TL;DR
This study analyzes false news across nine domains on Chinese social media Weibo, revealing domain-specific diffusion patterns and user effects, which can inform better detection and understanding of false news spread.
Contribution
It provides a comprehensive multi-domain dataset and comparative analysis of false news spread on Weibo, highlighting domain and user characteristics influencing diffusion.
Findings
False news in health domains diffuses less effectively than political false news.
Political false news has the highest diffusion capacity.
False news posts are strongly associated with specific user demographics and emotional engagement.
Abstract
False news that spreads on social media has proliferated over the past years and has led to multi-aspect threats in the real world. While there are studies of false news on specific domains (like politics or health care), little work is found comparing false news across domains. In this article, we investigate false news across nine domains on Weibo, the largest Twitter-like social media platform in China, from 2009 to 2019. The newly collected data comprise 44,728 posts in the nine domains, published by 40,215 users, and reposted over 3.4 million times. Based on the distributions and spreads of the multi-domain dataset, we observe that false news in domains that are close to daily life like health and medicine generated more posts but diffused less effectively than those in other domains like politics, and that political false news had the most effective capacity for diffusion. The…
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