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Parallel Dynamics of Extremely Diluted Symmetric Q-Ising Neural Networks

机译:极度稀释的对称Q型神经网络的并行动力学

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The parallel dynamics of extremely diluted symmetric Q-Ising neural networks is studied for arbitrary Q using a probabilistic approach. In spite of the extremely diluted architecture the feedback correlations arising from the symmetry prevent a closed-form solution in contrast with the extremely diluted asymmetric model. A recursive scheme is found determining the complete time evolution of the order parameters taking into account all feedback. It is based upon the evolution of the distribution of the local field, as in the fully connected model. As an illustrative example an explicit analysis is carried out for the Q=2 and Q=3 model. These results agree with and extend the partial results existing for Q=2. For Q>2 the analysis is entirely new. Finally, equilibrium fixed-point equations are derived and a capacity-gain function diagram is obtained.
机译:使用概率方法对任意Q研究了极度稀释的对称Q-Ising神经网络的并行动力学。尽管架构极度稀疏,但与极度稀疏的非对称模型相比,对称性引起的反馈相关会阻止闭式解。找到一个递归方案,该方案考虑了所有反馈,确定了订单参数的完整时间演变。如完全连接的模型一样,它基于局部场分布的演变。作为说明性示例,对Q = 2和Q = 3模型进行了显式分析。这些结果与Q = 2存在的部分结果一致并扩展了部分结果。对于Q> 2,分析是全新的。最后,导出平衡定点方程,并获得容量-增益函数图。

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