Populists’ Use of Nostalgia: A Supervised Machine Learning Approach

Frischlich L, Clever L, Wulf T, Wildschut T, Sedikides C

Research article (journal) | Peer reviewed

Abstract

An emotion that has recently gained traction in the context of populism is nostalgia, a sentimental longing or wistful affection for the past. Nostalgia can refer to the past of one’s group or nation, as reflected in populists’ narratives of the heartland—the vision of a utopian future based on an idealized past in which their country belonged to the “pure people.” However, research on nostalgia in political communication across the political aisle is scarce. The current study aimed to fill this gap via supervised machine learning. First, we used an experimental approach established in psychology to create a groundtruth data set and trained and evaluated a classifier for detecting nostalgic sentiment in the German language. We then applied this classifier to a large database (N = 4,022) of German political parties’ Facebook posts. We demonstrate that (a) populist (vs. nonpopulist)— especially right-wing—parties employ nostalgia more frequently; (b) nostalgic narratives differ between parties, and (c) nostalgic (vs. non-nostalgic) posts are associated with more user engagement

Details about the publication

JournalInternational Journal of Communication (Int J Commun)
Volume17
IssueMarch
Page range2113-2137
StatusPublished
Release year2023
Language in which the publication is writtenEnglish
Link to the full texthttps://ijoc.org/index.php/ijoc/article/view/19063
KeywordsPopulism; Social Media; Machine Learning; Nostalgia

Authors from the University of Münster

Clever, Lena
Data Science: Statistics and Optimization (Statistik)
Frischlich, Lena
Professur für Kommunikationswissenschaft, Schwerpunkt: Onlinekommunikation (Prof. Quandt)