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Mechanism of corrections to false information in online social network |
Yu-qi ZHANG( ),Bin GUO*( ),Ya-san DING,Si-cong LIU,Zhi-wen YU |
School of Computer Science, Northwestern Polytechnical University, Xi’an 710129, China |
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Abstract The mechanism of corrections on false information in real social network environments was analyzed. The effect of corrections was evaluated and its influencing factors were explored. Eight factors that affect the effectiveness of correction were summarized based on existing research and our hypotheses, such as the proportion of the original false information, whether it contains text warnings of false information, whether to explain the explanation, user influence, etc.. The effectiveness of correction posts was evaluated by sentiment analysis and the social context of themselves. Statistical methods were used to test the relationship between the pre-determined influencing factors and the effectiveness of correction. The experiment was conducted based on the false information data about COVID-19 epidemic collected from Sina Weibo. Results show that a higher proportion of false information in a correction reduces the effectiveness, and explaining the reason improves the effectiveness. Six conclusions that improve the effectiveness of corrections on social networks were proposed such as mentioning original misinformation less, explaining why original misinformation is wrong. Guidance was provided for related media to correct false information on social network.
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Received: 27 January 2021
Published: 07 May 2021
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Fund: 国家重点研发计划资助项目(2019QY0600);国家自然科学基金资助项目(61772428,61725205) |
Corresponding Authors:
Bin GUO
E-mail: 1347088657@qq.com;guobin.keio@gmail.com
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社交网络假消息辟谣作用机理
研究真实社交网络环境下假消息辟谣作用机理. 提出评估辟谣效果的方法及探究影响辟谣效果的因素. 基于已有研究成果与假设,总结出8个影响辟谣效果的因素,如原假消息内容占比、是否包含谣言文字警示、是否解释原因、用户影响力等. 使用情感分析和微博社交上下文,评估辟谣微博的辟谣效果. 利用统计学方法,检验预设影响因素与辟谣效果间的关系. 基于新冠疫情相关的辟谣微博数据开展实验,实验分析表明,辟谣信息中原假消息内容占比和辟谣效果呈负相关,解释原因与辟谣效果呈正相关. 提出尽量少地提及原假消息、应解释原假消息错误的原因等6条辟谣建议,为社交网络假消息辟谣提供指导.
关键词:
假消息,
辟谣机理,
情感分析,
社交网络,
微博
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