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Clustering with spiking neurons

机译:与尖峰神经元聚类

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摘要

We present a novel neural method for data clustering using temporal segmentation of spiking neurons. Our clustering algorithm relies only on distances between data points. Each point is associated with a neuron, and the distances are used todetermine the synaptic weights between those neurons. The dynamical development of this system leads to synchronous firing of neurons that belong to the same cluster, while different clusters fire at different times. Such dynamic behavior is calledtemporal segmentation. It is achieved via two mechanisms - intra cluster synchrony, induced by excitatory connections within each cluster, and desynchronization between clusters induced by inhibitory competition. We test our clustering method on the irisdata set. For problems that do not have a unique clustering solution, we construct a pair-correlation matrix on the basis of multiple clustering solutions. By performing a second clustering algorithm, this time on the pair-correlation matrix, we are ableto define second order clusters of the original distance matrix. This method is demonstrated on a biological data set.
机译:我们介绍了一种使用尖刺神经元的时间分段进行数据聚类的新型神经方法。我们的聚类算法仅依赖于数据点之间的距离。每个点与神经元相关,并且距离用于这些神经元之间的突触重量。该系统的动态发展导致属于同一群体的神经元的同步射击,而不同时间的不同簇火灾。这种动态行为是被召唤的分割。它通过两个机制 - 内部簇同步实现,每个集群内的兴奋性连接引起,并在抑制竞争引起的簇之间的去同步。我们在Irisdata集上测试我们的群集方法。对于没有唯一聚类解决方案的问题,我们基于多个聚类解决方案构建一对相关矩阵。通过执行第二聚类算法,这次在对相关矩阵上,我们是Ableto定义原始距离矩阵的二阶簇。该方法在生物数据集上进行说明。

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