首页> 外文会议>ICONIP 2008;International conference on advances in neuro-information processing >Analysis of Ising Spin Neural Network with Time-Dependent Mexican-Hat-Type Interaction
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Analysis of Ising Spin Neural Network with Time-Dependent Mexican-Hat-Type Interaction

机译:时间依赖性墨西哥-帽子型相互作用的伊辛自旋神经网络分析

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摘要

We analyzed the equilibrium states of an Ising spin neural network model in which both spins and interactions evolve simultaneously over time. The interactions are Mexican-hat-type, which are used for lateral inhibition models. The model shows a bump activity, which is the locally activated network state. The time-dependent interactions are driven by Langevin noise and Hebbian learning. The analysis results reveal that Hebbian learning expands the bistable regions of the ferromagnetic and local excitation phases.
机译:我们分析了Ising自旋神经网络模型的平衡状态,其中自旋和相互作用随时间同时演化。相互作用是墨西哥帽型的,用于侧向抑制模型。该模型显示了碰撞活动,这是本地激活的网络状态。时间相关的交互作用是由Langevin噪声和Hebbian学习驱动的。分析结果表明,Hebbian学习扩展了铁磁和局部激发相的双稳态区域。

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