A comprehensive survey of fake review detection technology

Fake reviews (FR) can damage a company's reputation and cause consumers to purchase low-value products and services. With the advancement of artificial intelligence, FRD technology and its detection accuracy have improved significantly. To seek state-of-the-art FRD technology, this paper will c...

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Main Authors: Quyyam, Tayybaha, Qicheng, Yu
Format: Conference or Workshop Item
Language:English
Published: 2024
Subjects:
Online Access:https://repository.londonmet.ac.uk/9383/3/A%20Comprehensive%20Survey%20of%20Fake%20Review%20Detection%20Technology.pdf
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author Quyyam, Tayybaha
Qicheng, Yu
author_facet Quyyam, Tayybaha
Qicheng, Yu
author_sort Quyyam, Tayybaha
collection LMU
description Fake reviews (FR) can damage a company's reputation and cause consumers to purchase low-value products and services. With the advancement of artificial intelligence, FRD technology and its detection accuracy have improved significantly. To seek state-of-the-art FRD technology, this paper will conduct a systematic literature survey to explore the solutions of scholars working on methods to effectively detect FR, unsolved problems in this field, and future research directions. The survey covered 30 recent research papers between 2019 and 2023. Our findings are categorized as machine learning, deep learning, and hybrid methods to provide researchers and experts with an outlook on proposed solutions and their limitations. The survey also offers future research directions and an easy way to find datasets, carry out pre-processing, and extract multiple features. One of the main directions in the future is to combine review content with business, product, and reviewer behavior to improve the efficiency of FRD.
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spelling oai:repository.londonmet.ac.uk:93832025-01-07T10:24:40Z https://repository.londonmet.ac.uk/9383/ A comprehensive survey of fake review detection technology Quyyam, Tayybaha Qicheng, Yu 000 Computer science, information & general works Fake reviews (FR) can damage a company's reputation and cause consumers to purchase low-value products and services. With the advancement of artificial intelligence, FRD technology and its detection accuracy have improved significantly. To seek state-of-the-art FRD technology, this paper will conduct a systematic literature survey to explore the solutions of scholars working on methods to effectively detect FR, unsolved problems in this field, and future research directions. The survey covered 30 recent research papers between 2019 and 2023. Our findings are categorized as machine learning, deep learning, and hybrid methods to provide researchers and experts with an outlook on proposed solutions and their limitations. The survey also offers future research directions and an easy way to find datasets, carry out pre-processing, and extract multiple features. One of the main directions in the future is to combine review content with business, product, and reviewer behavior to improve the efficiency of FRD. 2024-04-18 Conference or Workshop Item PeerReviewed text en https://repository.londonmet.ac.uk/9383/3/A%20Comprehensive%20Survey%20of%20Fake%20Review%20Detection%20Technology.pdf Quyyam, Tayybaha and Qicheng, Yu (2024) A comprehensive survey of fake review detection technology. In: 12th International Conference on Frontiers of Intelligent Computing: Theory and Applications (FICTA-2024), 6-7 June 2024, London Metropolitan University, London (UK) / Online. (In Press)
spellingShingle 000 Computer science, information & general works
Quyyam, Tayybaha
Qicheng, Yu
A comprehensive survey of fake review detection technology
title A comprehensive survey of fake review detection technology
title_full A comprehensive survey of fake review detection technology
title_fullStr A comprehensive survey of fake review detection technology
title_full_unstemmed A comprehensive survey of fake review detection technology
title_short A comprehensive survey of fake review detection technology
title_sort comprehensive survey of fake review detection technology
topic 000 Computer science, information & general works
url https://repository.londonmet.ac.uk/9383/3/A%20Comprehensive%20Survey%20of%20Fake%20Review%20Detection%20Technology.pdf
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