Semisupervised learning of classifiers: theory, algorithms, and their application to human-computer interaction 论文

2004IEEE Transactions on Pattern Analysis and Machine Intelligence引用 254
Bayesian Modeling and Causal InferenceFace and Expression RecognitionMachine Learning and Data Classification

摘要

Automatic classification is one of the basic tasks required in any pattern recognition and human computer interaction application. In this paper, we discuss training probabilistic classifiers with labeled and unlabeled data. We provide a new analysis that shows under what conditions unlabeled data can be used in learning to improve classification performance. We also show that, if the conditions are violated, using unlabeled data can be detrimental to classification performance. We discuss the implications of this analysis to a specific type of probabilistic classifiers, Bayesian networks, and propose a new structure learning algorithm that can utilize unlabeled data to improve classification. Finally, we show how the resulting algorithms are successfully employed in two applications related to human-computer interaction and pattern recognition: facial expression recognition and face detection.