2022
DOI: 10.22214/ijraset.2022.40743
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Survey on Comprehensive Study of Fake Reviews and Reviewers Detection using machine learning techniques

Abstract: Individuals and businesses are increasingly using opinionated social media, such as product evaluations, to make decisions. People, however, try to game the system for profit or fame by opinion spamming (e.g., creating bogus reviews) to promote or demote certain specific items. Such bogus reviews should be identified in order for reviews to reflect real user experiences and opinions. Most of the consumers are influenced by the online reviews on the product and it plays a crucial role in finalizing purchase dec… Show more

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Cited by 3 publications
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“…However, a lot of fake reviewers work in groups to target any brand or product by writing bogus reviews in bulk by creating various fake IDs. Lahire [16] conducted a comprehensive and relative study to detect those fake reviewers and reviews with machine learning (ML).…”
Section: IImentioning
confidence: 99%
“…However, a lot of fake reviewers work in groups to target any brand or product by writing bogus reviews in bulk by creating various fake IDs. Lahire [16] conducted a comprehensive and relative study to detect those fake reviewers and reviews with machine learning (ML).…”
Section: IImentioning
confidence: 99%