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Influence Pathway Discovery on Social Media

Authors :
Liu, Xinyi
Wang, Ruijie
Sun, Dachun
Li, Jinning
Youn, Christina
Lyu, You
Zhan, Jianyuan
Wu, Dayou
Xu, Xinhe
Liu, Mingjun
Lei, Xinshuo
Xu, Zhihao
Zhang, Yutong
Li, Zehao
Yang, Qikai
Abdelzaher, Tarek
Publication Year :
2023

Abstract

This paper addresses influence pathway discovery, a key emerging problem in today's online media. We propose a discovery algorithm that leverages recently published work on unsupervised interpretable ideological embedding, a mapping of ideological beliefs (done in a self-supervised fashion) into interpretable low-dimensional spaces. Computing the ideological embedding at scale allows one to analyze correlations between the ideological positions of leaders, influencers, news portals, or population segments, deriving potential influence pathways. The work is motivated by the importance of social media as the preeminent means for global interactions and collaborations on today's Internet, as well as their frequent (mis-)use to wield influence that targets social beliefs and attitudes of selected populations. Tools that enable the understanding and mapping of influence propagation through population segments on social media are therefore increasingly important. In this paper, influence is measured by the perceived ideological shift over time that is correlated with influencers' activity. Correlated shifts in ideological embeddings indicate changes, such as swings/switching (among competing ideologies), polarization (depletion of neutral ideological positions), escalation/radicalization (shifts to more extreme versions of the ideology), or unification/cooldown (shifts towards more neutral stances). Case-studies are presented to explore selected influence pathways (i) in a recent French election, (ii) during political discussions in the Philippines, and (iii) for some Russian messaging during the Russia/Ukraine conflict.<br />Comment: This paper is accepted by IEEE CIC as an invited vision paper

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.16071
Document Type :
Working Paper