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Kernel Analysis for Estimating the Connectivity of a Network with Event Sequences

机译:内核分析,用于估计具有事件序列的网络的连通性

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Estimating the connectivity of a network from events observed at each node has many applications. One prominent example is found in neuroscience, where spike trains (sequences of action potentials) are observed at each neuron, but the way in which these neurons are connected is unknown. This paper introduces a novel method for estimating connections between nodes using a similarity measure between sequences of event times. Specifically, a normalized positive definite kernel defined on spike trains was used. The proposed method was evaluated using synthetic and real data, by comparing with methods using transfer entropy and the Victor-Purpura distance. Synthetic data was generated using CERM (Coupled Escape-Rate Model), a model that generates various spike trains. Real data recorded from the visual cortex of an anaesthetized cat was analyzed as well. The results showed that the proposed method provides an effective way of estimating the connectivity of a network when the time sequences of events are the only available information.
机译:根据在每个节点上观察到的事件来估计网络的连通性有许多应用。在神经科学中发现了一个突出的例子,在每个神经元上都观察到了尖峰序列(动作电位序列),但是这些神经元的连接方式尚不清楚。本文介绍了一种使用事件时间序列之间的相似性度量来估计节点之间连接的新颖方法。具体来说,使用在尖峰序列上定义的归一化正定核。通过与使用转移熵和维克多-普尔普拉(Victor-Purpura)距离的方法进行比较,使用合成数据和真实数据对提出的方法进行了评估。使用CERM(耦合逃逸率模型)生成合成数据,CERM是一种生成各种峰值序列的模型。还分析了从麻醉猫的视觉皮层记录的真实数据。结果表明,当事件的时间序列是唯一可用的信息时,该方法为估计网络的连通性提供了一种有效的方法。

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