We present a kernel-based algorithm for hierarchical text classification where the documents are allowed to belong to more than one category at a time. The classification model is a variant of the Maximum Margin Markov Network framework, where the classification hierarchy is represented as a Markov tree equipped with an exponential family defined on the edges. We present an efficient optimization algorithm based on incremental conditional gradient ascent in single-example subspaces spanned by the marginal dual variables. Experiments show that the algorithm can feasibly optimize training sets of thousands of examples and classification hierarchies consisting of hundreds of nodes. The algorithm’s predictive accuracy is competitive with other ...
We consider multi-class classification where the predictor has a hierarchical structure that allows ...
Due to myriads of classes, designing accurate and efficient classifiers becomes very challenging for...
In conventional classification problems, each instance of a dataset is associated with just one amon...
We present a kernel-based algorithm for hierarchical text classification where the documents are all...
We present a kernel-based algorithm for hierarchical text classification where the documents are all...
We present a kernel-based algorithm for hierarchical text classification where the documents are all...
We present a kernel-based algorithm for hierarchical text classification where the documents are all...
We present work in progress towards maximum margin hierarchical classification where the objects ar...
We present an algorithmic framework for supervised classification learning where the set of labels i...
Abstract. In this paper, we model learning to rank algorithms based on structural dependencies in hi...
We propose a highly efficient framework for kernel multi-class models with a large and structured se...
We study the problem of classifying data in a given taxonomy when classifications associated with mu...
We study the problem of classifying data in a given taxonomy when classifications associated with mu...
University of Minnesota Ph.D. dissertation. January 2009. Major: Statistics. Advisor: Xiaotong Shen....
We propose a highly efficient framework for kernel multi-class models with a large and structured se...
We consider multi-class classification where the predictor has a hierarchical structure that allows ...
Due to myriads of classes, designing accurate and efficient classifiers becomes very challenging for...
In conventional classification problems, each instance of a dataset is associated with just one amon...
We present a kernel-based algorithm for hierarchical text classification where the documents are all...
We present a kernel-based algorithm for hierarchical text classification where the documents are all...
We present a kernel-based algorithm for hierarchical text classification where the documents are all...
We present a kernel-based algorithm for hierarchical text classification where the documents are all...
We present work in progress towards maximum margin hierarchical classification where the objects ar...
We present an algorithmic framework for supervised classification learning where the set of labels i...
Abstract. In this paper, we model learning to rank algorithms based on structural dependencies in hi...
We propose a highly efficient framework for kernel multi-class models with a large and structured se...
We study the problem of classifying data in a given taxonomy when classifications associated with mu...
We study the problem of classifying data in a given taxonomy when classifications associated with mu...
University of Minnesota Ph.D. dissertation. January 2009. Major: Statistics. Advisor: Xiaotong Shen....
We propose a highly efficient framework for kernel multi-class models with a large and structured se...
We consider multi-class classification where the predictor has a hierarchical structure that allows ...
Due to myriads of classes, designing accurate and efficient classifiers becomes very challenging for...
In conventional classification problems, each instance of a dataset is associated with just one amon...