具有内在时序的层次神经网络模型

Dushan Balisson, W. Melis
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引用次数: 0

摘要

为了克服当前传统计算所面临的一些挑战,大量的研究正在进行到非常规的计算平台上,这些研究通常受到神经科学发现的启发。这往往会导致人工神经网络,它通常是其生物等效物的过度简化版本,其中许多方面被忽略,例如时间方面。这往往会阻止这些网络直接在时域中处理时间序列。因此,本研究研究了如何利用神经元细胞的固有时序来设计具有反馈的分层神经网络。该网络基于一个简单的Leaky integration和Fire rc模型,每个神经元的固有时序由电容器放电决定。结果表明,该模型能够区分时间上不同的刺激。此外,反馈允许模型将较低级别的单元置于预测状态。最后,分层模型允许较高级别的单元在较长时间内保持稳定,从而允许较低级别的顺序信息更好地组合。
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Hierarchical neural network model with intrinsic timing
In order to overcome some of the challenges that current, conventional computing faces, a large set of research is being performed into unconventional computing platforms, most often inspired by discoveries in neuroscience. This tends to result in Artificial Neural Networks, which are commonly an oversimplified version of their biological equivalent, where various aspects are being ignored, e.g. the aspect of time. This tends to prevent these networks from handling temporal sequences directly in the time domain. Hence, this research studies how the intrinsic timing of a neuron cell can be used to design a hierarchical neural network with feedback. The network is based on a simple Leaky Integrate and Fire RC-model for each neuron where the intrinsic timing is determined by the capacitor discharge. The results show that the model is able to differentiate between temporally different stimuli. Moreover, feedback allows the model to put lower level cells in a predictive state. Finally, the hierarchical model allows for higher-level cells to remain stable for a longer period and therefore allow for a better combination of sequential information at lower levels.
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