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Learning / Conditional random field / Theoretical computer science / Neural networks / Maximum-entropy Markov model / Pattern recognition / Hidden Markov model / Perceptron / Machine learning / Markov models / Artificial intelligence
Date: 2005-07-11 15:33:24
Learning
Conditional random field
Theoretical computer science
Neural networks
Maximum-entropy Markov model
Pattern recognition
Hidden Markov model
Perceptron
Machine learning
Markov models
Artificial intelligence

Stacked Sequential Learning William W. Cohen Center for Automated Learning & Discovery School of Computer Science Carnegie Mellon University Pittsburgh, PA 15213

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