Surrogate Learning - An Approach for Semi-Supervised Classification

Abstract
We consider the task of learning a classifier from the feature space to the set of classes , when the features can be partitioned into class-conditionally independent feature sets and . We show the surprising fact that the class-conditional independence can be used to represent the original learning task in terms of 1) learning a classifier from to and 2) learning the class-conditional distribution of the feature set . This fact can be exploited for semi-supervised learning because the former task can be accomplished purely from unlabeled samples. We present experimental evaluation of the idea in two real world applications.
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