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Percolation under Noise: Detecting Explosive Percolation Using the Second Largest Component

机译:噪声下的渗滤:使用第二大成分检测爆炸性渗滤

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摘要

We consider the problem of distinguishing classical (Erdős-Rényi) percolation from explosive (Achlioptas) percolation, under noise. A statistical model of percolation is constructed allowing for the birth and death of edges as well as the presence of noise in the observations. This graph-valued stochastic process is composed of a latent and an observed non-stationary process, where the observed graph process is corrupted by Type I and Type II errors. This produces a hidden Markov graph model. We show that for certain choices of parameters controlling the noise, the classical (ER) percolation is visually indistinguishable from the explosive (Achlioptas) percolation model. In this setting, we compare two different criteria for discriminating between these two percolation models, based on a quantile difference (QD) of the first component’s size and on the maximal size of the second largest component. We show through data simulations that this second criterion outperforms the QD of the first component’s size, in terms of discriminatory power. The maximal size of the second component therefore provides a useful statistic for distinguishing between the ER and Achlioptas models of percolation, under physically motivated conditions for the birth and death of edges, and under noise. The potential application of the proposed criteria for percolation detection in clinical neuroscience is also discussed.
机译:我们考虑了在噪声下将经典(Erdős-Rényi)渗透与爆炸(Achlioptas)渗透区别开的问题。构建渗滤统计模型,以允许边缘的生成和死亡以及观察结果中存在噪声。这个图值随机过程由一个潜伏和一个观察到的非平稳过程组成,其中观察到的图过程被类型I和类型II错误所破坏。这将产生一个隐藏的马尔可夫图模型。我们表明,对于控制噪声的某些参数选择,经典(ER)渗滤在视觉上与炸药(Achlioptas)渗滤模型没有区别。在这种情况下,我们将根据第一个组件大小的分位数差异(QD)和第二个最大组件的最大大小,比较区分这两个渗滤模型的两种不同标准。我们通过数据模拟表明,就判别力而言,第二个条件优于第一个元素的尺寸的QD。因此,第二部分的最大大小提供了有用的统计数据,可用于区分在边缘运动的原因和边缘的生死条件下,渗流的ER模型和Achlioptas模型的渗流。还讨论了提出的渗流检测标准在临床神经科学中的潜在应用。

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