Multimodal Analysis of State-Funded News Coverage of the Israel-Hamas War on YouTube Shorts
AI 摘要
分析YouTube Shorts上国家资助媒体对以哈冲突的多模态报道,揭示情绪和视觉线索。
主要贡献
- 提出一个结合自动转录、情感分析和场景分类的多模态分析流程
- 分析了2300个与冲突相关的Shorts和94000多个视觉帧
- 发现针对特定方面的情感在不同媒体和时间段存在差异
方法论
采用自动转录、基于方面的情感分析(ABSA)和语义场景分类相结合的多模态分析流程。
原文摘要
YouTube Shorts have become central to news consumption on the platform, yet research on how geopolitical events are represented in this format remains limited. To address this gap, we present a multimodal pipeline that combines automatic transcription, aspect-based sentiment analysis (ABSA), and semantic scene classification. The pipeline is first assessed for feasibility and then applied to analyze short-form coverage of the Israel-Hamas war by state-funded outlets. Using over 2,300 conflict-related Shorts and more than 94,000 visual frames, we systematically examine war reporting across major international broadcasters. Our findings reveal that the sentiment expressed in transcripts regarding specific aspects differs across outlets and over time, whereas scene-type classifications reflect visual cues consistent with real-world events. Notably, smaller domain-adapted models outperform large transformers and even LLMs for sentiment analysis, underscoring the value of resource-efficient approaches for humanities research. The pipeline serves as a template for other short-form platforms, such as TikTok and Instagram, and demonstrates how multimodal methods, combined with qualitative interpretation, can characterize sentiment patterns and visual cues in algorithmically driven video environments.