A Bayesian Perspective on Generalization and Stochastic Gradient Descent

October 17, 2017 ยท Declared Dead ยท ๐Ÿ› International Conference on Learning Representations

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Authors Samuel L. Smith, Quoc V. Le arXiv ID 1710.06451 Category cs.LG: Machine Learning Cross-listed cs.AI, stat.ML Citations 283 Venue International Conference on Learning Representations Last Checked 3 months ago
Abstract
We consider two questions at the heart of machine learning; how can we predict if a minimum will generalize to the test set, and why does stochastic gradient descent find minima that generalize well? Our work responds to Zhang et al. (2016), who showed deep neural networks can easily memorize randomly labeled training data, despite generalizing well on real labels of the same inputs. We show that the same phenomenon occurs in small linear models. These observations are explained by the Bayesian evidence, which penalizes sharp minima but is invariant to model parameterization. We also demonstrate that, when one holds the learning rate fixed, there is an optimum batch size which maximizes the test set accuracy. We propose that the noise introduced by small mini-batches drives the parameters towards minima whose evidence is large. Interpreting stochastic gradient descent as a stochastic differential equation, we identify the "noise scale" $g = ฮต(\frac{N}{B} - 1) \approx ฮตN/B$, where $ฮต$ is the learning rate, $N$ the training set size and $B$ the batch size. Consequently the optimum batch size is proportional to both the learning rate and the size of the training set, $B_{opt} \propto ฮตN$. We verify these predictions empirically.
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