A computationally and cognitively plausible model of supervised and
unsupervised learning
International Conference on Advances in Brain Inspired Cognitive Systems (ABICS), 2013
Abstract
Both empirical and mathematical demonstrations of the importance of chance-corrected measures are discussed, and a new model of learning is proposed based on empirical psychological results on association learning. Two forms of this model are developed, the Informatron as a chance-corrected Perceptron, and AdaBook as a chance-corrected AdaBoost procedure. Computational results presented show chance correction facilitates learning.
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