Litcius/Paper detail

Rethinking Weight Decay for Efficient Neural Network Pruning

Hugo Tessier, Vincent Gripon, Mathieu Léonardon, Matthieu Arzel, Thomas Hannagan, D. Bertrand

2022Journal of Imaging27 citationsDOIOpen Access PDF

Abstract

Introduced in the late 1980s for generalization purposes, pruning has now become a staple for compressing deep neural networks. Despite many innovations in recent decades, pruning approaches still face core issues that hinder their performance or scalability. Drawing inspiration from early work in the field, and especially the use of weight decay to achieve sparsity, we introduce Selective Weight Decay (SWD), which carries out efficient, continuous pruning throughout training. Our approach, theoretically grounded on Lagrangian smoothing, is versatile and can be applied to multiple tasks, networks, and pruning structures. We show that SWD compares favorably to state-of-the-art approaches, in terms of performance-to-parameters ratio, on the CIFAR-10, Cora, and ImageNet ILSVRC2012 datasets.

Topics & Concepts

PruningComputer scienceScalabilityGeneralizationArtificial neural networkSmoothingArtificial intelligenceDeep neural networksMachine learningFace (sociological concept)Field (mathematics)MathematicsSocial scienceMathematical analysisDatabaseAgronomyPure mathematicsBiologySociologyComputer visionAdvanced Neural Network ApplicationsDomain Adaptation and Few-Shot LearningHuman Pose and Action Recognition