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Predicting political attitudes from web tracking data: a machine learning approach

[journal article]

Kirkizh, Nora
Ulloa, Roberto
Stier, Sebastian
Pfeffer, Jürgen

Abstract

Anecdotal evidence suggests that the surge of populism and subsequent political polarization might make voters' political preferences more detectable from digital trace data. This potential scenario could expose voters to the risk of being targeted and easily influenced by political actors. This stu... view more

Anecdotal evidence suggests that the surge of populism and subsequent political polarization might make voters' political preferences more detectable from digital trace data. This potential scenario could expose voters to the risk of being targeted and easily influenced by political actors. This study investigates the linkage between over 19,000,000 website visits, tracked from 1,003 users in Germany, and their survey responses to explore whether website choices can accurately predict political attitudes across five dimensions: Immigration, democracy, issues (such as climate and the European Union), populism, and trust. Our findings indicate a limited ability to identify political attitudes from individuals' website visits. Our most effective machine learning algorithm predicted interest in politics and attitudes toward democracy but with dependency on model parameters. Although website categories exhibited suggestive patterns, they only marginally distinguished between individuals with anti- or pro-immigration attitudes, as well as those with populist or mainstream attitudes. This further confirm the reliability of surveys in measuring attitudes compared to digital trace data and, from a normative perspective, suggests that the potential to extract sensitive political information from online behavioral data, which could be utilized for microtargeting, remains limited.... view less

Keywords
populism; polarization; political opinion; political attitude; website; Internet; democracy; confidence; data protection; influence; Federal Republic of Germany

Classification
Political Process, Elections, Political Sociology, Political Culture
Methods and Techniques of Data Collection and Data Analysis, Statistical Methods, Computer Methods

Free Keywords
web tracking data; machine learning; surveys; life-style

Document language
English

Publication Year
2024

Page/Pages
p. 564-577

Journal
Journal of Information Technology & Politics, 21 (2024) 4

DOI
https://doi.org/10.1080/19331681.2024.2316679

ISSN
1933-169X

Status
Published Version; peer reviewed

Licence
Creative Commons - Attribution 4.0


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© 2007 - 2025 Social Science Open Access Repository (SSOAR).
Based on DSpace, Copyright (c) 2002-2022, DuraSpace. All rights reserved.