On-line learning in a discrete state space
classification
❄️ cond-mat
keywords
learningon-lineachievediscretefiniteoverlapspacestate
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On-line learning of a rule given by an N-dimensional Ising perceptron, is considered for the case when the student is constrained to take values in a discrete state space of size $L^N$. For L=2 no on-line algorithm can achieve a finite overlap with the teacher in the thermodynamic limit. However, if $L$ is on the order of $\sqrt{N}$, Hebbian learning does achieve a finite overlap.
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