Bennett-type Generalization Bounds: Large-deviation Case and Faster Rate of Convergence

26 Sep 2013Chao Zhang

In this paper, we present the Bennett-type generalization bounds of the learning process for i.i.d. samples, and then show that the generalization bounds have a faster rate of convergence than the traditional results... (read more)

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