False information detection in online content and its role in decision making: a systematic literature review

This work presents a review of detecting false information and its role in decision making spread across online content. The authenticity of information is an emerging issue that affects society and individuals and has a negative impact on people’s decision-making capabilities. The purpose is to und...

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Veröffentlicht in:Social network analysis and mining 2019-12, Vol.9 (1), p.50, Article 50
Hauptverfasser: Habib, Ammara, Asghar, Muhammad Zubair, Khan, Adil, Habib, Anam, Khan, Aurangzeb
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container_start_page 50
container_title Social network analysis and mining
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creator Habib, Ammara
Asghar, Muhammad Zubair
Khan, Adil
Habib, Anam
Khan, Aurangzeb
description This work presents a review of detecting false information and its role in decision making spread across online content. The authenticity of information is an emerging issue that affects society and individuals and has a negative impact on people’s decision-making capabilities. The purpose is to understand how different techniques can be used to address the challenge. The approach used for the identification of published articles between 2014 and 2018 is the systematic literature review in which 30 papers were identified and the relevant articles were selected by applying inclusion–exclusion criteria. This review classifies the false information, spreading on social media, into four types. Furthermore, we describe four deep learning and eight machine learning techniques for false information detection. The outcomes of this review will provide the researchers with an insight into the different types of false information, associated detection techniques, and the relationship between false information and decision making. In the field of false information detection, previous studies provided a review of the literature. However, we conducted a systematic literature review by providing specific answers to the proposed research questions. Therefore, our contribution is novel to the field because this type of study is not performed previously.
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subjects Applications of Graph Theory and Complex Networks
Classification
Computer Science
Data Mining and Knowledge Discovery
Decision making
Deep learning
Economics
Electronic publishing
False information
Game Theory
Gossip
Hoaxes
Humanities
Insight
Law
Literature reviews
Machine learning
Methodology of the Social Sciences
News media
Review Article
Social and Behav. Sciences
Social media
Social networks
Statistics for Social Sciences
title False information detection in online content and its role in decision making: a systematic literature review
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