BiaSeer: A Visual Analytics System for Identifying and Understanding Media Bias

Guozheng Li, Shiyu Han, Jihe Wu, Jiale Hu, Yu Zhang, Chi Harold Liu

Research output: Contribution to journalArticlepeer-review

Abstract

Media bias refers to bias in news reporting and coverage that exists pervasively. By identifying media bias, social scientists can understand the different perspectives held by media outlets in news reporting. Existing studies only focus on the analysis of media bias of isolated incidents, but neglect their sustained characteristics. Thus, they cannot provide a comprehensive understanding of specific news topics. We develop BiaSeer, a visual analytics system for identifying and understanding sustained bias of media outlets. BiaSeer employs an overview-to-detail approach for interactive identification of media bias. The overview assists users in determining the analysis scope of media outlets. In addition, it visualizes the variances in coverage patterns between selected media outlets using a matrix visualization to facilitate the identification of biased news articles. BiaSeer visualizes the sustained bias in the context of the events evolution. It first summarizes news articles into events based on a keyword co-occurrence graph and then connects events into a narrative structure using a path-aware story tree construction method. In addition, BiaSeer integrates a sustained bias computation algorithm and enables analysts to compare the narrative structures of different media outlets using the juxtaposition-based visualization approach. We conducted a user experiment to validate the effectiveness of BiaSeer in helping social scientists understand news topics and the usability of visualization designs. To examine the effectiveness of BiaSeer, we conducted a case study with social scientists on the topics of the Russia-Ukraine conflict. The results demonstrate the utility and usability of BiaSeer in efficiently analyzing media bias and attaining a well-rounded understanding of news topics.

Original languageEnglish
Article numberCSCW038
JournalProceedings of the ACM on Human-Computer Interaction
Volume9
Issue number2
DOIs
Publication statusPublished - 2 May 2025

Keywords

  • media bias analysis
  • visual analytics
  • visualization

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