Multiverse: Multilingual Evidence for Fake News Detection
- URL: http://arxiv.org/abs/2211.14279v1
- Date: Fri, 25 Nov 2022 18:24:17 GMT
- Title: Multiverse: Multilingual Evidence for Fake News Detection
- Authors: Daryna Dementieva, Mikhail Kuimov, and Alexander Panchenko
- Abstract summary: Multiverse is a new feature based on multilingual evidence that can be used for fake news detection.
The hypothesis of the usage of cross-lingual evidence as a feature for fake news detection is confirmed.
- Score: 71.51905606492376
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Misleading information spreads on the Internet at an incredible speed, which
can lead to irreparable consequences in some cases. It is becoming essential to
develop fake news detection technologies. While substantial work has been done
in this direction, one of the limitations of the current approaches is that
these models are focused only on one language and do not use multilingual
information. In this work, we propose Multiverse -- a new feature based on
multilingual evidence that can be used for fake news detection and improve
existing approaches. The hypothesis of the usage of cross-lingual evidence as a
feature for fake news detection is confirmed, firstly, by manual experiment
based on a set of known true and fake news. After that, we compared our fake
news classification system based on the proposed feature with several baselines
on two multi-domain datasets of general-topic news and one fake COVID-19 news
dataset showing that in additional combination with linguistic features it
yields significant improvements.
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