Misinformation Span Detection in Videos via Audio Transcripts

arXiv cs.CL / 4/24/2026

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Key Points

  • The paper addresses the problem of online misinformation, highlighting that video-based misinformation is especially difficult for fact-checkers due to the ease of recording and uploading clips.
  • It moves beyond video-level misinformation detection by introducing “misinformation span detection,” aiming to pinpoint the exact segment of a video responsible for the misinformation claim.
  • The authors create two new datasets by transcribing each video’s audio and annotating over 500 videos and 2,400+ segments with fact-checked claims tied to specific time spans.
  • Using classifiers built on state-of-the-art language models, the study reports an F1 score of 0.68 for identifying where within a video the misinformation occurs.
  • The work also releases annotated datasets and all transcripts, audio, and videos publicly to enable further research and reproducibility.

Abstract

Online misinformation is one of the most challenging issues lately, yielding severe consequences, including political polarization, attacks on democracy, and public health risks. Misinformation manifests in any platform with a large user base, including online social networks and messaging apps. It permeates all media and content forms, including images, text, audio, and video. Distinctly, video-based misinformation represents a multifaceted challenge for fact-checkers, given the ease with which individuals can record and upload videos on various video-sharing platforms. Previous research efforts investigated detecting video-based misinformation, focusing on whether a video shares misinformation or not on a video level. While this approach is useful, it only provides a limited and non-easily interpretable view of the problem given that it does not provide an additional context of when misinformation occurs within videos and what content (i.e., claims) are responsible for the video's misinformation nature. In this work, we attempt to bridge this research gap by creating two novel datasets that allow us to explore misinformation detection on videos via audio transcripts, focusing on identifying the span of videos that are responsible for the video's misinformation claim (misinformation span detection). We present two new datasets for this task. We transcribe each video's audio to text, identifying the video segment in which the misinformation claims appears, resulting in two datasets of more than 500 videos with over 2,400 segments containing annotated fact-checked claims. Then, we employ classifiers built with state-of-the-art language models, and our results show that we can identify in which part of a video there is misinformation with an F1 score of 0.68. We make publicly available our annotated datasets. We also release all transcripts, audio and videos.