Self Supervised Boosting

Welling, Max, Zemel, Richard S., Hinton, Geoffrey E.

Neural Information Processing Systems 

Boosting algorithms and successful applications thereof abound for classification and regression learning problems, but not for unsupervised learning. We propose a sequential approach to adding features to a random field model by training them to improve classification performance between the data and an equal-sized sample of "negative examples" generated from the model's current estimate of the data density.

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