Chaining Mutual Information and Tightening Generalization Bounds
June 11, 2018 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Amir R. Asadi, Emmanuel Abbe, Sergio Verdรบ
arXiv ID
1806.03803
Category
cs.LG: Machine Learning
Cross-listed
cs.IT,
math.PR,
stat.ML
Citations
142
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
Bounding the generalization error of learning algorithms has a long history, which yet falls short in explaining various generalization successes including those of deep learning. Two important difficulties are (i) exploiting the dependencies between the hypotheses, (ii) exploiting the dependence between the algorithm's input and output. Progress on the first point was made with the chaining method, originating from the work of Kolmogorov, and used in the VC-dimension bound. More recently, progress on the second point was made with the mutual information method by Russo and Zou '15. Yet, these two methods are currently disjoint. In this paper, we introduce a technique to combine the chaining and mutual information methods, to obtain a generalization bound that is both algorithm-dependent and that exploits the dependencies between the hypotheses. We provide an example in which our bound significantly outperforms both the chaining and the mutual information bounds. As a corollary, we tighten Dudley's inequality when the learning algorithm chooses its output from a small subset of hypotheses with high probability.
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