有向图中的邻域在二元动力学分类中的应用。

IF 3.1
Pedro Conceição, Dejan Govc, Jānis Lazovskis, Ran Levi, Henri Riihimäki, Jason P Smith
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引用次数: 3

摘要

图上的二进制状态意味着对其顶点的二进制值赋值。与时间相关的二元状态序列称为二元动力学。我们描述了一种对有向图的二元动态进行分类的方法,该方法使用了封闭邻域的特定选择。我们的动机和应用来自神经科学,其中有向图是神经元及其连接的抽象,其中大量数据的简化是任何计算的关键。我们提出了一种拓扑/图论方法,用于从图上的二进制动态中提取信息,该方法基于相对少量顶点及其邻域的选择。我们考虑了封闭邻域上已有的实值函数,并引入了新的实值函数,比较了它们对不同二元动态的准确分类能力。我们描述了一个使用两个参数的分类算法,并建立了一个机器学习管道。我们证明了该方法在模拟大鼠皮质组织的数字重建活动和具有相似密度的非生物随机图上的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

An application of neighbourhoods in digraphs to the classification of binary dynamics.

An application of neighbourhoods in digraphs to the classification of binary dynamics.

An application of neighbourhoods in digraphs to the classification of binary dynamics.

An application of neighbourhoods in digraphs to the classification of binary dynamics.

A binary state on a graph means an assignment of binary values to its vertices. A time-dependent sequence of binary states is referred to as binary dynamics. We describe a method for the classification of binary dynamics of digraphs, using particular choices of closed neighbourhoods. Our motivation and application comes from neuroscience, where a directed graph is an abstraction of neurons and their connections, and where the simplification of large amounts of data is key to any computation. We present a topological/graph theoretic method for extracting information out of binary dynamics on a graph, based on a selection of a relatively small number of vertices and their neighbourhoods. We consider existing and introduce new real-valued functions on closed neighbourhoods, comparing them by their ability to accurately classify different binary dynamics. We describe a classification algorithm that uses two parameters and sets up a machine learning pipeline. We demonstrate the effectiveness of the method on simulated activity on a digital reconstruction of cortical tissue of a rat, and on a nonbiological random graph with similar density.

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