What You See is What You Get: Principled Deep Learning via Distributional Generalization
April 07, 2022 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Bogdan Kulynych, Yao-Yuan Yang, Yaodong Yu, Jarosลaw Bลasiok, Preetum Nakkiran
arXiv ID
2204.03230
Category
cs.LG: Machine Learning
Cross-listed
cs.AI,
cs.CR,
cs.CV,
stat.ML
Citations
11
Venue
Neural Information Processing Systems
Last Checked
4 months ago
Abstract
Having similar behavior at training time and test time $-$ what we call a "What You See Is What You Get" (WYSIWYG) property $-$ is desirable in machine learning. Models trained with standard stochastic gradient descent (SGD), however, do not necessarily have this property, as their complex behaviors such as robustness or subgroup performance can differ drastically between training and test time. In contrast, we show that Differentially-Private (DP) training provably ensures the high-level WYSIWYG property, which we quantify using a notion of distributional generalization. Applying this connection, we introduce new conceptual tools for designing deep-learning methods by reducing generalization concerns to optimization ones: to mitigate unwanted behavior at test time, it is provably sufficient to mitigate this behavior on the training data. By applying this novel design principle, which bypasses "pathologies" of SGD, we construct simple algorithms that are competitive with SOTA in several distributional-robustness applications, significantly improve the privacy vs. disparate impact trade-off of DP-SGD, and mitigate robust overfitting in adversarial training. Finally, we also improve on theoretical bounds relating DP, stability, and distributional generalization.
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