A Robust Opinion Spam Detection Method Against Malicious Attackers in Social Media

08/19/2020
by   Amir Jalaly Bidgolya, et al.
0

Online reviews are potent sources for industry owners and buyers, however opportunistic people may try to destruct or promote their desired product by publishing fake comments named spam opinion. So far, many models have been developed to detect spam opinions, but none have addressed the issue of spam attack. It is a way a smart spammer can deceive the system in a manner in which he can continue generating spams without the fear of being detected and blocked by the system. In this paper, the spam attacks are discussed. Moreover, a robust graph-based spam detection method is proposed. The method respectively estimates honesty, trust and reliability values of reviews, reviewers, and products considering possible deception scenarios. The paper also presents the efficiency of the proposed method as compared to other graph-based methods through some case studies.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/29/2018

Opinion Spam Recognition Method for Online Reviews using Ontological Features

Nowadays, there are a lot of people using social media opinions to make ...
research
06/19/2020

Opinion Maximization in Social Trust Networks

Social media sites are now becoming very important platforms for product...
research
10/09/2018

Fake Comment Detection Based on Sentiment Analysis

With the development of the E-commerce and reviews website, the comment ...
research
07/08/2016

Lexical Based Semantic Orientation of Online Customer Reviews and Blogs

Rapid increase in internet users along with growing power of online revi...
research
05/09/2019

Detecting Vietnamese Opinion Spam

Recently, Vietnamese Natural Language Processing has been researched by ...
research
07/06/2023

Opinion formation by belief propagation: A heuristic to identify low-credible sources of information

With social media, the flow of uncertified information is constantly inc...

Please sign up or login with your details

Forgot password? Click here to reset