Compelling ReLU Network Initialization and Training to Leverage Exponential Scaling with Depth
- URL: http://arxiv.org/abs/2311.18022v3
- Date: Sat, 1 Jun 2024 23:19:21 GMT
- Title: Compelling ReLU Network Initialization and Training to Leverage Exponential Scaling with Depth
- Authors: Max Milkert, David Hyde, Forrest Laine,
- Abstract summary: A neural network with ReLU activations may be viewed as a composition of piecewise linear functions.
We introduce a novel training strategy that forces the network to display a number of activation patterns exponential in depth.
This approach allows us to learn approximations of convex one-dimensional functions that are several orders of magnitude more accurate than their randomly counterparts.
- Score: 1.7205106391379021
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: A neural network with ReLU activations may be viewed as a composition of piecewise linear functions. For such networks, the number of distinct linear regions expressed over the input domain has the potential to scale exponentially with depth, but it is not expected to do so when the initial parameters are chosen randomly. This poor scaling can necessitate the use of overly large models to approximate even simple functions. To address this issue, we introduce a novel training strategy: we first reparameterize the network weights in a manner that forces the network to display a number of activation patterns exponential in depth. Training first on our derived parameters provides an initial solution that can later be refined by directly updating the underlying model weights. This approach allows us to learn approximations of convex, one-dimensional functions that are several orders of magnitude more accurate than their randomly initialized counterparts.
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