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Main Authors: Wang, Lijia, Han, Xiao, Wu, Yanhui, Wang, Y. X. Rachel
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2502.16504
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author Wang, Lijia
Han, Xiao
Wu, Yanhui
Wang, Y. X. Rachel
author_facet Wang, Lijia
Han, Xiao
Wu, Yanhui
Wang, Y. X. Rachel
contents In social networks, neighborhood is crucial for understanding individual behavior in response to environments, and thus it is essential to analyze an individual's local perspective within the global network. This paper studies how to utilize a partial information network centered around a given individual for global network estimation by fitting a general latent space model. Compared to the entire network, the partial information network contains a significant proportion of missing edges with its structure depending on a random, potentially sparse neighborhood, posing significant challenges for estimation. We address the challenges by proposing a projected gradient descent algorithm for maximizing the likelihood of the observed data and develop theoretical guarantees for its convergence under different neighborhood structures. Our convergence rates and estimation error bounds highlight the impact of bias in an individual's local view of the global network, and we further show that the bias can be quantified with an imbalance measure. Using simulated and real networks, we demonstrate the performance of our estimation method and how our approach enables researchers to gain additional insights into the structure of social networks, such as the tradeoff between degrees and imbalance.
format Preprint
id arxiv_https___arxiv_org_abs_2502_16504
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Local Information for Global Network Estimation in Latent Space Models
Wang, Lijia
Han, Xiao
Wu, Yanhui
Wang, Y. X. Rachel
Methodology
In social networks, neighborhood is crucial for understanding individual behavior in response to environments, and thus it is essential to analyze an individual's local perspective within the global network. This paper studies how to utilize a partial information network centered around a given individual for global network estimation by fitting a general latent space model. Compared to the entire network, the partial information network contains a significant proportion of missing edges with its structure depending on a random, potentially sparse neighborhood, posing significant challenges for estimation. We address the challenges by proposing a projected gradient descent algorithm for maximizing the likelihood of the observed data and develop theoretical guarantees for its convergence under different neighborhood structures. Our convergence rates and estimation error bounds highlight the impact of bias in an individual's local view of the global network, and we further show that the bias can be quantified with an imbalance measure. Using simulated and real networks, we demonstrate the performance of our estimation method and how our approach enables researchers to gain additional insights into the structure of social networks, such as the tradeoff between degrees and imbalance.
title Local Information for Global Network Estimation in Latent Space Models
topic Methodology
url https://arxiv.org/abs/2502.16504