Deep Asymmetric Networks with a Set of Node-wise Variant Activation Functions
This work presents deep asymmetric networks with a set of node-wise variant activation functions. The nodes' sensitivities are affected by activation function selections such that the nodes with smaller indices become increasingly more sensitive. As a result, features learned by the nodes are s...
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Zusammenfassung: | This work presents deep asymmetric networks with a set of node-wise variant
activation functions. The nodes' sensitivities are affected by activation
function selections such that the nodes with smaller indices become
increasingly more sensitive. As a result, features learned by the nodes are
sorted by the node indices in the order of their importance. Asymmetric
networks not only learn input features but also the importance of those
features. Nodes of lesser importance in asymmetric networks can be pruned to
reduce the complexity of the networks, and the pruned networks can be retrained
without incurring performance losses. We validate the feature-sorting property
using both shallow and deep asymmetric networks as well as deep asymmetric
networks transferred from famous networks. |
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DOI: | 10.48550/arxiv.1809.03721 |