Litcius/Paper detail

Padé Activation Units: End-to-end Learning of Flexible Activation Functions in Deep Networks

Alejandro Molina, Patrick Schramowski, Kristian Kersting

2020International Conference on Learning Representations20 citations

Abstract

The performance of deep network learning strongly depends on the choice of the non-linear activation function associated with each neuron. However, deciding on the best activation is non-trivial and the choice depends on the architecture, hyper-parameters, and even on the dataset. Typically these activations are fixed by hand before training. Here, we demonstrate how to eliminate the reliance on first picking fixed activation functions by using flexible parametric rational functions instead. The resulting Pade Activation Units (PAUs) can both approximate common activation functions and also learn new ones while providing compact representations. Our empirical evidence shows that end-to-end learning deep networks with PAUs can increase the predictive performance. Moreover, PAUs pave the way to approximations with provable robustness.

Topics & Concepts

Robustness (evolution)Parametric statisticsActivation functionPadé approximantComputer scienceEnd-to-end principleRational functionDeep learningArtificial intelligenceControl theory (sociology)Artificial neural networkMathematicsApplied mathematicsPure mathematicsChemistryGeneBiochemistryStatisticsControl (management)Domain Adaptation and Few-Shot LearningAdvanced Neural Network ApplicationsAdversarial Robustness in Machine Learning
Padé Activation Units: End-to-end Learning of Flexible Activation Functions in Deep Networks | Litcius