Directional convergence and alignment in deep learning
June 11, 2020 ยท Declared Dead ยท ๐ Neural Information Processing Systems
"No code URL or promise found in abstract"
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Authors
Ziwei Ji, Matus Telgarsky
arXiv ID
2006.06657
Category
cs.LG: Machine Learning
Cross-listed
cs.NE,
math.OC,
stat.ML
Citations
206
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
In this paper, we show that although the minimizers of cross-entropy and related classification losses are off at infinity, network weights learned by gradient flow converge in direction, with an immediate corollary that network predictions, training errors, and the margin distribution also converge. This proof holds for deep homogeneous networks -- a broad class of networks allowing for ReLU, max-pooling, linear, and convolutional layers -- and we additionally provide empirical support not just close to the theory (e.g., the AlexNet), but also on non-homogeneous networks (e.g., the DenseNet). If the network further has locally Lipschitz gradients, we show that these gradients also converge in direction, and asymptotically align with the gradient flow path, with consequences on margin maximization, convergence of saliency maps, and a few other settings. Our analysis complements and is distinct from the well-known neural tangent and mean-field theories, and in particular makes no requirements on network width and initialization, instead merely requiring perfect classification accuracy. The proof proceeds by developing a theory of unbounded nonsmooth Kurdyka-ลojasiewicz inequalities for functions definable in an o-minimal structure, and is also applicable outside deep learning.
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