Litcius/Paper detail

Theory of the Frequency Principle for General Deep Neural Networks

T. Luo, Zheng Ma Zheng, Zhi-Qin John Xu Zhi-Qin John Xu, Yaoyu Zhang

2021CSIAM Transactions on Applied Mathematics38 citationsDOIOpen Access PDF

Abstract

Along with fruitful applications of Deep Neural Networks (DNNs) to realistic problems, recently, some empirical studies of DNNs reported a universal phenomenon of Frequency Principle (F-Principle): a DNN tends to learn a target function from low to high frequencies during the training. The F-Principle has been very useful in providing both qualitative and quantitative understandings of DNNs. In this paper, we rigorously investigate the F-Principle for the training dynamics of a general DNN at three stages: initial stage, intermediate stage, and final stage. For each stage, a theorem is provided in terms of proper quantities characterizing the F-Principle. Our results are general in the sense that they work for multilayer networks with general activation functions, population densities of data, and a large class of loss functions. Our work lays a theoretical foundation of the F-Principle for a better understanding of the training process of DNNs.

Topics & Concepts

Class (philosophy)Computer scienceArtificial neural networkProcess (computing)PopulationFunction (biology)General theoryArtificial intelligenceCalculus (dental)Applied mathematicsMathematicsMathematical economicsDemographySociologyOperating systemMedicineDentistryBiologyEvolutionary biologyNeural Networks and ApplicationsStatistical Mechanics and EntropyMachine Learning in Materials Science