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Markov models / Machine learning / Artificial intelligence / Learning / Computational linguistics / Speech recognition software / Computer accessibility / Speech recognition / Hidden Markov model / Conditional random field / Language model / Image segmentation
Date: 2016-03-11 05:30:19
Markov models
Machine learning
Artificial intelligence
Learning
Computational linguistics
Speech recognition software
Computer accessibility
Speech recognition
Hidden Markov model
Conditional random field
Language model
Image segmentation

STRUCTURED DISCRIMINATIVE MODELS USING DEEP NEURAL-NETWORK FEATURES R. C. van Dalen, J. Yang, H. Wang, A. Ragni, C. Zhang, M. J. F. Gales Department of Engineering, University of Cambridge, United Kingdom In this paper,

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