we measure the accuracy of how well predicts , (iii) what is known about the data and data sites, (iv) whether the data observations are polluted by noise. A mathematical description of the optimal performance possible (the smallest possible error of recovery) is known in the presence of a model class assumption. Under standard model class assumptions, it is shown in this paper that a near optimal can be found by solving a certain discrete over-parameterized optimization problem with a penalty term.…
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Taxonomy
TopicsMachine Learning and Algorithms · Statistical Methods and Inference · Machine Learning and Data Classification
