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Predicting the Factuality of Reporting of News Media Using Observations About User Attention in Their YouTube Channels (2108.12519v1)
Published 27 Aug 2021 in cs.CL, cs.IR, cs.LG, and cs.SI
Abstract: We propose a novel framework for predicting the factuality of reporting of news media outlets by studying the user attention cycles in their YouTube channels. In particular, we design a rich set of features derived from the temporal evolution of the number of views, likes, dislikes, and comments for a video, which we then aggregate to the channel level. We develop and release a dataset for the task, containing observations of user attention on YouTube channels for 489 news media. Our experiments demonstrate both complementarity and sizable improvements over state-of-the-art textual representations.
- Krasimira Bozhanova (1 paper)
- Yoan Dinkov (7 papers)
- Ivan Koychev (33 papers)
- Maria Castaldo (8 papers)
- Tommaso Venturini (15 papers)
- Preslav Nakov (253 papers)