新闻可信度评价:研究方法的建议,以确定新闻在社交媒体传播的可靠性

Ki-young Shin, Woosang Song, Jinhee Kim, Jong-Hyeok Lee
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引用次数: 0

摘要

我们提供了一个更为优化的社交网络信息可信度评分计算模型。我们预先考虑了两种启发式方法,使用每个文档的可信度评分特征:(1)专业知识和(2)无偏倚。此外,我们将SNs中的用户分为三种类型:(1)创建者(2)分发者(3)追随者。我们的模型旨在通过逻辑回归模型计算三种类型的SNs用户(创建者、分发者和追随者)的专业知识和无偏性。我们的模型不仅揭示了信息是否“准确和公正”,还调查了信息的“来源、传播渠道和受众”。我们希望我们的可信度评分能够回答我们的网络世界目前面临的“定性问题”。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
News Credibility Scroing: Suggestion of research methodology to determine the reliability of news distributed in SNS
We provide a more optimized model for calculating credibility score of information in SNS. We premeditated two heuristics which using characteristics of the credibility score for each document: (1) Expertise and (2) un-biasedness. Also, we divide the users in SNs into three types: (1) Creator (2) Distributor, and (3) Follower. Our model is designed to calculate Expertise and Un-biasedness for three types of SNs users (Creator, Distributor, and Follower) by using logistic regression model. Our model not only reveals whether the information is ‘accurate and unbiased’, but also investigates the ‘source, distribution channel, and audience’ of the information. We expect our credibility scoring will give answers to the ‘qualitative problem’ our online world is currently facing.
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