TL;DR
This study analyzes YouTube channels targeting children, revealing discrepancies in content moderation, and develops machine learning classifiers to predict channels likely to share disturbing videos, aiding platform moderation efforts.
Contribution
It introduces the first analysis of the 'madeForKids' flag in relation to disturbing content and proposes ML classifiers to detect potentially problematic channels at creation.
Findings
60% of disturbing videos from 2019 still available in 2021
44% of channels with disturbing videos remain active
ML classifiers can predict problematic channels at creation
Abstract
In the last years, hundreds of new Youtube channels have been creating and sharing videos targeting children, with themes related to animation, superhero movies, comics, etc. Unfortunately, many of these videos are inappropriate for consumption by their target audience, due to disturbing, violent, or sexual scenes. In this paper, we study YouTube channels found to post suitable or disturbing videos targeting kids in the past. We identify a clear discrepancy between what YouTube assumes and flags as inappropriate content and channel, vs. what is found to be disturbing content and still available on the platform, targeting kids. In particular, we find that almost 60\% of videos that were manually annotated and classified as disturbing by an older study in 2019 (a collection bootstrapped with Elsa and other keywords related to children videos), are still available on YouTube in mid 2021.…
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