Hypothesis Set Stability and Generalization
Foster, Dylan J., Greenberg, Spencer, Kale, Satyen, Luo, Haipeng, Mohri, Mehryar, Sridharan, Karthik
–Neural Information Processing Systems
We present a study of generalization for data-dependent hypothesis sets. We give a general learning guarantee for data-dependent hypothesis sets based on a notion of transductive Rademacher complexity. Our main result is a generalization bound for data-dependent hypothesis sets expressed in terms of a notion of hypothesis set stability and a notion of Rademacher complexity for data-dependent hypothesis sets that we introduce. This bound admits as special cases both standard Rademacher complexity bounds and algorithm-dependent uniform stability bounds. We also illustrate the use of these learning bounds in the analysis of several scenarios.
Neural Information Processing Systems
Mar-18-2020, 23:16:51 GMT
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