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Machine learning / Artificial neural networks / Perceptron / Conditional random field / Supervised learning / Pattern recognition / Generalization error / Structured prediction / Kernel perceptron
Date: 2016-07-16 15:30:43
Machine learning
Artificial neural networks
Perceptron
Conditional random field
Supervised learning
Pattern recognition
Generalization error
Structured prediction
Kernel perceptron

On Herding and the Perceptron Cycling Theorem Andrew E. Gelfand, Yutian Chen, Max Welling Department of Computer Science University of California, Irvine {agelfand,yutianc,welling}@ics.uci.edu

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