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A Rate Distortion Approach for Semi-Supervised Conditional Random Fields

2009-12-01NeurIPS 2009Unverified0· sign in to hype

Yang Wang, Gholamreza Haffari, Shaojun Wang, Greg Mori

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Abstract

We propose a novel information theoretic approach for semi-supervised learning of conditional random fields. Our approach defines a training objective that combines the conditional likelihood on labeled data and the mutual information on unlabeled data. Different from previous minimum conditional entropy semi-supervised discriminative learning methods, our approach can be naturally cast into the rate distortion theory framework in information theory. We analyze the tractability of the framework for structured prediction and present a convergent variational training algorithm to defy the combinatorial explosion of terms in the sum over label configurations. Our experimental results show that the rate distortion approach outperforms standard l_2 regularization and minimum conditional entropy regularization on both multi-class classification and sequence labeling problems.

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