AbstractConsider the pattern recognition problem of learning multicategory classification from a labeled sample, for instance, the problem of learning character recognition where a category corresponds to an alphanumeric letter. The classical theory of pattern recognition assumes labeled examples appear according to the unknown underlying pattern-class conditional probability distributions where the pattern classes are picked randomly according to their a priori probabilities. In this paper we pose the following question: Can the learning accuracy be improved if labeled examples are independently randomly drawn according to the underlying class conditional probability distributions but the pattern classes are chosen not necessarily accordin...
Abstract—We consider the problem of classification, where the data of the classes are generated i.i....
We study the problem of learning Bayesian classifiers (BC)when the true class label of the training ...
© 2012 IEEE. Traditional classification systems rely heavily on sufficient training data with accura...
AbstractConsider the pattern recognition problem of learning multicategory classification from a lab...
The problem of pattern classification is considered for the case of multicategory classification whe...
The learning of a pattern classification rule rests on acquiring information to constitute a decisio...
We describe a new algorithmic framework for learning multiclass categorization problems. In this fra...
This paper studies training set sampling strategies in the context of statistical learning for text ...
Abstract. In many practical domains, misclassification costs can differ greatly and may be represent...
In recent years, the performance of semi-supervised learning has been theoretically investigated. Ho...
We attack the problem of general object recognition by learning probabilistic, nonlinear object clas...
Class membership probability estimates are important for many applications of data mining in which c...
Classification is a fundamental topic in the literature of data mining and all recent hot topics lik...
Multi-instance (MI) learning is a branch of machine learning, where each object (bag) consists of mu...
This thesis concerns the development and mathematical analysis of statistical procedures for classi...
Abstract—We consider the problem of classification, where the data of the classes are generated i.i....
We study the problem of learning Bayesian classifiers (BC)when the true class label of the training ...
© 2012 IEEE. Traditional classification systems rely heavily on sufficient training data with accura...
AbstractConsider the pattern recognition problem of learning multicategory classification from a lab...
The problem of pattern classification is considered for the case of multicategory classification whe...
The learning of a pattern classification rule rests on acquiring information to constitute a decisio...
We describe a new algorithmic framework for learning multiclass categorization problems. In this fra...
This paper studies training set sampling strategies in the context of statistical learning for text ...
Abstract. In many practical domains, misclassification costs can differ greatly and may be represent...
In recent years, the performance of semi-supervised learning has been theoretically investigated. Ho...
We attack the problem of general object recognition by learning probabilistic, nonlinear object clas...
Class membership probability estimates are important for many applications of data mining in which c...
Classification is a fundamental topic in the literature of data mining and all recent hot topics lik...
Multi-instance (MI) learning is a branch of machine learning, where each object (bag) consists of mu...
This thesis concerns the development and mathematical analysis of statistical procedures for classi...
Abstract—We consider the problem of classification, where the data of the classes are generated i.i....
We study the problem of learning Bayesian classifiers (BC)when the true class label of the training ...
© 2012 IEEE. Traditional classification systems rely heavily on sufficient training data with accura...