Dynamics of Generalization in Linear Perceptrons
–Neural Information Processing Systems
We study the evolution of the generalization ability of a simple linear per(cid:173) ceptron with N inputs which learns to imitate a "teacher perceptron". The system is trained on p aN binary example inputs and the generaliza(cid:173) tion ability measured by testing for agreement with the teacher on all 2N possible binary input patterns. The dynamics may be solved analytically and exhibits a phase transition from imperfect to perfect generalization at a 1. Except at this point the generalization ability approaches its asymptotic value exponentially, with critical slowing down near the tran(cid:173) sition; the relaxation time is ex (1 - y'a)-2. Right at the critical point, 1 the approach to perfect generalization follows a power law ex t - '2.
Neural Information Processing Systems
Apr-6-2023, 19:28:49 GMT
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