Publication | Open Access
PLU: The Piecewise Linear Unit Activation Function
21
Citations
2
References
2018
Year
Mathematical ProgrammingConvolutional Neural NetworkEngineeringMachine LearningHyperbolic TangentLinear SystemRecurrent Neural NetworkPiecewise Linear UnitPattern RecognitionSparse Neural NetworkApproximation TheoryContinuous OptimizationComputer ScienceDeep LearningNeural Architecture SearchComputer VisionDeep Neural NetworksGeneralized FunctionCellular Neural NetworkSuccessive Linear Transforms
Successive linear transforms followed by nonlinear "activation" functions can approximate nonlinear functions to arbitrary precision given sufficient layers. The number of necessary layers is dependent on, in part, by the nature of the activation function. The hyperbolic tangent (tanh) has been a favorable choice as an activation until the networks grew deeper and the vanishing gradients posed a hindrance during training. For this reason the Rectified Linear Unit (ReLU) defined by max(0, x) has become the prevailing activation function in deep neural networks. Unlike the tanh function which is smooth, the ReLU yields networks that are piecewise linear functions with a limited number of facets. This paper presents a new activation function, the Piecewise Linear Unit (PLU) that is a hybrid of tanh and ReLU and shown to outperform the ReLU on a variety of tasks while avoiding the vanishing gradients issue of the tanh.
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