expioring features for arabic spam detection
expioring features for arabic spam detection
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Date
2024
Authors
AFFIFI Oumaima
Journal Title
Journal ISSN
Volume Title
Publisher
université chadli ben djedid eltarf
Abstract
In recent years, significant research has been dedicated to the development of methodologies for identifying
and managing spam product reviews, particularly utilizing traditional machine learning techniques. However,
more recently, researchers have shifted their focus towards deep learning approaches for spam-related
applications in product review datasets. Deep learning has exhibited superior performance across various
domains, including spam review detection, making it a compelling area of inquiry. As deep learning has
emerged as a new frontier in machine learning, it has unlocked new possibilities for enhancing spam detection
systems in product review platforms.
This thesis presents the design and implementation of a spam review detection system using innovative
deep learning architectures. The objective of the research is to develop robust and adaptable solutions capable
of accurately identifying and mitigating spam product reviews across online platforms. The problematic area of
spam review detection is explored, and related work in the field is reviewed to provide a comprehensive
understanding of the current state of the art. The deep learning-based spam review detection system achieves
remarkable accuracy, demonstrating the effectiveness of the chosen methodologies and their suitability for
real-world spam detection tasks in product review datasets. The results of this research contribute to advancing
the field of spam review detection and hold great potential for practical applications in enhancing user
satisfaction and maintaining the credibility of online platforms hosting product reviews.