Neural tangent kernel: convergence and generalization in neural networks (invited paper)
Arthur Paul Jacot, Franck Gabriel, Clément Hongler
Abstract
The Neural Tangent Kernel is a new way to understand the gradient descent in deep neural networks, connecting them with kernel methods. In this talk, I'll introduce this formalism and give a number of results on the Neural Tangent Kernel and explain how they give us insight into the dynamics of neural networks during training and into their generalization features.
Topics & Concepts
Artificial neural networkGeneralizationTangentKernel (algebra)Computer scienceGradient descentArtificial intelligenceKernel methodConvergence (economics)MathematicsPure mathematicsMathematical analysisGeometrySupport vector machineEconomicsEconomic growthNeural Networks and Applications