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Main Authors: Lüken, Malte, Garcia-Bernardo, Javier, Deb, Sreeparna, Hafner, Flavio, Khosla, Megha
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.21236
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author Lüken, Malte
Garcia-Bernardo, Javier
Deb, Sreeparna
Hafner, Flavio
Khosla, Megha
author_facet Lüken, Malte
Garcia-Bernardo, Javier
Deb, Sreeparna
Hafner, Flavio
Khosla, Megha
contents Administrative registry data can be used to construct population-scale networks whose ties reflect shared social contexts between persons. With machine learning, such networks can be encoded into numerical representations -- embeddings -- that automatically capture an individual's position within the network. We created embeddings for all persons in the Dutch population from a population-scale network that represents five shared contexts: neighborhood, work, family, household, and school. To assess the informativeness of these embeddings, we used them to predict right-wing populist voting. Embeddings alone predicted right-wing populist voting above chance-level but performed worse than individual characteristics. Combining the best subset of embeddings with individual characteristics only slightly improved predictions. After transforming the embeddings to make their dimensions more sparse and orthogonal, we found that one embedding dimension was strongly associated with the outcome. Mapping this dimension back to the population network revealed that differences in educational ties and attainment corresponded to distinct network structures associated with right-wing populist voting. Our study contributes methodologically by demonstrating how population-scale network embeddings can be made interpretable, and substantively by linking structural network differences in education to right-wing populist voting.
format Preprint
id arxiv_https___arxiv_org_abs_2508_21236
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Population-Scale Network Embeddings Expose Educational Divides in Network Structure Related to Right-Wing Populist Voting
Lüken, Malte
Garcia-Bernardo, Javier
Deb, Sreeparna
Hafner, Flavio
Khosla, Megha
Social and Information Networks
Machine Learning
Applications
J.4
Administrative registry data can be used to construct population-scale networks whose ties reflect shared social contexts between persons. With machine learning, such networks can be encoded into numerical representations -- embeddings -- that automatically capture an individual's position within the network. We created embeddings for all persons in the Dutch population from a population-scale network that represents five shared contexts: neighborhood, work, family, household, and school. To assess the informativeness of these embeddings, we used them to predict right-wing populist voting. Embeddings alone predicted right-wing populist voting above chance-level but performed worse than individual characteristics. Combining the best subset of embeddings with individual characteristics only slightly improved predictions. After transforming the embeddings to make their dimensions more sparse and orthogonal, we found that one embedding dimension was strongly associated with the outcome. Mapping this dimension back to the population network revealed that differences in educational ties and attainment corresponded to distinct network structures associated with right-wing populist voting. Our study contributes methodologically by demonstrating how population-scale network embeddings can be made interpretable, and substantively by linking structural network differences in education to right-wing populist voting.
title Population-Scale Network Embeddings Expose Educational Divides in Network Structure Related to Right-Wing Populist Voting
topic Social and Information Networks
Machine Learning
Applications
J.4
url https://arxiv.org/abs/2508.21236