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NewsUnfold: Creating a News-Reading Application That Indicates Linguistic Media Bias and Collects Feedback (2407.17045v2)

Published 24 Jul 2024 in cs.HC

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.

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Authors (6)
  1. Smi Hinterreiter (4 papers)
  2. Martin Wessel (3 papers)
  3. Fabian Schliski (1 paper)
  4. Isao Echizen (83 papers)
  5. Marc Erich Latoschik (13 papers)
  6. Timo Spinde (20 papers)

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