An Infinity-sample Theory for Multi-category Large Margin Classification
–Neural Information Processing Systems
The purpose of this paper is to investigate infinity-sample properties of risk minimization based multi-category classification methods. These methods can be considered as natural extensions to binary large margin classification. We establish conditions that guarantee the infinity-sample consistency of classifiers obtained in the risk minimization framework. Examples are provided for two specific forms of the general formulation, which extend a number of known methods. Using these examples, we show that some risk minimization formulations can also be used to ob- tain conditional probability estimates for the underlying problem.
Neural Information Processing Systems
Apr-6-2023, 15:58:38 GMT
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