Innovative multi objective optimization based automatic fake news detection

With the digital revolution, access to information is expanding day by day and individuals can access information quickly through the internet and social media platforms. However, in most cases, there is no mechanism in place to evaluate the accuracy of news that spreads rapidly on social media. Thi...

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Main Authors: Cebrail Barut, Suna Yildirim, Bilal Alatas, Gungor Yildirim
Format: Article
Language:English
Published: PeerJ Inc. 2025-08-01
Series:PeerJ Computer Science
Subjects:
Online Access:https://peerj.com/articles/cs-3016.pdf
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author Cebrail Barut
Suna Yildirim
Bilal Alatas
Gungor Yildirim
author_facet Cebrail Barut
Suna Yildirim
Bilal Alatas
Gungor Yildirim
author_sort Cebrail Barut
collection DOAJ
description With the digital revolution, access to information is expanding day by day and individuals can access information quickly through the internet and social media platforms. However, in most cases, there is no mechanism in place to evaluate the accuracy of news that spreads rapidly on social media. This increases the potential for fake news to mislead both individuals and society. In order to minimize the negative effects of fake news, it has become a critical necessity to detect them quickly and effectively. Metaheuristic methods can provide more effective solutions in fake news detection compared to traditional methods. Especially in small datasets, metaheuristics are known to produce faster and more effective solutions than artificial intelligence and machine learning based methods. In the literature, the majority of fake news detection studies have focused on the optimization of a single criterion. In this study, unlike other studies, a method that enables simultaneous optimization of two criteria (precision and recall) in fake news detection is developed. In the proposed approach, an innovative solution is presented by using the Crowding Distance Level method instead of the Crowding Distance method used in the standard Non-dominated Sorting Genetic Algorithm 2 (NSGA-2) algorithm. The proposed method is tested on four different datasets such as Covid-19, Syrian war daily news and FakeNewsNet (Gossipcop). The results show that the proposed method achieves high success especially on small datasets.
format Article
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institution Kabale University
issn 2376-5992
language English
publishDate 2025-08-01
publisher PeerJ Inc.
record_format Article
series PeerJ Computer Science
spelling doaj-art-ced678ba6f7545da98db3fce20dbc10d2025-08-20T03:36:26ZengPeerJ Inc.PeerJ Computer Science2376-59922025-08-0111e301610.7717/peerj-cs.3016Innovative multi objective optimization based automatic fake news detectionCebrail Barut0Suna Yildirim1Bilal Alatas2Gungor Yildirim3Department of Continuing Education Center, Firat (Euphrates) University, Elazig, TurkeyData Processing Department, Secretary General of Special Provincial Administration, Data Processing Department, Secretary General of Special Provincial Administration, Elazig, TurkeySoftware Engineering, Firat (Euphrates) University, Elazig, TurkeyComputer Engineering, Firat (Euphrates) University, Elazig, TurkeyWith the digital revolution, access to information is expanding day by day and individuals can access information quickly through the internet and social media platforms. However, in most cases, there is no mechanism in place to evaluate the accuracy of news that spreads rapidly on social media. This increases the potential for fake news to mislead both individuals and society. In order to minimize the negative effects of fake news, it has become a critical necessity to detect them quickly and effectively. Metaheuristic methods can provide more effective solutions in fake news detection compared to traditional methods. Especially in small datasets, metaheuristics are known to produce faster and more effective solutions than artificial intelligence and machine learning based methods. In the literature, the majority of fake news detection studies have focused on the optimization of a single criterion. In this study, unlike other studies, a method that enables simultaneous optimization of two criteria (precision and recall) in fake news detection is developed. In the proposed approach, an innovative solution is presented by using the Crowding Distance Level method instead of the Crowding Distance method used in the standard Non-dominated Sorting Genetic Algorithm 2 (NSGA-2) algorithm. The proposed method is tested on four different datasets such as Covid-19, Syrian war daily news and FakeNewsNet (Gossipcop). The results show that the proposed method achieves high success especially on small datasets.https://peerj.com/articles/cs-3016.pdfMulti objective optimizationFake news detectionMetaheuristic algorithms
spellingShingle Cebrail Barut
Suna Yildirim
Bilal Alatas
Gungor Yildirim
Innovative multi objective optimization based automatic fake news detection
PeerJ Computer Science
Multi objective optimization
Fake news detection
Metaheuristic algorithms
title Innovative multi objective optimization based automatic fake news detection
title_full Innovative multi objective optimization based automatic fake news detection
title_fullStr Innovative multi objective optimization based automatic fake news detection
title_full_unstemmed Innovative multi objective optimization based automatic fake news detection
title_short Innovative multi objective optimization based automatic fake news detection
title_sort innovative multi objective optimization based automatic fake news detection
topic Multi objective optimization
Fake news detection
Metaheuristic algorithms
url https://peerj.com/articles/cs-3016.pdf
work_keys_str_mv AT cebrailbarut innovativemultiobjectiveoptimizationbasedautomaticfakenewsdetection
AT sunayildirim innovativemultiobjectiveoptimizationbasedautomaticfakenewsdetection
AT bilalalatas innovativemultiobjectiveoptimizationbasedautomaticfakenewsdetection
AT gungoryildirim innovativemultiobjectiveoptimizationbasedautomaticfakenewsdetection