Globally Optimal Training of Neural Networks with Threshold Activation
Functions
- URL: http://arxiv.org/abs/2303.03382v1
- Date: Mon, 6 Mar 2023 18:59:13 GMT
- Title: Globally Optimal Training of Neural Networks with Threshold Activation
Functions
- Authors: Tolga Ergen, Halil Ibrahim Gulluk, Jonathan Lacotte, Mert Pilanci
- Abstract summary: We study weight decay regularized training problems of deep neural networks with threshold activations.
We derive a simplified convex optimization formulation when the dataset can be shattered at a certain layer of the network.
- Score: 63.03759813952481
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Threshold activation functions are highly preferable in neural networks due
to their efficiency in hardware implementations. Moreover, their mode of
operation is more interpretable and resembles that of biological neurons.
However, traditional gradient based algorithms such as Gradient Descent cannot
be used to train the parameters of neural networks with threshold activations
since the activation function has zero gradient except at a single
non-differentiable point. To this end, we study weight decay regularized
training problems of deep neural networks with threshold activations. We first
show that regularized deep threshold network training problems can be
equivalently formulated as a standard convex optimization problem, which
parallels the LASSO method, provided that the last hidden layer width exceeds a
certain threshold. We also derive a simplified convex optimization formulation
when the dataset can be shattered at a certain layer of the network. We
corroborate our theoretical results with various numerical experiments.
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