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Journal ArticleDOI

Fake News Detection on Social Media: A Data Mining Perspective

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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Proceedings ArticleDOI

Media-Rich Fake News Detection: A Survey

TL;DR: An insight is presented on characterization of news story in the modern diaspora combined with the differential content types of News story and its impact on readers and 4 key open research challenges that can guide future research are identified.
Proceedings Article

All-in-one: Multi-task Learning for Rumour Verification

TL;DR: A multi-task learning approach is proposed that allows joint training of the main and auxiliary tasks, improving the performance of rumour verification and examines the connection between the dataset properties and the outcomes of the multi- task learning models used.
Journal ArticleDOI

Fake news detection within online social media using supervised artificial intelligence algorithms

TL;DR: A two-step method for identifying fake news on social media has been proposed, focusing on fake news, with an experimental evaluation of twenty-three intelligent classification methods performed within existing public data sets and these classification models have been compared depending on four evaluation metrics.
Journal ArticleDOI

Sharing of fake news on social media: Application of the honeycomb framework and the third-person effect hypothesis

TL;DR: In this paper, the authors adopt a mixed-method approach to explore fake-news sharing behavior and find that instantaneous sharing of news for creating awareness had positive effect on sharing fake news due to lack of time and religiosity.
Posted Content

A Retrospective Analysis of the Fake News Challenge Stance Detection Task

TL;DR: In this paper, the authors provide an in-depth analysis of the three top-performing systems in the 2017 Fake News Challenge Stage 1 (FNC-1) shared task and propose a new F1-based metric yielding a changed system ranking.
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Book ChapterDOI

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