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Autori principali: Gehlot, Hemant Kumar, Shirzadi, Mohammad, Gan, Junhao, Zehmakan, Ahad N.
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2511.12106
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author Gehlot, Hemant Kumar
Shirzadi, Mohammad
Gan, Junhao
Zehmakan, Ahad N.
author_facet Gehlot, Hemant Kumar
Shirzadi, Mohammad
Gan, Junhao
Zehmakan, Ahad N.
contents Social media has transformed global communication, yet its network structure can systematically distort perceptions through effects like the majority illusion and echo chambers. We introduce the perception gap index, a graph-based measure that quantifies local-global opinion divergence, which can be viewed as a generalization of the majority illusion to continuous settings. Using techniques from spectral graph theory, we demonstrate that higher connectivity makes networks more resilient to perception distortion. Our analysis of stochastic block models, however, shows that pronounced community structure increases vulnerability. We also study the problem of minimizing the perception gap via link recommendation with a fixed budget. We prove that this problem does not admit a polynomial-time algorithm for any bounded approximation ratio, unless P = NP. However, we propose a collection of efficient heuristic methods that have been demonstrated to produce near-optimal solutions on real-world network data.
format Preprint
id arxiv_https___arxiv_org_abs_2511_12106
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Quantifying and Minimizing Perception Gap in Social Networks
Gehlot, Hemant Kumar
Shirzadi, Mohammad
Gan, Junhao
Zehmakan, Ahad N.
Social and Information Networks
Social media has transformed global communication, yet its network structure can systematically distort perceptions through effects like the majority illusion and echo chambers. We introduce the perception gap index, a graph-based measure that quantifies local-global opinion divergence, which can be viewed as a generalization of the majority illusion to continuous settings. Using techniques from spectral graph theory, we demonstrate that higher connectivity makes networks more resilient to perception distortion. Our analysis of stochastic block models, however, shows that pronounced community structure increases vulnerability. We also study the problem of minimizing the perception gap via link recommendation with a fixed budget. We prove that this problem does not admit a polynomial-time algorithm for any bounded approximation ratio, unless P = NP. However, we propose a collection of efficient heuristic methods that have been demonstrated to produce near-optimal solutions on real-world network data.
title Quantifying and Minimizing Perception Gap in Social Networks
topic Social and Information Networks
url https://arxiv.org/abs/2511.12106