Thermodynamic properties of extremely diluted symmetric Q-Ising neural networks
classification
❄️ cond-mat.dis-nn
cond-mat.stat-mech
keywords
dilutedextremelyisingnetworksneuralpropertiessymmetricthermodynamic
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Using the replica-symmetric mean-field theory approach the thermodynamic and retrieval properties of extremely diluted {\it symmetric} $Q$-Ising neural networks are studied. In particular, capacity-gain parameter and capacity-temperature phase diagrams are derived for $Q=3, 4$ and $Q=\infty$. The zero-temperature results are compared with those obtained from a study of the dynamics of the model. Furthermore, the de Almeida-Thouless line is determined. Where appropriate, the difference with other $Q$-Ising architectures is outlined.
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