For energy-efficient computation in specialized neuromorphic hardware, we present spiking neural coding, an instantiation of a family of artificial neural models grounded in the theory of predictive coding. This model, the first of its kind, works by operating in a never-ending process of "guess-and-check", where neurons predict the activity values of one another and then adjust their own activities to make better future predictions. The interactive, iterative nature of our system fits well into the continuous time formulation of sensory stream prediction and, as we show, the model's structure yields a local synaptic update rule, which can be used to complement or as an alternative to online spike-timing dependent plasticity. In this article, we experiment with an instantiation of our model consisting of leaky integrate-and-fire units. However, the framework within which our system is situated can naturally incorporate more complex neurons such as the Hodgkin-Huxley model. Our experimental results in pattern recognition demonstrate the potential of the model when binary spike trains are the primary paradigm for inter-neuron communication. Notably, spiking neural coding is competitive in terms of classification performance and experiences less forgetting when learning from task sequence, offering a more computationally economical, biologically-plausible alternative to popular artificial neural networks.
翻译:对于专门神经形态硬件的节能计算,我们展示的是神经神经元编码,这是基于预测编码理论的人工神经模型的瞬间组合。这个模型是第一种模型,通过永无止尽的“猜测和检查”过程运作,神经元预测彼此的活动值,然后调整其自身的活动,以作出更好的未来预测。我们系统的互动、迭接性特性非常适合感官流预测的持续时间配制,而且正如我们所显示的那样,模型的结构产生了一种本地合成更新规则,可以用来补充或替代在线刺激依赖性造型的可塑性。在本文章中,我们试验的是由“猜测和检查”组成的模型的即时操作过程。然而,我们系统所在的框架自然可以包含更复杂的神经元,如Hodgkin-Huxley模型。我们在模式上的实验结果表明,当二进制高压列是内核元通信的主要范例时,可以用来补充或替代在线刺激依赖性成型的可塑性可塑性可塑性可塑性通信模式。显而易见的是,当人们从低度的生物神经结构中学习时,一个更难的模型化的模型的模型的模型的计算,一个令人思巧的计算过程将进行。