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Unsupervised Learning in an Ensemble of Spiking Neural Networks Mediated by ITDP

机译:ITDP调解的尖刺神经网络集成中的无监督学习

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摘要

We propose a biologically plausible architecture for unsupervised ensemble learning in a population of spiking neural network classifiers. A mixture of experts type organisation is shown to be effective, with the individual classifier outputs combined via a gating network whose operation is driven by input timing dependent plasticity (ITDP). The ITDP gating mechanism is based on recent experimental findings. An abstract, analytically tractable model of the ITDP driven ensemble architecture is derived from a logical model based on the probabilities of neural firing events. A detailed analysis of this model provides insights that allow it to be extended into a full, biologically plausible, computational implementation of the architecture which is demonstrated on a visual classification task. The extended model makes use of a style of spiking network, first introduced as a model of cortical microcircuits, that is capable of Bayesian inference, effectively performing expectation maximization. The unsupervised ensemble learning mechanism, based around such spiking expectation maximization (SEM) networks whose combined outputs are mediated by ITDP, is shown to perform the visual classification task well and to generalize to unseen data. The combined ensemble performance is significantly better than that of the individual classifiers, validating the ensemble architecture and learning mechanisms. The properties of the full model are analysed in the light of extensive experiments with the classification task, including an investigation into the influence of different input feature selection schemes and a comparison with a hierarchical STDP based ensemble architecture.
机译:我们为尖峰神经网络分类器中的无监督集成学习提出了一种生物学上可行的架构。专家型组织的混合被证明是有效的,单个分类器的输出通过一个选通网络进行组合,该选通网络的操作由与输入时间相关的可塑性(ITDP)驱动。 ITDP门控机制基于最近的实验发现。 ITDP驱动的集成体系结构的抽象,分析易处理的模型是根据基于神经激发事件概率的逻辑模型得出的。对该模型的详细分析提供了见解,可将其扩展到该体系结构的完整,生物学上合理的计算实现中,这在视觉分类任务中得到了证明。扩展模型利用了尖峰网络的样式,该样式最初是作为皮层微电路模型引入的,具有贝叶斯推理能力,可以有效地执行期望最大化。基于这种期望峰值最大化(SEM)网络(其组合输出由ITDP进行调解)的无监督集成学习机制,可以很好地执行视觉分类任务,并且可以泛化为看不见的数据。组合的整体性能明显优于单个分类器,从而验证了整体体系结构和学习机制。根据分类任务的大量实验,分析了完整模型的属性,包括研究不同输入特征选择方案的影响以及与基于分层STDP的集成体系结构的比较。

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