A Discrete Time Delayed Neural Network with Potential for Associative Memory Revisited
نویسندگان
چکیده
We consider a nonlinear difference equation with a time delay which represents the simplest possible discretely updated neural network. We show that provided that the integral time delay is large enough, this self feedback system exhibits a huge number of asymptotically stable periodic orbits. Therefore, such a network has potential for associative memory and pattern recognition.
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