Modeling the social media relationships of Irish politicians using a generalized latent space stochastic blockmodel
Tin Lok James Ng, Thomas Brendan Murphy, Ted Westling, Tyler H., McCormick, Bailey K. Fosdick

TL;DR
This paper introduces a generalized latent space stochastic blockmodel to analyze Irish politicians' Twitter relationships, revealing that political party membership largely influences social media connections and providing insights into political alignment.
Contribution
The paper develops a novel statistical model combining latent space and stochastic blockmodels, enabling detailed analysis of social media networks among politicians.
Findings
Political party membership influences Twitter following patterns.
Model captures transitivity, clustering, and disassortative mixing.
Model outputs inform understanding of voting behavior.
Abstract
D\'ail \'Eireann is the principal chamber of the Irish parliament. The 31st D\'ail \'Eireann is the principal chamber of the Irish parliament. The 31st D\'ail was in session from March 11th, 2011 to February 6th, 2016. Many of the members of the D\'ail were active on social media and many were Twitter users who followed other members of the D\'ail. The pattern of following amongst these politicians provides insights into political alignment within the D\'ail. We propose a new model, called the generalized latent space stochastic blockmodel, which extends and generalizes both the latent space model and the stochastic blockmodel to study social media connections between members of the D\'ail. The probability of an edge between two nodes in a network depends on their respective class labels as well as latent positions in an unobserved latent space. The proposed model is capable of…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Complex Network Analysis Techniques · Social Media and Politics
