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Anisotropic connectivity implements motion-based prediction in a spiking neural network

机译:各向异性连通性在尖峰神经网络中实现基于运动的预测

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摘要

Predictive coding hypothesizes that the brain explicitly infers upcoming sensory input to establish a coherent representation of the world. Although it is becoming generally accepted, it is not clear on which level spiking neural networks may implement predictive coding and what function their connectivity may have. We present a network model of conductance-based integrate-and-fire neurons inspired by the architecture of retinotopic cortical areas that assumes predictive coding is implemented through network connectivity, namely in the connection delays and in selectiveness for the tuning properties of source and target cells. We show that the applied connection pattern leads to motion-based prediction in an experiment tracking a moving dot. In contrast to our proposed model, a network with random or isotropic connectivity fails to predict the path when the moving dot disappears. Furthermore, we show that a simple linear decoding approach is sufficient to transform neuronal spiking activity into a probabilistic estimate for reading out the target trajectory.
机译:预测编码假设大脑明确推断即将来临的感觉输入以建立世界的连贯表示。尽管它已被普遍接受,但尚不清楚尖峰神经网络可以在哪个级别上实现预测编码以及它们的连接性可以具有什么功能。我们提出了一种基于电导的整合与发射神经元的网络模型,该模型受视网膜皮层区域构架的启发,该模型假设预测编码是通过网络连通性实现的,即在连接延迟以及对源细胞和目标细胞的调节特性的选择性方面。我们显示,在跟踪运动点的实验中,所应用的连接模式可导致基于运动的预测。与我们提出的模型相比,具有随机或各向同性连通性的网络无法在移动点消失时预测路径。此外,我们表明,简单的线性解码方法足以将神经元尖峰活动转换为概率估计,以读出目标轨迹。

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