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Biological constrained learning of parameters in a recurrent neural network-based model of the primary visual cortex

机译:基于递归神经网络的主视皮层模型中参数的生物约束学习

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Neurons in primary visual cortex (VI) optimally respond to stimuli with their preferred orientation. The response of neurons in VI is suppressed by iso-oriented neurons located in their surround. It is very important to understand the circuitry of center-surround interactions. Previous studies in this field followed the approach of postulating models inspired by neuroscience data. While previous models are only postulated, we adopted a strictly data-driven approach and trained a biologically constrained recurrent network model by using supervised learning methods. We have trained a recurrent neural network model constrained by selected biological and anatomical facts. The obtained model describes the near and far surround behavior and the synaptic weights obtained by training are biologically plausible.
机译:初级视皮层(VI)中的神经元以其首选方向最佳地响应刺激。位于VI周围的iso定向神经元抑制了VI中神经元的反应。了解中心-周围交互的电路非常重要。在该领域的先前研究遵循了由神经科学数据启发的假设模型的方法。虽然仅假定了先前的模型,但我们采用严格的数据驱动方法,并通过监督学习方法训练了生物学受限的递归网络模型。我们已经训练了受所选生物学和解剖学事实约束的递归神经网络模型。所获得的模型描述了近距离和远距离行为,并且通过训练获得的突触权重在生物学上是合理的。

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