Using Social Media to Detect Fake News Information Related to Product Marketing: The FakeAds Corpus

Nowadays, an increasing portion of our lives is spent interacting online through social media platforms, thanks to the widespread adoption of the latest technology and the proliferation of smartphones. Obtaining news from social media platforms is fast, easy, and less expensive compared with other t...

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Main Authors: Noha Alnazzawi, Najlaa Alsaedi, Fahad Alharbi, Najla Alaswad
Format: Article
Language:English
Published: MDPI AG 2022-04-01
Series:Data
Subjects:
Online Access:https://www.mdpi.com/2306-5729/7/4/44
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author Noha Alnazzawi
Najlaa Alsaedi
Fahad Alharbi
Najla Alaswad
author_facet Noha Alnazzawi
Najlaa Alsaedi
Fahad Alharbi
Najla Alaswad
author_sort Noha Alnazzawi
collection DOAJ
description Nowadays, an increasing portion of our lives is spent interacting online through social media platforms, thanks to the widespread adoption of the latest technology and the proliferation of smartphones. Obtaining news from social media platforms is fast, easy, and less expensive compared with other traditional media platforms, e.g., television and newspapers. Therefore, social media is now being exploited to disseminate fake news and false information. This research aims to build the FakeAds corpus, which consists of tweets for product advertisements. The aim of the FakeAds corpus is to study the impact of fake news and false information in advertising and marketing materials for specific products and which types of products (i.e., cosmetics, health, fashion, or electronics) are targeted most on Twitter to draw the attention of consumers. The corpus is unique and novel, in terms of the very specific topic (i.e., the role of Twitter in disseminating fake news related to production promotion and advertisement) and also in terms of its fine-grained annotations. The annotation guidelines were designed with guidance by a domain expert, and the annotation is performed by two domain experts, resulting in a high-quality annotation, with agreement rate F-scores as high as 0.815.
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spelling doaj.art-bf008f0475df4272b5f648499df650b82023-12-01T01:28:11ZengMDPI AGData2306-57292022-04-01744410.3390/data7040044Using Social Media to Detect Fake News Information Related to Product Marketing: The FakeAds CorpusNoha Alnazzawi0Najlaa Alsaedi1Fahad Alharbi2Najla Alaswad3Computer Science and Engineering Department, Yanbu University College, Royal Commission for Jubail and Yanbu, Yanbu Industrial City 41912, Saudi ArabiaComputer Science Department, King Abdul Aziz University, Jeddah 21589, Saudi ArabiaData Management Specialist, Ministry of Interior, Public Security, Riyadh 12732, Saudi ArabiaData Analyst Specialist, Princess Norah University, Riyadh 11671, Saudi ArabiaNowadays, an increasing portion of our lives is spent interacting online through social media platforms, thanks to the widespread adoption of the latest technology and the proliferation of smartphones. Obtaining news from social media platforms is fast, easy, and less expensive compared with other traditional media platforms, e.g., television and newspapers. Therefore, social media is now being exploited to disseminate fake news and false information. This research aims to build the FakeAds corpus, which consists of tweets for product advertisements. The aim of the FakeAds corpus is to study the impact of fake news and false information in advertising and marketing materials for specific products and which types of products (i.e., cosmetics, health, fashion, or electronics) are targeted most on Twitter to draw the attention of consumers. The corpus is unique and novel, in terms of the very specific topic (i.e., the role of Twitter in disseminating fake news related to production promotion and advertisement) and also in terms of its fine-grained annotations. The annotation guidelines were designed with guidance by a domain expert, and the annotation is performed by two domain experts, resulting in a high-quality annotation, with agreement rate F-scores as high as 0.815.https://www.mdpi.com/2306-5729/7/4/44social mediafake newscorpus constructiontext mining
spellingShingle Noha Alnazzawi
Najlaa Alsaedi
Fahad Alharbi
Najla Alaswad
Using Social Media to Detect Fake News Information Related to Product Marketing: The FakeAds Corpus
Data
social media
fake news
corpus construction
text mining
title Using Social Media to Detect Fake News Information Related to Product Marketing: The FakeAds Corpus
title_full Using Social Media to Detect Fake News Information Related to Product Marketing: The FakeAds Corpus
title_fullStr Using Social Media to Detect Fake News Information Related to Product Marketing: The FakeAds Corpus
title_full_unstemmed Using Social Media to Detect Fake News Information Related to Product Marketing: The FakeAds Corpus
title_short Using Social Media to Detect Fake News Information Related to Product Marketing: The FakeAds Corpus
title_sort using social media to detect fake news information related to product marketing the fakeads corpus
topic social media
fake news
corpus construction
text mining
url https://www.mdpi.com/2306-5729/7/4/44
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AT fahadalharbi usingsocialmediatodetectfakenewsinformationrelatedtoproductmarketingthefakeadscorpus
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