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Asymmetrically extremely dilute neural networks with Langevin dynamics and unconventional results

机译:具有Langevin动力学和非常规结果的非对称极稀释神经网络

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We study graded response attractor neural networks with asymmetrically extremely dilute interactions and Langevin dynamics. We solve our model in the thermodynamic limit using generating functional analysis, and find (in contrast to the binary neurons case) that even in statics, for T > 0 or large alpha, one cannot eliminate the non-persistent order parameters, atypically for recurrent neural network models. The macroscopic dynamics is driven by the (non-trivial) joint distribution of neurons and fields, rather than just the (Gaussian) field distribution. We calculate phase transition lines and find, as may be expected for this asymmetric model, that there is no spin-glass phase, only recall and paramagnetic phases. We present simulation results in support of our theory.
机译:我们研究具有不对称极稀交互作用和Langevin动力学的分级响应吸引神经网络。我们使用生成函数分析在热力学极限中求解模型,并发现(与二元神经元情况相反),即使在静态条件下,对于T> 0或较大的alpha值,也不能消除非持久性阶参数,对于重复性非典型神经网络模型。宏观动力学是由神经元和场的(非平凡的)联合分布驱动的,而不仅仅是(高斯)场分布的驱动。我们计算了相变线,并发现(如对此不对称模型所预期的),不存在自旋玻璃相,仅存在回忆相和顺磁相。我们提供仿真结果以支持我们的理论。

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