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Journal ArticleDOI

Fake News Detection on Social Media: A Data Mining Perspective

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TLDR
Wang et al. as discussed by the authors presented a comprehensive review of detecting fake news on social media, including fake news characterizations on psychology and social theories, existing algorithms from a data mining perspective, evaluation metrics and representative datasets.
Abstract
Social media for news consumption is a double-edged sword. On the one hand, its low cost, easy access, and rapid dissemination of information lead people to seek out and consume news from social media. On the other hand, it enables the wide spread of \fake news", i.e., low quality news with intentionally false information. The extensive spread of fake news has the potential for extremely negative impacts on individuals and society. Therefore, fake news detection on social media has recently become an emerging research that is attracting tremendous attention. Fake news detection on social media presents unique characteristics and challenges that make existing detection algorithms from traditional news media ine ective or not applicable. First, fake news is intentionally written to mislead readers to believe false information, which makes it difficult and nontrivial to detect based on news content; therefore, we need to include auxiliary information, such as user social engagements on social media, to help make a determination. Second, exploiting this auxiliary information is challenging in and of itself as users' social engagements with fake news produce data that is big, incomplete, unstructured, and noisy. Because the issue of fake news detection on social media is both challenging and relevant, we conducted this survey to further facilitate research on the problem. In this survey, we present a comprehensive review of detecting fake news on social media, including fake news characterizations on psychology and social theories, existing algorithms from a data mining perspective, evaluation metrics and representative datasets. We also discuss related research areas, open problems, and future research directions for fake news detection on social media.

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Citations
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Data Augmentation for Rumor Detection Using Context-Sensitive Neural Language Model With Large-Scale Credibility Corpus

TL;DR: The challenge of limited labeled data and class imbalance problem for machine-learning-based rumor detection in social media is addressed and an offline data augmentation method based on semantic relatedness for rumor detection is presented.
Journal ArticleDOI

Information verification in social networks based on user feedback and news agencies

TL;DR: The results of experiments show that the hybrid suggested method for information verification could pass the state-of-the-art methods in information verification.
Proceedings ArticleDOI

Who Shares Fake News in Online Social Networks

TL;DR: Network density turned out to be more important for dissemination than the differences in personality and behavior of individuals, so the spread of fake news can not only be addressed by focusing on the personality of individual users and their associated behavior.
Proceedings ArticleDOI

Influence Blocking Maximization in Social Network Using Centrality Measures

TL;DR: The notion of competing negative and positive campaigns in a social network is studied and an algorithm based on centrality measures for finding an appropriate candidate subset of nodes for spreading positive diffusion is proposed in order to minimizing the IBM problem.
Proceedings ArticleDOI

SciLens: Evaluating the Quality of Scientific News Articles Using Social Media and Scientific Literature Indicators

TL;DR: SciLens can be used to produce a completely automated quality score for an article, which agrees more with expert evaluators than manual evaluations done by non-experts, and demonstrates its effectiveness for both semi-automatic and automatic quality evaluation of scientific news.
References
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Issue of fake news

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