Dynamical Phase Transition in a Neural Network Model with Noise: an Exact Solution
classification
❄️ cond-mat.dis-nn
cond-mat.stat-mech
keywords
networknoisecriticaldynamicalneuralphasetransitionvalue
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The dynamical organization in the presence of noise of a Boolean neural network with random connections is analyzed. For low levels of noise, the system reaches a stationary state in which the majority of its elements acquire the same value. It is shown that, under very general conditions, there exists a critical value of the noise, below which the network remains organized and above which it behaves randomly. The existence and nature of the phase transition are computed analytically, showing that the critical exponent is 1/2. The dependence of the critical noise on the parameters of the network is obtained. These results are then compared with two numerical realizations of the network.
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