Generation of unpredictable time series by a Neural Network
classification
❄️ cond-mat.dis-nn
keywords
functiongeneratedseriestimeusedamplificationanalyseautocorrelation
read the original abstract
A perceptron that learns the opposite of its own output is used to generate a time series. We analyse properties of the weight vector and the generated sequence, like the cycle length and the probability distribution of generated sequences. A remarkable suppression of the autocorrelation function is explained, and connections to the Bernasconi model are discussed. If a continuous transfer function is used, the system displays chaotic and intermittent behaviour, with the product of the learning rate and amplification as a control parameter.
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