Robust Implicit Networks via Non-Euclidean Contractions
Saber Jafarpour, Alexander Davydov, Anton V. Proskurnikov, Francesco, Bullo

TL;DR
This paper introduces NEMON, a framework for designing robust implicit neural networks using non-Euclidean contraction theory, improving stability, accuracy, and robustness in image classification tasks.
Contribution
The paper proposes a novel non-Euclidean contraction-based framework for well-posed implicit networks, including new conditions, an average iteration, and regularization techniques.
Findings
Improved accuracy on MNIST and CIFAR-10 datasets.
Enhanced robustness with smaller input-output Lipschitz bounds.
Faster convergence of fixed-point computations.
Abstract
Implicit neural networks, a.k.a., deep equilibrium networks, are a class of implicit-depth learning models where function evaluation is performed by solving a fixed point equation. They generalize classic feedforward models and are equivalent to infinite-depth weight-tied feedforward networks. While implicit models show improved accuracy and significant reduction in memory consumption, they can suffer from ill-posedness and convergence instability. This paper provides a new framework, which we call Non-Euclidean Monotone Operator Network (NEMON), to design well-posed and robust implicit neural networks based upon contraction theory for the non-Euclidean norm . Our framework includes (i) a novel condition for well-posedness based on one-sided Lipschitz constants, (ii) an average iteration for computing fixed-points, and (iii) explicit estimates on input-output Lipschitz…
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Taxonomy
TopicsModel Reduction and Neural Networks · Adversarial Robustness in Machine Learning · Advancements in Semiconductor Devices and Circuit Design
