Media bias is a multifaceted problem, leading to one-sided views and impacting decision-making. A way to address digital media bias is to detect and indicate it automatically through machine-learning methods. However, such detection is limited due to the difficulty of obtaining reliable training data. Human-in-the-loop-based feedback mechanisms have proven an effective way to facilitate the data-gathering process. Therefore, we introduce and test feedback mechanisms for the media bias domain, which we then implement on NewsUnfold, a news-reading web application to collect reader feedback on machine-generated bias highlights within online news articles. Our approach augments dataset quality by significantly increasing inter-annotator agreement by 26.31% and improving classifier performance by 2.49%. As the first human-in-the-loop application for media bias, the feedback mechanism shows that a user-centric approach to media bias data collection can return reliable data while being scalable and evaluated as easy to use. NewsUnfold demonstrates that feedback mechanisms are a promising strategy to reduce data collection expenses and continuously update datasets to changes in context.
%0 Journal Article
%1 hinterreiter2025newsunfold
%A Hinterreiter, Smi
%A Wessel, Martin
%A Schliski, Fabian
%A Echizen, Isao
%A Latoschik, Marc Erich
%A Spinde, Timo
%D 2025
%J Proceedings of the International AAAI Conference on Web and Social Media
%K myown xrhub
%T NewsUnfold: Creating a News-Reading Application That Indicates Linguistic Media Bias and Collects Feedback
%U https://arxiv.org/abs/2407.17045
%V 19
%X Media bias is a multifaceted problem, leading to one-sided views and impacting decision-making. A way to address digital media bias is to detect and indicate it automatically through machine-learning methods. However, such detection is limited due to the difficulty of obtaining reliable training data. Human-in-the-loop-based feedback mechanisms have proven an effective way to facilitate the data-gathering process. Therefore, we introduce and test feedback mechanisms for the media bias domain, which we then implement on NewsUnfold, a news-reading web application to collect reader feedback on machine-generated bias highlights within online news articles. Our approach augments dataset quality by significantly increasing inter-annotator agreement by 26.31% and improving classifier performance by 2.49%. As the first human-in-the-loop application for media bias, the feedback mechanism shows that a user-centric approach to media bias data collection can return reliable data while being scalable and evaluated as easy to use. NewsUnfold demonstrates that feedback mechanisms are a promising strategy to reduce data collection expenses and continuously update datasets to changes in context.
@article{hinterreiter2025newsunfold,
abstract = {Media bias is a multifaceted problem, leading to one-sided views and impacting decision-making. A way to address digital media bias is to detect and indicate it automatically through machine-learning methods. However, such detection is limited due to the difficulty of obtaining reliable training data. Human-in-the-loop-based feedback mechanisms have proven an effective way to facilitate the data-gathering process. Therefore, we introduce and test feedback mechanisms for the media bias domain, which we then implement on NewsUnfold, a news-reading web application to collect reader feedback on machine-generated bias highlights within online news articles. Our approach augments dataset quality by significantly increasing inter-annotator agreement by 26.31% and improving classifier performance by 2.49%. As the first human-in-the-loop application for media bias, the feedback mechanism shows that a user-centric approach to media bias data collection can return reliable data while being scalable and evaluated as easy to use. NewsUnfold demonstrates that feedback mechanisms are a promising strategy to reduce data collection expenses and continuously update datasets to changes in context.},
added-at = {2024-07-22T12:15:30.000+0200},
author = {Hinterreiter, Smi and Wessel, Martin and Schliski, Fabian and Echizen, Isao and Latoschik, Marc Erich and Spinde, Timo},
biburl = {https://www.bibsonomy.org/bibtex/2fa14ab82213590bc1586b46f4de5ce32/hci-uwb},
interhash = {08eaed42d16890431eecca43c3557a17},
intrahash = {fa14ab82213590bc1586b46f4de5ce32},
journal = {Proceedings of the International AAAI Conference on Web and Social Media},
keywords = {myown xrhub},
language = {en},
month = {June},
note = {Conditionally accepted for publication},
timestamp = {2024-12-09T13:39:24.000+0100},
title = {NewsUnfold: Creating a News-Reading Application That Indicates Linguistic Media Bias and Collects Feedback},
url = {https://arxiv.org/abs/2407.17045},
volume = 19,
year = 2025
}