Benign Overfitting in Multiclass Classification: All Roads Lead to Interpolation

06/21/2021
by   Ke Wang, et al.
0

The growing literature on "benign overfitting" in overparameterized models has been mostly restricted to regression or binary classification settings; however, most success stories of modern machine learning have been recorded in multiclass settings. Motivated by this discrepancy, we study benign overfitting in multiclass linear classification. Specifically, we consider the following popular training algorithms on separable data: (i) empirical risk minimization (ERM) with cross-entropy loss, which converges to the multiclass support vector machine (SVM) solution; (ii) ERM with least-squares loss, which converges to the min-norm interpolating (MNI) solution; and, (iii) the one-vs-all SVM classifier. First, we provide a simple sufficient condition under which all three algorithms lead to classifiers that interpolate the training data and have equal accuracy. When the data is generated from Gaussian mixtures or a multinomial logistic model, this condition holds under high enough effective overparameterization. Second, we derive novel error bounds on the accuracy of the MNI classifier, thereby showing that all three training algorithms lead to benign overfitting under sufficient overparameterization. Ultimately, our analysis shows that good generalization is possible for SVM solutions beyond the realm in which typical margin-based bounds apply.

READ FULL TEXT
research
11/18/2020

Benign Overfitting in Binary Classification of Gaussian Mixtures

Deep neural networks generalize well despite being exceedingly overparam...
research
04/28/2021

Risk Bounds for Over-parameterized Maximum Margin Classification on Sub-Gaussian Mixtures

Modern machine learning systems such as deep neural networks are often h...
research
05/16/2020

Classification vs regression in overparameterized regimes: Does the loss function matter?

We compare classification and regression tasks in the overparameterized ...
research
03/02/2021

Label-Imbalanced and Group-Sensitive Classification under Overparameterization

Label-imbalanced and group-sensitive classification seeks to appropriate...
research
06/16/2022

Max-Margin Works while Large Margin Fails: Generalization without Uniform Convergence

A major challenge in modern machine learning is theoretically understand...
research
11/06/2015

Neutralized Empirical Risk Minimization with Generalization Neutrality Bound

Currently, machine learning plays an important role in the lives and ind...
research
08/08/2019

Optimal multiclass overfitting by sequence reconstruction from Hamming queries

A primary concern of excessive reuse of test datasets in machine learnin...

Please sign up or login with your details

Forgot password? Click here to reset