A Multi-View Media Profiling Suite: Resources, Evaluation, and Analysis

arXiv cs.CL / 5/5/2026

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Key Points

  • The paper proposes a multi-view media profiling suite to detect political bias and assess factuality, addressing gaps in unified datasets, broad evaluations, and analyses of representations and fusion methods.
  • It introduces MBFC-2025, a large-scale label set covering about 2,600 news outlets sourced from Media Bias/Fact Check (MBFC).
  • It builds multi-view representations for both ACL-2020 (~900 outlets) and MBFC-2025, drawing from multiple modalities such as Alexa graphs, hyperlink graphs, LLM-derived graphs, article content, and Wikipedia descriptions.
  • The authors deliver a systematic comparison of embedding views and fusion strategies, including a reinforcement learning-based fusion approach, and report extensive experiments with state-of-the-art performance on ACL-2020 plus strong benchmarks on MBFC-2025.

Abstract

News outlets shape public opinion at a scale that makes automated detection of political bias and factuality essential. However, the field still lacks unified resources, comprehensive evaluations across diverse approaches, and systematic analyses of the representations and fusion strategies that matter most, especially under label sparsity and dataset diversity. In addition, there is little empirical work reporting broad, observation-driven findings about what consistently works, what fails, and why. We address these gaps through four main contributions. First, we introduce MBFC-2025, a large-scale label set covering approximately 2,600 outlets from Media Bias/Fact Check (MBFC). Second, we construct multiview representations for ACL-2020 (Panayotov et al., 2022), which includes around 900 outlets, as well as for MBFC-2025. These representations span Alexa graphs, hyperlink graphs, LLM-derived graphs, articles, and Wikipedia descriptions. Third, we provide a systematic evaluation and analysis of embedding views and fusion strategies, including a reinforcement learning-based fusion variant. Fourth, we conduct extensive experiments that achieve state-of-the-art results on ACL-2020 and establish strong benchmarks on MBFC-2025.

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