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首页> 外文期刊>ACM Transactions on Management Information Systems >Real or Not?: Identifying Untrustworthy News Websites Using Third-party Partnerships
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Real or Not?: Identifying Untrustworthy News Websites Using Third-party Partnerships

机译:真实与否?:使用第三方伙伴关系识别不值得信任的新闻网站

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摘要

Untrustworthy content such as fake news and clickbait have become a pervasive problem on the Internet, causing significant socio-political problems around the world. Identifying untrustworthy content is a crucial step in countering them. The current best practices for identification involve content analysis and arduous fact-checking of the content. To complement content analysis, we propose examining websites' third-parties to identify their trustworthiness. Websites utilize third-parties, also known as their digital supply chains, to create and present content and help the website function. Third-parties are an important indication of a website's business model. Similar websites exhibit similarities in the third-parties they use. Using this perspective, we use machine learning and heuristic methods to discern similarities and dissimilarities in third-party usage, which we use to predict trustworthiness of websites. We demonstrate the effectiveness and robustness of our approach in predicting trustworthiness of websites from a database of News, Fake News, and Clickbait websites. Our approach can be easily and cost-effectively implemented to reinforce current identification methods.
机译:不值得信赖的内容,如假新闻和点击条件已成为互联网上的普遍存在问题,导致世界各地的大量社会政治问题。识别不值得信任的内容是对抗它们的重要步骤。目前识别的最佳实践涉及内容分析和艰巨的事实检查内容。为了补充内容分析,我们建议审查网站的第三方以确定其可靠性。网站利用第三方,也称为他们的数字供应链,以创建和呈现内容并帮助网站功能。第三方是网站商业模式的重要迹象。类似的网站在他们使用的第三方表现出相似性。使用这种观点,我们使用机器学习和启发式方法来辨别第三方使用中的相似性和异化,我们用来预测网站的可靠性。我们展示了我们从新闻,假新闻和点击网站数据库预测网站值得信赖性的方法的有效性和稳健性。我们的方法可以很容易且成本有效地实现,以加强当前的识别方法。

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