Javascript must be enabled to continue!
Spam Review Detection Techniques: A Systematic Literature Review
View through CrossRef
Online reviews about the purchase of products or services provided have become the main source of users’ opinions. In order to gain profit or fame, usually spam reviews are written to promote or demote a few target products or services. This practice is known as review spamming. In the past few years, a variety of methods have been suggested in order to solve the issue of spam reviews. In this study, the researchers carry out a comprehensive review of existing studies on spam review detection using the Systematic Literature Review (SLR) approach. Overall, 76 existing studies are reviewed and analyzed. The researchers evaluated the studies based on how features are extracted from review datasets and different methods and techniques that are employed to solve the review spam detection problem. Moreover, this study analyzes different metrics that are used for the evaluation of the review spam detection methods. This literature review identified two major feature extraction techniques and two different approaches to review spam detection. In addition, this study has identified different performance metrics that are commonly used to evaluate the accuracy of the review spam detection models. Lastly, this work presents an overall discussion about different feature extraction approaches from review datasets, the proposed taxonomy of spam review detection approaches, evaluation measures, and publicly available review datasets. Research gaps and future directions in the domain of spam review detection are also presented. This research identified that success factors of any review spam detection method have interdependencies. The feature’s extraction depends upon the review dataset, and the accuracy of review spam detection methods is dependent upon the selection of the feature engineering approach. Therefore, for the successful implementation of the spam review detection model and to achieve better accuracy, these factors are required to be considered in accordance with each other. To the best of the researchers’ knowledge, this is the first comprehensive review of existing studies in the domain of spam review detection using SLR process.
Title: Spam Review Detection Techniques: A Systematic Literature Review
Description:
Online reviews about the purchase of products or services provided have become the main source of users’ opinions.
In order to gain profit or fame, usually spam reviews are written to promote or demote a few target products or services.
This practice is known as review spamming.
In the past few years, a variety of methods have been suggested in order to solve the issue of spam reviews.
In this study, the researchers carry out a comprehensive review of existing studies on spam review detection using the Systematic Literature Review (SLR) approach.
Overall, 76 existing studies are reviewed and analyzed.
The researchers evaluated the studies based on how features are extracted from review datasets and different methods and techniques that are employed to solve the review spam detection problem.
Moreover, this study analyzes different metrics that are used for the evaluation of the review spam detection methods.
This literature review identified two major feature extraction techniques and two different approaches to review spam detection.
In addition, this study has identified different performance metrics that are commonly used to evaluate the accuracy of the review spam detection models.
Lastly, this work presents an overall discussion about different feature extraction approaches from review datasets, the proposed taxonomy of spam review detection approaches, evaluation measures, and publicly available review datasets.
Research gaps and future directions in the domain of spam review detection are also presented.
This research identified that success factors of any review spam detection method have interdependencies.
The feature’s extraction depends upon the review dataset, and the accuracy of review spam detection methods is dependent upon the selection of the feature engineering approach.
Therefore, for the successful implementation of the spam review detection model and to achieve better accuracy, these factors are required to be considered in accordance with each other.
To the best of the researchers’ knowledge, this is the first comprehensive review of existing studies in the domain of spam review detection using SLR process.
Related Results
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Abstract
The Physical Activity Guidelines for Americans (Guidelines) advises older adults to be as active as possible. Yet, despite the well documented benefits of physical a...
Perbandingan Kinerja Algoritma Naïve Bayes Dan C.45 Dalam Klasifikasi Spam Email
Perbandingan Kinerja Algoritma Naïve Bayes Dan C.45 Dalam Klasifikasi Spam Email
Antispam dengan algoritma tertentu yang dapat memisahkan antara spam-mail dengan non spam mail. Perbandingan kinerja antara algoritma naïve bayes, dan decision tree yang memakai al...
Analysis of Naıve Bayes Algorithm for Email Spam
Filtering
Analysis of Naıve Bayes Algorithm for Email Spam
Filtering
The upsurge in the volume of unwanted emails called spam has created an intense need for the
development of more dependable and robust antispam filters. Machine learning methods of...
VNSED: Vietnamese spam email detection using multi deep learning models
VNSED: Vietnamese spam email detection using multi deep learning models
Email is one of the most popular communication methods today. However, a high percentage of spam emails are used for various purposes. Therefore, detecting spam emails and proposin...
Analysis of the Application of Machine Learning Algorithm in Spam Detection System: Literature Review
Analysis of the Application of Machine Learning Algorithm in Spam Detection System: Literature Review
Spam detection is an evolving issue in line with the increasing volume of data and the evolution of spam techniques. In recent years, the application of machine learning (ML) algor...
A Collaborative Reputation-Based Vector Space Model for Email Spam Filtering
A Collaborative Reputation-Based Vector Space Model for Email Spam Filtering
In this paper, we propose a novel Collaborative Reputation-based Vector Space Model (CRVSM) for detection of spam email. CRVSM uses a vector space model for representing the featur...
Spam Review Detection:A Systematic Literature Review
Spam Review Detection:A Systematic Literature Review
In this era of technology, people rely on online posted reviews before buying any product. These reviews are very important for both the consumers and people. Consumers and people ...
EvoMail: Self-Evolving Cognitive Agents for Adaptive Spam and Phishing Email Defense
EvoMail: Self-Evolving Cognitive Agents for Adaptive Spam and Phishing Email Defense
Modern email spam and phishing attacks have evolved far beyond keyword
blacklists or simple heuristics. Adversaries now craft multi-modal
campaigns that combine natural-language te...

