Predicting structured objects with support vector machines

T Joachims, T Hofmann, Y Yue, CN Yu - Communications of the ACM, 2009 - dl.acm.org
Communications of the ACM, 2009dl.acm.org
Machine Learning today offers a broad repertoire of methods for classification and
regression. But what if we need to predict complex objects like trees, orderings, or
alignments? Such problems arise naturally in natural language processing, search engines,
and bioinformatics. The following explores a generalization of Support Vector Machines
(SVMs) for such complex prediction problems.
Machine Learning today offers a broad repertoire of methods for classification and regression. But what if we need to predict complex objects like trees, orderings, or alignments? Such problems arise naturally in natural language processing, search engines, and bioinformatics. The following explores a generalization of Support Vector Machines (SVMs) for such complex prediction problems.
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