从高斯图形模型和高斯自由场学习网络

IF 1.3 3区 物理与天体物理 Q3 PHYSICS, MATHEMATICAL Journal of Statistical Physics Pub Date : 2024-04-01 DOI:10.1007/s10955-024-03257-0
Subhro Ghosh, Soumendu Sundar Mukherjee, Hoang-Son Tran, Ujan Gangopadhyay
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引用次数: 0

摘要

我们研究的问题是如何通过对加权网络的高斯图形模型(GGM)的重复测量来估计该网络的结构。为此,我们考虑了协方差结构与加权网络几何结构一致的 GGM。这种 GGM 长期以来一直受到统计物理学的关注,被称为高斯自由场(GFF)。近年来,它们引起了机器学习和理论计算机科学的极大兴趣。在这项工作中,我们根据高斯分布的傅立叶分析特性,提出了一种新的估计方法,即通过对网络上的高斯自由场的重复测量,对加权网络(等同于其拉普拉卡)进行估计。在这一过程中,我们的方法利用了从观测数据中构建的复值统计量,这些数据本身就很有意义。我们用具体的恢复保证和所需样本复杂度的界限证明了我们的估计器的有效性。特别是,我们证明了在网络规模固定的情况下,所提出的统计量达到了参数估计率。在网络随样本量增长的情况下,我们的结果表明,对于连通性阈值以上的鄂尔多斯-雷尼随机图 G(d,p),只要样本量 n 满足 (n \gg d^4 \log d \cdot p^{-2}/),网络恢复就会以很高的概率发生。
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Learning Networks from Gaussian Graphical Models and Gaussian Free Fields

We investigate the problem of estimating the structure of a weighted network from repeated measurements of a Gaussian graphical model (GGM) on the network. In this vein, we consider GGMs whose covariance structures align with the geometry of the weighted network on which they are based. Such GGMs have been of longstanding interest in statistical physics, and are referred to as the Gaussian free field (GFF). In recent years, they have attracted considerable interest in the machine learning and theoretical computer science. In this work, we propose a novel estimator for the weighted network (equivalently, its Laplacian) from repeated measurements of a GFF on the network, based on the Fourier analytic properties of the Gaussian distribution. In this pursuit, our approach exploits complex-valued statistics constructed from observed data, that are of interest in their own right. We demonstrate the effectiveness of our estimator with concrete recovery guarantees and bounds on the required sample complexity. In particular, we show that the proposed statistic achieves the parametric rate of estimation for fixed network size. In the setting of networks growing with sample size, our results show that for Erdos–Renyi random graphs G(dp) above the connectivity threshold, network recovery takes place with high probability as soon as the sample size n satisfies \(n \gg d^4 \log d \cdot p^{-2}\).

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来源期刊
Journal of Statistical Physics
Journal of Statistical Physics 物理-物理:数学物理
CiteScore
3.10
自引率
12.50%
发文量
152
审稿时长
3-6 weeks
期刊介绍: The Journal of Statistical Physics publishes original and invited review papers in all areas of statistical physics as well as in related fields concerned with collective phenomena in physical systems.
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