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Multiplicative versus additive noise in multi-state neural networks

机译:多状态神经网络中的乘法与附加噪声

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The effects of a variable amount of random dilution of the synaptic couplings in Q-Ising multi-state neural networks with Hebbian learning are examined. A fraction of the couplings is explicitly allowed to be anti-Hebbian. Random dilution represents the dying or pruning of synapses and, hence, a static disruption of the learning process which can be considered as a form of multiplicative noise in the learning rule. Both parallel and sequential updating of the neurons can be treated. Symmetric dilution in the statics of the network is studied using the mean-field theory approach of statistical mechanics. General dilution, including asymmetric pruning of the couplings, is examined using the generating functional (path integral) approach of disordered systems. It is shown that random dilution acts as additive gaussian noise in the Hebbian learning rule with a mean zero and a variance depending on the connectivity of the network and on the symmetry. Furthermore, a scaling factor appears that essentially measures the average amount of anti-Hebbian couplings.
机译:研究了Q-Ising多状态神经网络中突触耦合的可变量随机稀释的影响,并进行了Hebbian学习。耦合的一小部分明确允许成为反织人。随机稀释表示突触的垂死或修剪,因此,可以被视为学习规则中的乘法噪声的形式的静态破坏。可以处理并行和顺序更新神经元。使用统计力学的平均场理论方法研究了网络静态的对称稀释。使用混乱系统的发电功能(路径积分)方法检查偶合偶联的一般稀释,包括联轴器的不对称灌浆。结果表明,随机稀释作为Hebbian学习规则中的添加到高斯噪声,其具有平均零和差异,这取决于网络的连接和对称性。此外,出现缩放因子,基本上测量抗Hebbian联轴器的平均量。

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