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Eigenvalues and Spectral Dimension of Random Geometric Graphs in Thermodynamic Regime

机译:热力学制度中随机几何图的特征值和光谱尺寸

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Network geometries are typically characterized by having a finite spectral dimension (SD), d_s that characterizes the return time distribution of a random walk on a graph. The main purpose of this work is to determine the SD of a variety of random graphs called random geometric graphs (RGGs) in the thermodynamic regime, in which the average vertex degree is constant. The spectral dimension depends on the eigenvalue density (ED) of the RGG normalized Laplacian in the neighborhood of the minimum eigenvalues. In fact, the behavior of the ED in such a neighborhood characterizes the random walk. Therefore, we first provide an analytical approximation for the eigenvalues of the regularized normalized Laplacian matrix of RGGs in the thermodynamic regime. Then, we show that the smallest non zero eigenvalue converges to zero in the large graph limit. Based on the analytical expression of the eigenvalues, we show that the eigenvalue distribution in a neighborhood of the minimum value follows a power-law tail. Using this result, we find that the SD of RGGs is approximated by the space dimension d in the thermodynamic regime.
机译:网络几何形状的特征通常是具有有限频谱维度(SD),D_S,其表征随机散步在图形上的返回时间分布。这项工作的主要目的是确定热力学制度中称为随机几何图(RGGS)的各种随机图的SD,其中平均顶点度是恒定的。光谱尺寸取决于最小特征值附近的RGG标准化Laplacian的特征值密度(Ed)。事实上,在这样的邻域中的ED的行为表征了随机步行。因此,我们首先为热力学制度中的RGGS的正规归一化Laplacian基质的特征值提供分析近似。然后,我们表明最小的非零特征值在大图限制中会聚到零。基于特征值的分析表达,我们表明最小值附近的特征值分布遵循动力法尾。使用此结果,发现RGGS的SD由热力学制度中的空间尺寸D近似。

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