Fast and Accurate Deep Network Learning by Exponential Linear Units (ELUs)
Djork-Arné Clevert
and
Thomas Unterthiner
and
Sepp Hochreiter
arXiv e-Print archive - 2015 via Local arXiv
Keywords:
cs.LG
First published: 2015/11/23 (9 years ago) Abstract: We introduce the "exponential linear unit" (ELU) which speeds up learning in
deep neural networks and leads to higher classification accuracies. Like
rectified linear units (ReLUs), leaky ReLUs (LReLUs) and parametrized ReLUs
(PReLUs), ELUs alleviate the vanishing gradient problem via the identity for
positive values. However, ELUs have improved learning characteristics compared
to the units with other activation functions. In contrast to ReLUs, ELUs have
negative values which allows them to push mean unit activations closer to zero
like batch normalization but with lower computational complexity. Mean shifts
toward zero speed up learning by bringing the normal gradient closer to the
unit natural gradient because of a reduced bias shift effect. While LReLUs and
PReLUs have negative values, too, they do not ensure a noise-robust
deactivation state. ELUs saturate to a negative value with smaller inputs and
thereby decrease the forward propagated variation and information. Therefore,
ELUs code the degree of presence of particular phenomena in the input, while
they do not quantitatively model the degree of their absence. In experiments,
ELUs lead not only to faster learning, but also to significantly better
generalization performance than ReLUs and LReLUs on networks with more than 5
layers. On CIFAR-100 ELUs networks significantly outperform ReLU networks with
batch normalization while batch normalization does not improve ELU networks.
ELU networks are among the top 10 reported CIFAR-10 results and yield the best
published result on CIFAR-100, without resorting to multi-view evaluation or
model averaging. On ImageNet, ELU networks considerably speed up learning
compared to a ReLU network with the same architecture, obtaining less than 10%
classification error for a single crop, single model network.