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Multiple topological representation self-organized by spike-timing-dependent synaptic learning rule

机译:通过依赖于尖峰时间的突触学习规则自组织的多种拓扑表示

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摘要

Position-and-scale-free representations of shapes are acquired by neurons in the inferior temporal (IT) cortex. So each neuron receives information from the whole visual field. Familiar shapes are extremely restricted from all the possible shapes on the whole visual field. So they must be clustered in the shape space to have mixed structure of continuity and discreteness. We demonstrate that multiple representation can be acquired in a spike-based model for topological maps based on the spike-timing-dependent synaptic plasticity (STDP), subjected to a set of inputs on multiple rings, which is a simple example of mixed structure. In this representation, the position on each ring is represented by a center of active neurons and the difference of rings is represented by a detailed pattern of active neurons. Neurons in the same region exhibit high activities for an input on the other ring. The result is consistent with the fact observed in IT cortex that neighboring neurons exhibit different preferences while the region of active neurons is continuously shifted for continuous changes of object.
机译:下颞叶(IT)皮层中的神经元获取形状的位置和无尺度表示。因此,每个神经元都从整个视野接收信息。在整个视野中,熟悉的形状都受到所有可能形状的极大限制。因此,它们必须在形状空间中聚集以具有连续性和离散性的混合结构。我们证明可以在基于尖峰定时依赖的突触可塑性(STDP)的拓扑结构的基于尖峰的模型中获取多重表示,这是在多个环上进行一组输入的结果,这是混合结构的简单示例。在该表示中,每个环上的位置由活动神经元的中心表示,而环的差异由活动神经元的详细模式表示。同一区域中的神经元对另一个环上的输入显示出高活性。该结果与在IT皮层中观察到的事实相一致,即相邻的神经元表现出不同的偏好,而活动神经元的区域却因对象的连续变化而连续移动。

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