Publication | Open Access
Exploring Generalization in Deep Learning
295
Citations
18
References
2017
Year
Artificial IntelligenceNeural Scaling LawEngineeringMachine LearningData ScienceFeature ScalingMachine Learning ModelAi FoundationPac-bayes TheoryData NormalizationComputer ScienceDeep NetworksDeep LearningScale NormalizationSupervised Learning
With a goal of understanding what drives generalization in deep networks, we consider several recently suggested explanations, including norm-based control, sharpness and robustness. We study how these measures can ensure generalization, highlighting the importance of scale normalization, and making a connection between sharpness and PAC-Bayes theory. We then investigate how well the measures explain different observed phenomena.
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