MSc Thesis Defense Announcement of Ashraf Neisari:"Spam Review Detection Using Self-Organizing Maps and Convolutional Neural Networks"

Wednesday, September 9, 2020 - 14:00 to 16:30

SCHOOL OF COMPUTER SCIENCE

The School of Computer Science is pleased to present…

 
MSc Thesis Defense by: Ashraf Neisari
 
Date: Wednesday Sept. 9, 2020
Time:  2:00 pm – 3:30 pm
 
Abstract: 
Online public reviews have significant influenced customers who purchase products or seek services. Fake reviews are posted online to promote or demote targeted products or reputation of the organizations and businesses. Spam review detection has been the focus of many researchers in recent years. As the online services have been growing rapidly, the importance of the issue is ever increasing and needs to be addressed properly. In this regard, there is a variety of approaches that have been introduced to distinguish truthful reviews from the fake ones. The main features engineered in the past studies typically involve two types of linguistic-based and behavioural-based characteristics of the reviews. Unsupervised, supervised and semi-supervised machine learning methods have been widely utilized to perform such a classification.
This work introduces a novel approach to detect fake reviews from the genuine ones using linguistic features. Unsupervised learning via self-organizing maps (SOM) in conjunction with a convolutional neural networks (CNN) are employed to perform classification of the reviews. We transform the reviews into images by arranging semantically similar words around a pixel of the image or equivalently a SOM grid cell. The resulting review images are consequently fed to the CNN for supervised training and then classification. Comprehensive tests on two gold-standard datasets show the effectiveness of the proposed method on single and multi-domain contexts.
 
Keywords: Spam Review Detection, Convolutional Neural Networks (CNN) , Self-Organizing Maps (SOM), Word2Vec, GloVe
 
Thesis Committee: 
Internal Reader: Prof. Arunita Jaekel
External Reader: Prof. Maher Azzouz
Advisor: Prof. Luis Rueda, Prof. Sherif Saad Ahmed
Chair: Prof. Boubakeur Boufama
 

 MSc Thesis Defense Announcement

 
5113 Lambton Tower 401 Sunset Ave. Windsor ON, N9B 3P4 (519) 253-3000 Ext. 3716 csgradinfo@uwindsor.ca