Suspicious News Detection Using Micro Blog Text
Tsubasa Tagami
Hiroki Ouchi
Hiroki Asano
Kazuaki Hanawa
Kaori Uchiyama
Kaito Suzuki
Kentaro Inui
Atsushi Komiya
Atsuo Fujimura
H. Yanai
Ryo Yamashita
Akinori Machino

Abstract
We present a new task, suspicious news detection using micro blog text. This task aims to support human experts to detect suspicious news articles to be verified, which is costly but a crucial step before verifying the truthfulness of the articles. Specifically, in this task, given a set of posts on SNS referring to a news article, the goal is to judge whether the article is to be verified or not. For this task, we create a publicly available dataset in Japanese and provide benchmark results by using several basic machine learning techniques. Experimental results show that our models can reduce the cost of manual fact-checking process.
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