Fake Review Detection Using Behavioral and Contextual Features

02/26/2020
by   Jay Kumar, et al.
0

User reviews reflect significant value of product in the world of e-market. Many firms or product providers hire spammers for misleading new customers by posting spam reviews. There are three types of fake reviews, untruthful reviews, brand reviews and non-reviews. All three types mislead the new customers. A multinomial organization "Yelp" is separating fake reviews from non-fake reviews since last decade. However, there are many e-commerce sites which do not filter fake and non-fake reviews separately. Automatic fake review detection is focused by researcher for last ten years. Many approaches and feature set are proposed for improving classification model of fake review detection. There are two types of dataset commonly used in this research area: psuedo fake and real life reviews. Literature reports low performance of classification model real life dataset if compared with pseudo fake reviews. After investigation behavioral and contextual features are proved important for fake review detection Our research has exploited important behavioral feature of reviewer named as "reviewer deviation". Our study comprises of investigating reviewer deviation with other contextual and behavioral features. We empirically proved importance of selected feature set for classification model to identify fake reviews. We ranked features in selected feature set where reviewer deviation achieved ninth rank. To assess the viability of selected feature set we scaled dataset and concluded that scaling dataset can improve recall as well as accuracy. Our selected feature set contains a contextual feature which capture text similarity between reviews of a reviewer. We experimented on NNC, LTC and BM25 term weighting schemes for calculating text similarity of reviews. We report that BM25 outperformed other term weighting scheme.

READ FULL TEXT

page 1

page 20

page 33

page 36

research
10/08/2020

Fake Reviews Detection through Analysis of Linguistic Features

Online reviews play an integral part for success or failure of businesse...
research
12/18/2022

Impact of Sentiment Analysis in Fake Review Detection

Fake review identification is an important topic and has gained the inte...
research
10/28/2021

Confounds and Overestimations in Fake Review Detection: Experimentally Controlling for Product-Ownership and Data-Origin

The popularity of online shopping is steadily increasing. At the same ti...
research
08/03/2023

Bengali Fake Reviews: A Benchmark Dataset and Detection System

The proliferation of fake reviews on various online platforms has create...
research
01/09/2023

Online Fake Review Detection Using Supervised Machine Learning And BERT Model

Online shopping stores have grown steadily over the past few years. Due ...
research
11/10/2021

Social Fraud Detection Review: Methods, Challenges and Analysis

Social reviews have dominated the web and become a plausible source of p...
research
06/17/2020

Exploiting Review Neighbors for Contextualized Helpfulness Prediction

Helpfulness prediction techniques have been widely used to identify and ...

Please sign up or login with your details

Forgot password? Click here to reset