标签:Functions computational sigmoid centered Activation when ReLU zero
Sigmoid
Sigmoids saturate and kill gradients.
Sigmoid outputs are not zero-centered.
Exponential function is a little computational expensive.
Tanh
Kill gradients when saturated.
It's zero-centered! : )
ReLU
Does not saturate. ( in positive region)
Very computational efficient.
Converges much faster than sigmoid/tanh in practice. (6 times)
Seems more biologically plausible than sigmoid.
BUT!
Not zero-centered.
No gradient when x<0.
Take care of learning rate when using ReLU.
Leakly ReLU
Does not saturate.
Very computational efficient.
Converges much faster than sigmoid/tanh in practice. (6 times)
will not "die"
Parametric ReLU
Exponential Linear Unit
标签:Functions,computational,sigmoid,centered,Activation,when,ReLU,zero 来源: https://www.cnblogs.com/hizhaolei/p/10623472.html
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