2016
DOI: 10.1145/2888422.2888447
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Constrained Semi-supervised Learning in the Presence of Unanticipated Classes

Abstract: Traditional semi-supervised learning (SSL) techniques consider the missing labels of unlabeled datapoints as latent/unobserved variables, and model these variables, and the parameters of the model, using techniques like Expectation Maximization (EM). Such semisupervised learning techniques are widely used for Automatic Knowledge Base Construction (AKBC) tasks. We consider two extensions to traditional SSL methods which make it more suitable for a variety of AKBC tasks. First, we consider jointly assi… Show more

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