Risk Bounds for Randomized Sample Compressed Classifiers
–Neural Information Processing Systems
We derive risk bounds for the randomized classifiers in Sample Compressions settings where the classifier-specification utilizes two sources of information viz. the compression set and the message string. By extending the recently proposed Occamâs Hammer principle to the data-dependent settings, we derive point-wise versions of the bounds on the stochastic sample compressed classifiers and also recover the corresponding classical PAC-Bayes bound. We further show how these compare favorably to the existing results.
Neural Information Processing Systems
Dec-31-2009
- Country:
- North America
- Canada > Quebec
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- United States > California
- Santa Cruz County > Santa Cruz (0.14)
- Canada > Quebec
- North America
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