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Goodness-of-Fit Tests for Inhomogeneous Random Graphs

机译:非齐次随机图的拟合优度检验

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Hypothesis testing of random networks is an emerging area of modern research, especially in the high-dimensional regime, where the number of samples is smaller or comparable to the size of the graph. In this paper we consider the goodness-of-fit testing problem for large inhomogeneous random (IER) graphs, where given a (known) reference symmetric matrix Q ∈ [0, 1]~(n×n) and m independent samples from an IER graph given by an unknown symmetric matrix P ∈ [0, 1]~(n×n), the goal is to test the hypothesis P = Q versus ||P - Q|| ≥ ε, where || · || is some specified norm on symmetric matrices. Building on recent related work on two-sample testing for IER graphs, we derive the optimal minimax sample complexities for the goodness-of-fit problem in various natural norms, such as the Frobenius norm and the operator norm. We also propose practical implementations of natural test statistics, using their asymptotic distributions and through the parametric bootstrap. We compare the performances of the different tests in simulations, and show that the proposed tests outperform the baseline tests across various natural random graphs models.
机译:随机网络的假设检验是现代研究的一个新兴领域,尤其是在高维领域,在高维领域中,样本数量较小或与图的大小相当。本文考虑大非齐次随机(耶尔河)图的拟合优度检验问题,给出了一个(已知)参考对称矩阵Q。∈ 未知对称矩阵P给出的IER图中的[0,1]~(n×n)和m个独立样本∈ [0,1]~(n×n),目标是检验假设P=Q与| | P-Q | |≥ ε、 其中| |·| |是对称矩阵上的某种特定范数。基于最近关于IER图的两个样本测试的相关工作,我们推导了各种自然范数(如Frobenius范数和算子范数)下拟合优度问题的最优极大极小样本复杂度。我们还提出了自然测试统计的实际实现,使用它们的渐近分布和参数引导。我们在仿真中比较了不同测试的性能,并表明在各种自然随机图模型中,所提出的测试优于基线测试。

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