观点
社会化媒体
2019年冠状病毒病(COVID-19)
计算机科学
动作(物理)
舆论
互联网隐私
叙述的
数据科学
心理学
万维网
政治学
政治
语言学
艺术
病理
视觉艺术
哲学
法学
物理
传染病(医学专业)
医学
疾病
量子力学
作者
Zening Duan,Jianing Li,Josephine Lukito,Kai‐Cheng Yang,Fan Chen,Dhavan V. Shah,Sijia Yang
摘要
Abstract Social bots, or algorithmic agents that amplify certain viewpoints and interact with selected actors on social media, may influence online discussion, news attention, or even public opinion through coordinated action. Previous research has documented the presence of bot activities and developed detection algorithms. Yet, how social bots influence attention dynamics of the hybrid media system remains understudied. Leveraging a large collection of both tweets (N = 1,657,551) and news stories (N = 50,356) about the early COVID-19 pandemic, we employed bot detection techniques, structural topic modeling, and time series analysis to characterize the temporal associations between the topics Twitter bots tend to amplify and subsequent news coverage across the partisan spectrum. We found that bots represented 8.98% of total accounts, selectively promoted certain topics and predicted coverage aligned with partisan narratives. Our macro-level longitudinal description highlights the role of bots as algorithmic communicators and invites future research to explain micro-level causal mechanisms.
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