资源论文Noisy Activation Functions

Noisy Activation Functions

2020-03-05 | |  56 |   41 |   0

Abstract

Common nonlinear activation functions used in neural networks can cause training difficulties due to the saturation behavior of the activation function, which may hide dependencies that are not visible to vanilla-SGD (using first order gradients only). Gating mechanisms that use softly saturating activation functions to emulate the discrete switching of digital logic circuits ar good examples of this. We propose to exploit the injection of appropriate noise so that the gradient may flow easily, even if the noiseless application the activation function would yield zero gradients. Large noise will dominate the noise-free gradient and allow stochastic gradient descent to explore more. By adding noise only to the problematic parts of the activation function, we allow the optimization procedure to explore the boundary between the degenerate (saturating) and the well-behaved parts of the activation function. We also establish connections to simulated annealing, when the amount of noise is annealed down, making it easier to optimize hard objective functions. We find experimentally that replacing such saturating activation functions by noisy variants helps optimization in many contexts, yielding state-of-the-art or competitive results on differen datasets and task, especially when training seems to be the most difficult, e.g., when curriculum learning is necessary to obtain good results.

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