Abstract
With the rapid development of the Internet, the wide circulation of disinformation has considerably disrupted the search and recognition of information. Despite intensive research devoted to fake text detection, studies on fake short videos that inundate the Internet are rare. Fake videos, because of their quick transmission and broad reach, can increase misunderstanding, impact decision-making, and lead to irrevocable losses. Therefore, it is important to detect fake videos that mislead users on the Internet. Since it is difficult to detect fake videos directly, we probed the detection of fake video uploaders in this study with a vision to provide a basis for the detection of fake videos. Specifically, a dataset consisting of 450 uploaders of videos on diabetes and traditional Chinese medicine was constructed, five features of the fake video uploaders were proposed, and a Naive Bayesian model was built. Through experiments, the optimal feature combination was identified, and the proposed model reached a maximum accuracy of 70.7%.
Highlights
The wide adoption of computers, smartphones, and other electric terminals, which increase the number of channels and the speed of information transmission, has boosted the development of the Internet
If a user is identified as a fake video uploader, we can make sure that the videos he/she uploaded have bad intentions
To address the research gap, we proposed a Naive Bayesian model that extracts features of fake video uploaders for detection
Summary
The wide adoption of computers, smartphones, and other electric terminals, which increase the number of channels and the speed of information transmission, has boosted the development of the Internet. 3 presents the Naive Bayesian model and the dataset of fake video uploaders used in this work, Sect. The work on their combination (the detection of fake video uploaders) is still lacking in the literature.
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