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Bibliographic Details
Main Author: Zheng, Runbing
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2502.01947
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author Zheng, Runbing
author_facet Zheng, Runbing
contents Pairwise network comparison is essential for various applications, including neuroscience, disease research, and dynamic network analysis. While existing literature primarily focuses on comparing entire network structures, we address a vertex-wise comparison problem where two random networks share the same set of vertices but allow for structural variations in some vertices, enabling a more detailed and flexible analysis of network differences. In our framework, some vertices retain their latent positions between networks, while others undergo shifts. To identify the shifted and unshifted vertices and estimate their latent position shifts, we propose a method that first derives vertex embeddings in a low-rank Euclidean space for each network, then aligns these estimated vertex latent positions into a common space to resolve potential non-identifiability, and finally tests whether each vertex is shifted or not and estimates the vertex shifts. Our theoretical results establish the test statistic for the algorithms, guide parameter selection, and provide performance guarantees. Simulation studies and real data applications, including a case-control study in disease research and dynamic network analysis, demonstrate that the proposed algorithms are both computationally efficient and effective in extracting meaningful insights from network comparisons.
format Preprint
id arxiv_https___arxiv_org_abs_2502_01947
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Detection and estimation of vertex-wise latent position shifts across networks
Zheng, Runbing
Methodology
Pairwise network comparison is essential for various applications, including neuroscience, disease research, and dynamic network analysis. While existing literature primarily focuses on comparing entire network structures, we address a vertex-wise comparison problem where two random networks share the same set of vertices but allow for structural variations in some vertices, enabling a more detailed and flexible analysis of network differences. In our framework, some vertices retain their latent positions between networks, while others undergo shifts. To identify the shifted and unshifted vertices and estimate their latent position shifts, we propose a method that first derives vertex embeddings in a low-rank Euclidean space for each network, then aligns these estimated vertex latent positions into a common space to resolve potential non-identifiability, and finally tests whether each vertex is shifted or not and estimates the vertex shifts. Our theoretical results establish the test statistic for the algorithms, guide parameter selection, and provide performance guarantees. Simulation studies and real data applications, including a case-control study in disease research and dynamic network analysis, demonstrate that the proposed algorithms are both computationally efficient and effective in extracting meaningful insights from network comparisons.
title Detection and estimation of vertex-wise latent position shifts across networks
topic Methodology
url https://arxiv.org/abs/2502.01947