激活多时性神经元群的运行时检测及其时空分析

Haoqi Sun, Yan Yang, O. Sourina, G. Huang
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引用次数: 3

摘要

由于神经编码中具有精确的尖峰时序,使得尖峰神经网络(SNN)比发射率编码的神经网络具有更丰富的时空动态特性。SNN的一个显著特征是多时性神经元群(PNG),受到计算神经科学和机器学习界的广泛关注。然而,现有的所有算法都是通过离线方式从模拟后收集的峰值记录中检测png。目前还没有一种算法能够检测到在运行时(在线方式)实际激活的png,这可能被用作更高级神经处理的输入。我们提出了一种针对激活PNG的运行时检测算法,使用PNG读出神经元来填补这一空白。该算法可以揭示嵌入在脉冲序列中的时空PNG模式,这是一种更高层次的神经元动力学。我们通过一个例子证明,对于组合输入模式,使用所提出的算法可以很容易地找到除组成png之外的新png。作为一个重要的解释,我们进一步了解了如何使用PNG读出神经元来构建分层的网络结构。
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Runtime detection of activated polychronous neuronal group towards its spatiotemporal analysis
Due to the precise spike timing in neural coding, spiking neural network (SNN) possesses richer spatiotemporal dynamics compared to neural networks with firing rate coding. One of the distinct features of SNN, polychronous neuronal group (PNG), receives much attention from both computational neuroscience and machine learning communities. However, all existing algorithms detect PNGs from the spike recording collected after simulation in an offline manner. There is currently no algorithm that detects PNGs actually being activated in runtime (online manner), which could be potentially used as inputs to higher level neural processing. We propose a runtime detection algorithm particularly for activated PNGs, using PNG readout neurons, to fill this gap. The proposed algorithm can reveal the spatiotemporal PNG patterns embedded in spike trains, which is higher level neuronal dynamics. We demonstrate through an example that for composed input patterns, new PNGs except the constituent PNGs can be easily found using the proposed algorithm. As an important interpretation, we give further insights on how to use PNG readout neurons to construct layered network structure.
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