高阶精确的双样本网络推断与网络哈希

Higher-Order Accurate Two-Sample Network Inference and Network Hashing

Journal of the American Statistical Association · 2025
被引 1
ABS 4

中文导读

提出一套高阶精确的双样本网络比较方法,无需重复观测或节点对齐,速度快、精度高,并支持网络数据库的快速哈希查询。

Abstract

Two-sample hypothesis testing for network comparison presents many significant challenges, including: leveraging repeated network observations and known node registration, but without requiring them to operate; relaxing strong structural assumptions; achieving finite-sample higher-order accuracy; handling different network sizes and sparsity levels; fast computation and memory parsimony; controlling false discovery rate (FDR) in multiple testing; and theoretical understandings, particularly regarding finite-sample accuracy and minimax optimality. In this paper, we develop a comprehensive toolbox, featuring a novel main method and its variants, all accompanied by strong theoretical guarantees, to address these challenges. Our method outperforms existing tools in speed and accuracy, and it is proved power-optimal. Our algorithms are user-friendly and versatile in handling various data structures (single or repeated network observations; known or unknown node registration). We also develop an innovative framework for offline hashing and fast querying as a very useful tool for large network databases. We showcase the effectiveness of our method through comprehensive simulations and applications to two real-world datasets, which revealed intriguing new structures.

网络分析假设检验统计推断机器学习