A new version of this entry is available:
Loading...
Article
2025
Not our kind of crowd! How partisan bias distorts perceptions of political bots on Twitter (now X)
Not our kind of crowd! How partisan bias distorts perceptions of political bots on Twitter (now X)
Abstract (English)
Social bots, employed to manipulate public opinion, pose a novel threat to digital societies. Existing bot research has emphasized technological aspects while neglecting psychological factors shaping human–bot interactions. This research addresses this gap within the context of the US‐American electorate. Two datasets provide evidence that partisanship distorts (a) online users' representation of bots, (b) their ability to identify them, and (c) their intentions to interact with them. Study 1 explores global bot perceptions on through survey data from N = 452 Twitter (now X) users. Results suggest that users tend to attribute bot‐related dangers to political adversaries, rather than recognizing bots as a shared threat to political discourse. Study 2 ( N = 619) evaluates the consequences of such misrepresentations for the quality of online interactions. In an online experiment, participants were asked to differentiate between human and bot profiles. Results indicate that partisan leanings explained systematic judgement errors. The same data suggest that participants aim to avoid interacting with bots. However, biased judgements may undermine this motivation in praxis. In sum, the presented findings underscore the importance of interdisciplinary strategies that consider technological and human factors to address the threats posed by bots in a rapidly evolving digital landscape.
File is subject to an embargo until
This is a correction to:
A correction to this entry is available:
This is a new version of:
Other version
Notes
Publication license
Publication series
Published in
The British journal of social psychology, 64 (2025), 2, e12794.
https://doi.org/10.1111/bjso.12794.
ISSN: 2044-8309
Other version
Faculty
Institute
Examination date
Supervisor
Edition / version
Citation
DOI
ISSN
ISBN
Language
English
Publisher
Publisher place
Classification (DDC)
300 Social sciences, sociology, and anthropology
Collections
Original object
Standardized keywords (GND)
Sustainable Development Goals
BibTeX
@article{Lüders2025,
doi = {10.1111/bjso.12794},
author = {Lüders, Adrian and Reiss, Stefan and Dinkelberg, Alejandro et al.},
title = {Not our kind of crowd! How partisan bias distorts perceptions of political bots on Twitter (now X)},
journal = {The British journal of social psychology},
year = {2025},
volume = {64},
number = {2},
pages = {--},
}