Supplementary Material - Efficient Structured Prediction with Latent Variables for General Graphical Models
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Efficient Structured Prediction with Latent Variables for General Graphical Models
In this paper we propose a unified framework for structured prediction with latent variables which includes hidden conditional random fields and latent structured support vector machines as special cases. We describe a local entropy approximation for this general formulation using duality, and derive an efficient message passing algorithm that is guaranteed to converge. We demonstrate its effec...
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