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Diametrical Risk Minimization: theory and computations
by
Royset, Johannes O.
, Norton, Matthew D.
in
Algorithms
/ Artificial Intelligence
/ Computer Science
/ Control
/ Empirical analysis
/ Hypotheses
/ Machine Learning
/ Mechatronics
/ Natural Language Processing (NLP)
/ Neural networks
/ Optimization
/ Risk
/ Robotics
/ Simulation and Modeling
/ Special Issue on Robust Machine Learning
2023
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Diametrical Risk Minimization: theory and computations
by
Royset, Johannes O.
, Norton, Matthew D.
in
Algorithms
/ Artificial Intelligence
/ Computer Science
/ Control
/ Empirical analysis
/ Hypotheses
/ Machine Learning
/ Mechatronics
/ Natural Language Processing (NLP)
/ Neural networks
/ Optimization
/ Risk
/ Robotics
/ Simulation and Modeling
/ Special Issue on Robust Machine Learning
2023
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Do you wish to request the book?
Diametrical Risk Minimization: theory and computations
by
Royset, Johannes O.
, Norton, Matthew D.
in
Algorithms
/ Artificial Intelligence
/ Computer Science
/ Control
/ Empirical analysis
/ Hypotheses
/ Machine Learning
/ Mechatronics
/ Natural Language Processing (NLP)
/ Neural networks
/ Optimization
/ Risk
/ Robotics
/ Simulation and Modeling
/ Special Issue on Robust Machine Learning
2023
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Journal Article
Diametrical Risk Minimization: theory and computations
2023
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Overview
The theoretical and empirical performance of Empirical Risk Minimization (ERM) often suffers when loss functions are poorly behaved with large Lipschitz moduli and spurious sharp minimizers. We propose and analyze a counterpart to ERM called Diametrical Risk Minimization (DRM), which accounts for worst-case empirical risks within neighborhoods in parameter space. DRM has generalization bounds that are independent of Lipschitz moduli for convex as well as nonconvex problems and it can be implemented using a practical algorithm based on stochastic gradient descent. Numerical results illustrate the ability of DRM to find quality solutions with low generalization error in sharp empirical risk landscapes from benchmark neural network classification problems with corrupted labels.
Publisher
Springer US,Springer Nature B.V
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