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A dynamic neural network model on global-to-local interaction over time course

机译:随时间变化的全局到局部交互的动态神经网络模型

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We propose a neural network model based on contextual learning and non-leaky integrate-and-fire (IF) model. The model shows dynamic properties that integrate the inputs from its own module as well as the other module over time. Moreover, the integration of inputs from different modules is not simple accumulation of activation over the time course but depends on the interaction between primary input that the behaviour of a modular network should be based on, and the contextual input that facilitates or interferes with the performance of the modular network. The learning rule is derived under the assumption that time scale of the interval to first spike can be adjusted during the learning process. The model is applied to explain global-to-local processing of Navon type stimuli in which a global letter hierarchically consists of local letters. The model provides interesting insights that may underlie asymmetric response of global and local interaction found in many psychophysical and neuropsychological studies.
机译:我们提出了一种基于上下文学习和非泄漏集成与解雇(IF)模型的神经网络模型。该模型显示了动态属性,这些属性随时间集成了来自其自身模块以及其他模块的输入。而且,来自不同模块的输入的集成不是随时间推移的激活的简单累积,而是取决于模块化网络的行为应基于的主要输入与促进或干扰性能的上下文输入之间的相互作用。模块化网络。在可以在学习过程中调整到第一个峰值的时间间隔的时间尺度的假设下得出学习规则。该模型用于解释Navon型刺激的全局到局部处理,其中全局字母由局部字母分层组成。该模型提供了有趣的见解,可能是许多心理生理和神经心理学研究中发现的全局和局部相互作用的不对称反应的基础。

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