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  4. Generalization error in high-dimensional perceptrons: Approaching Bayes error with convex optimization
 
conference paper

Generalization error in high-dimensional perceptrons: Approaching Bayes error with convex optimization

Aubin, Benjamin
•
Krzakala, Florent  
•
Yue, Lu
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2020
Proceeding of the 2020 Advances in Neural Information Processing Systems
Advances in Neural Information Processing Systems

We consider a commonly studied supervised classification of a synthetic dataset whose labels are generated by feeding a one-layer non-linear neural network with random iid inputs. We study the generalization performances of standard classifiers in the high-dimensional regime where α = n d is kept finite in the limit of a high dimension d and number of samples n . Our contribution is three-fold: First, we prove a formula for the generalization error achieved by ℓ 2 regularized classifiers that minimize a convex loss. This formula was first obtained by the heuristic replica method of statistical physics. Secondly, focussing on commonly used loss functions and optimizing the ℓ 2 regularization strength, we observe that while ridge regression performance is poor, logistic and hinge regression are surprisingly able to approach the Bayes-optimal generalization error extremely closely. As α → ∞ they lead to Bayes-optimal rates, a fact that does not follow from predictions of margin-based generalization error bounds. Third, we design an optimal loss and regularizer that provably leads to Bayes-optimal generalization error.

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Type
conference paper
Author(s)
Aubin, Benjamin
Krzakala, Florent  
Yue, Lu
Zdeborová, Lenka  
Date Issued

2020

Publisher

Curran Associates, Inc.

Published in
Proceeding of the 2020 Advances in Neural Information Processing Systems
Series title/Series vol.

Advances in Neural Information Processing Systems; 33

Volume

33

Start page

12199

URL

Paper

https://papers.nips.cc/paper/2020/file/8f4576ad85410442a74ee3a7683757b3-Paper.pdf
Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
IDEPHICS1  
IDEPHICS2  
SPOC1  
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Event nameEvent date
Advances in Neural Information Processing Systems

Dec 6, 2020 – Dec 12, 2020

Available on Infoscience
March 5, 2021
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/175776
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