Erratum: Constructing Multiclass Learners from Binary Learners: A Simple Black-Box Analysis of the Generalization Errors
نویسندگان
چکیده
There are errors in our paper “Constructing Multiclass Learners from Binary Learners: A Simple Black-Box Analysis of the Generalization Errors,” which appeared in ALT’05 [3]. The errors are related to our uses of union bounds. We briefly describe the problem and discuss which of our results can be shown to hold. We also provide a counter example for our previous claim.
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