The study introduces a methodology to assess the trustworthiness of online news publishers through social media interactions. It addresses challenges in existing approaches by focusing on user engagement with news articles. The research aims to streamline evaluation processes and provide valuable insights into the digital information landscape.
The study presents a four-step proposal for assessing trustworthiness, involving data collection from social networks like Twitter/X, analysis of user-URL links, identification of discussion supporters, and classification of publisher trustworthiness based on user interactions. By leveraging community detection algorithms and URL NECs, the authors aim to identify trustworthy publishers efficiently.
Key contributions include automatic classification of publisher trustworthiness, recognition of influential users supporting news flow, and identification of domains worthy of ranking. The study emphasizes balancing classification performance with cost-effectiveness in real-world applications.
The results demonstrate effective coverage of trusted and untrustworthy publishers using different strategies for voter selection and characterization. The methodology shows promising classification performance even with limited initial knowledge, highlighting its adaptability in scenarios where extensive information is lacking.
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by Manuel Prate... às arxiv.org 03-01-2024
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