Towards Understanding Learning in Neural Networks with Linear Teachers
- URL: http://arxiv.org/abs/2101.02533v1
- Date: Thu, 7 Jan 2021 13:21:24 GMT
- Title: Towards Understanding Learning in Neural Networks with Linear Teachers
- Authors: Roei Sarussi, Alon Brutzkus, Amir Globerson
- Abstract summary: We prove that SGD globally optimize this learning problem for a two-layer network with Leaky ReLU activations.
We provide theoretical support for this phenomenon by proving that if network weights converge to two weight clusters, this will imply an approximately linear decision boundary.
- Score: 31.849269592822296
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Can a neural network minimizing cross-entropy learn linearly separable data?
Despite progress in the theory of deep learning, this question remains
unsolved. Here we prove that SGD globally optimizes this learning problem for a
two-layer network with Leaky ReLU activations. The learned network can in
principle be very complex. However, empirical evidence suggests that it often
turns out to be approximately linear. We provide theoretical support for this
phenomenon by proving that if network weights converge to two weight clusters,
this will imply an approximately linear decision boundary. Finally, we show a
condition on the optimization that leads to weight clustering. We provide
empirical results that validate our theoretical analysis.
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