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Journal ArticleDOI

Combating fake news: a data management and mining perspective

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TLDR
This tutorial provides a unifying framework for categorizing prior research focusing on four facets of fake news: detection, propagation, mitigation and intervention.
Abstract
Fake news is a major threat to global democracy resulting in diminished trust in government, journalism and civil society. The public popularity of social media and social networks has caused a contagion of fake news where conspiracy theories, disinformation and extreme views flourish. Detection and mitigation of fake news is one of the fundamental problems of our times and has attracted widespread attention. While fact checking websites such as snopes, politifact and major companies such as Google, Facebook, and Twitter have taken preliminary steps towards addressing fake news, much more remains to be done. As an interdisciplinary topic, various facets of fake news have been studied by communities as diverse as machine learning, databases, journalism, political science and many more.The objective of this tutorial is two-fold. First, we wish to familiarize the database community with the efforts by other communities on combating fake news. We provide a panoramic view of the state-of-the-art of research on various aspects including detection, propagation, mitigation, and intervention of fake news. Next, we provide a concise and intuitive summary of prior research by the database community and discuss how it could be used to counteract fake news. The tutorial covers research from areas such as data integration, truth discovery and fusion, probabilistic databases, knowledge graphs and crowdsourcing from the lens of fake news. Effective tools for addressing fake news could only be built by leveraging the synergistic relationship between database and other research communities. We hope that our tutorial provides an impetus towards such synthesis of ideas and the creation of new ones.

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Citations
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Journal ArticleDOI

Combating disinformation in a social media age

TL;DR: An overview of the techniques explored to date for the combating of disinformation with various forms is presented, including different forms of disinformation, and factors related to the spread of disinformation are discussed.
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Thai Fake News Detection Based on Information Retrieval, Natural Language Processing and Machine Learning

TL;DR: In this paper, a framework consisting of information retrieval, natural language processing, and machine learning is proposed for robust Thai fake news detection. But the work is limited to two phases: the data collection phase and the machine learning model building phase.
Book ChapterDOI

An ensemble predictive analytics of COVID-19 infodemic tweets using bag of words

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SCLAVOEM: hyper parameter optimization approach to predictive modelling of COVID-19 infodemic tweets using smote and classifier vote ensemble

TL;DR: In this paper , the Synthetic Minority Over-Sampling Technique (SMOTE) and the classifier vote ensemble (SCLAVOEM) method were proposed for predicting COVID-19 infodemic tweets.
References
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Journal ArticleDOI

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TL;DR: A large-scale analysis of tweets reveals that false rumors spread further and faster than the truth, and false news was more novel than true news, which suggests that people were more likely to share novel information.
Journal ArticleDOI

Social Media and Fake News in the 2016 Election

TL;DR: The authors found that people are much more likely to believe stories that favor their preferred candidate, especially if they have ideologically segregated social media networks, and that the average American adult saw on the order of one or perhaps several fake news stories in the months around the 2016 U.S. presidential election, with just over half of those who recalled seeing them believing them.
Proceedings Article

Learning entity and relation embeddings for knowledge graph completion

TL;DR: TransR is proposed to build entity and relation embeddings in separate entity space and relation spaces to build translations between projected entities and to evaluate the models on three tasks including link prediction, triple classification and relational fact extraction.
Proceedings ArticleDOI

Information credibility on twitter

TL;DR: There are measurable differences in the way messages propagate, that can be used to classify them automatically as credible or not credible, with precision and recall in the range of 70% to 80%.
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The science of fake news

TL;DR: The rise of fake news highlights the erosion of long-standing institutional bulwarks against misinformation in the internet age as discussed by the authors. But much remains unknown regarding the vulnerabilities of individuals, institutions, and society to manipulations by malicious actors.
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