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An Influence of Nonlinearities to Storage Capacity of Neural Networks

机译:非线性对神经网络存储容量的影响

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The more realistic neural soma and synaptic nonlinear relations and an alternative mean field theory (MFT) approach relevant for strongly interconnected systems as a cortical matter are considered. The general procedure of averaging the quenched random states in the fully-connected networks for MFT, as usually, is based on the Boltzmann Machine learning. But this approach requires an unrealistically large number of samples to provide a reliable performance. We suppose an alternative MFT with deterministic features instead of stochastic nature of searching a solution a set of large number equations. Of course, this alternative theory will not be strictly valid for infinite number of elements. Another property of generalization is an inclusion of the additional member in the effective Hamiltonian allowing to improve the stochastic hill-climbing search of the solution not dropping into local minima of the energy function. Especially, we pay attention to increasing of neural networks retrieval capability transforming the replica-symmetry model by including of different nonlinear elements. Some results of numerical modeling as well as the wide discussion of neural systems storage capacity are presented.%Nagrinejama neurotinklo elementu netiesiniu charakteristiku itaka tinklo atminties imlumui. Pasiulytas vidutinio lauko teorijos deterministinis sprendimo budas. Didelis demesys atkreiptas neurotinklo atsiminimo gebejimo tyrimui, priklausomai nuo tinklo elementu netiesiškumo. Pateikti ir išnagrineti skaitinio modeliavimo rezultatai.
机译:考虑到更现实的神经体和突触非线性关系以及与作为皮质物质的强互连系统相关的替代平均场理论(MFT)方法。通常,在MFT的全连接网络中平均淬灭随机状态的一般过程是基于Boltzmann机器学习的。但是这种方法需要大量不实际的样本才能提供可靠的性能。我们假设具有确定性特征的替代MFT,而不是搜索大量方程组的解决方案的随机性质。当然,这种替代理论对于无限数量的元素将不是严格有效的。泛化的另一个属性是在有效的哈密顿量中包含其他成员,从而可以改善对解决方案的随机爬山式搜索,而不会陷入能量函数的局部最小值。尤其是,我们注意增加神经网络的检索能力,通过包含不同的非线性元素来转换复制对称模型。提出了一些数值模拟的结果,以及对神经系统存储能力的广泛讨论。%Nagrinejama Neurotinklo elementu netiesiniu charakteristiku itaka tinklo atminties imlumui。 Pasiulytas vidutinio lauko teorijos deterministinis sprendimo budas。 Didelis demesys atkreiptas Neurotinklo atsiminimo gebejimo tyrimui,priklausomai nuo tinklo elementunetiesiškumo。 Pateikti irišnagrinetiskaitinio modeliavimo rezultatai。

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