Enhancing Media Literacy: The Effectiveness of (Human) Annotations and Bias Visualizations on Bias Detection
Timo Spinde, Fei Wu, Wolfgang Gaissmaier, Gianluca Demartini, Helge, Giese

TL;DR
This study investigates how human and AI-generated bias labels in news articles can improve media bias detection and generalize to new topics, with implications for media literacy education and platform design.
Contribution
It provides experimental evidence on the effectiveness and generalizability of bias labels from different sources in training media bias detection skills.
Findings
Both human and AI bias labels improve bias detection accuracy.
Human labels have a larger effect size and significance.
Mere exposure to materials also enhances bias detection skills.
Abstract
Marking biased texts is a practical approach to increase media bias awareness among news consumers. However, little is known about the generalizability of such awareness to new topics or unmarked news articles, and the role of machine-generated bias labels in enhancing awareness remains unclear. This study tests how news consumers may be trained and pre-bunked to detect media bias with bias labels obtained from different sources (Human or AI) and in various manifestations. We conducted two experiments with 470 and 846 participants, exposing them to various bias-labeling conditions. We subsequently tested how much bias they could identify in unlabeled news materials on new topics. The results show that both Human (t(467) = 4.55, p < .001, d = 0.42) and AI labels (t(467) = 2.49, p = .039, d = 0.23) increased correct detection compared to the control group. Human labels demonstrate larger…
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Taxonomy
TopicsOnline Learning and Analytics
