Shape Matters: Understanding the Implicit Bias of the Noise Covariance
HaoChen, Jeff Z., Wei, Colin, Lee, Jason D., Ma, Tengyu
The noise in stochastic gradient descent (SGD) provides a crucial implicit regularization effect for training overparameterized models. Prior theoretical work largely focuses on spherical Gaussian noise, whereas empirical studies demonstrate the phenomenon that parameter-dependent noise -- induced by mini-batches or label perturbation -- is far more effective than Gaussian noise. This paper theoretically characterizes this phenomenon on a quadratically-parameterized model introduced by Vaskevicius et el. and Woodworth et el. We show that in an over-parameterized setting, SGD with label noise recovers the sparse ground-truth with an arbitrary initialization, whereas SGD with Gaussian noise or gradient descent overfits to dense solutions with large norms. Our analysis reveals that parameter-dependent noise introduces a bias towards local minima with smaller noise variance, whereas spherical Gaussian noise does not. Code for our project is publicly available.
Jun-17-2020
- Country:
- North America > United States
- California > Santa Clara County > Palo Alto (0.04)
- Asia > Afghanistan
- Parwan Province > Charikar (0.04)
- North America > United States
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- Research Report > New Finding (0.46)
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