Spectral Evolution and Invariance in Linear-width Neural Networks
November 11, 2022 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Zhichao Wang, Andrew Engel, Anand Sarwate, Ioana Dumitriu, Tony Chiang
arXiv ID
2211.06506
Category
cs.LG: Machine Learning
Cross-listed
stat.ML
Citations
27
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
We investigate the spectral properties of linear-width feed-forward neural networks, where the sample size is asymptotically proportional to network width. Empirically, we show that the spectra of weight in this high dimensional regime are invariant when trained by gradient descent for small constant learning rates; we provide a theoretical justification for this observation and prove the invariance of the bulk spectra for both conjugate and neural tangent kernels. We demonstrate similar characteristics when training with stochastic gradient descent with small learning rates. When the learning rate is large, we exhibit the emergence of an outlier whose corresponding eigenvector is aligned with the training data structure. We also show that after adaptive gradient training, where a lower test error and feature learning emerge, both weight and kernel matrices exhibit heavy tail behavior. Simple examples are provided to explain when heavy tails can have better generalizations. We exhibit different spectral properties such as invariant bulk, spike, and heavy-tailed distribution from a two-layer neural network using different training strategies, and then correlate them to the feature learning. Analogous phenomena also appear when we train conventional neural networks with real-world data. We conclude that monitoring the evolution of the spectra during training is an essential step toward understanding the training dynamics and feature learning.
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