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Oscillations and chaos in neural networks: an exactly solvable model.

机译:神经网络中的振荡和混乱:一个完全可解的模型。

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摘要

We consider a randomly diluted higher-order network with noise, consisting of McCulloch-Pitts neurons that interact by Hebbian-type connections. For this model, exact dynamical equations are derived and solved for both parallel and random sequential updating algorithms. For parallel dynamics, we find a rich spectrum of different behaviors including static retrieving and oscillatory and chaotic phenomena in different parts of the parameter space. The bifurcation parameters include first- and second-order neuronal interaction coefficients and a rescaled noise level, which represents the combined effects of the random synaptic dilution, interference between stored patterns, and additional background noise. We show that a marked difference in terms of the occurrence of oscillations or chaos exists between neural networks with parallel and random sequential dynamics.
机译:我们考虑一个带有噪声的随机稀释的高阶网络,该网络由通过Hebbian型连接相互作用的McCulloch-Pitts神经元组成。对于该模型,可以导出精确的动力学方程,并针对并行和随机顺序更新算法进行求解。对于并行动力学,我们发现了各种各样的不同行为,包括参数空间不同部分的静态检索以及振荡和混沌现象。分叉参数包括一阶和二阶神经元交互作用系数以及重新缩放的噪声水平,该水平表示随机突触稀释,所存储模式之间的干扰以及其他背景噪声的组合影响。我们表明,在具有并行和随机顺序动力学的神经网络之间,存在振荡或混乱的显着差异。

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