Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Ensemble-based Machine Learning Model for Online Fake Reviews Detection

View through CrossRef
Online shopping/e-commerce sites are usually unknown to most customers, and they do not know the seller or the goods and services. They will purchase and make any decisions without consulting the reviews done by customers. It does not matter whether they are true or not, but product reviews can play a huge role in the bottom line of a company. Some e-commerce sites have a section where one can confirm the authenticity of the seller, but the majority of buyers would rather read reviews done by real people who have bought the target product and used it. Due to the possible number of reviews regarding a particular product being hundreds or even thousands, it is dubious as to which ones are authentic. Machine learning (ML) has, in recent years, enabled machines to perform tricky tasks with close human levels of expertise. It is possible to find different ways. Conventional means of fake reviews are time-consuming and usually unproductive due to the vast number of reviews produced. Moreover, there is no accuracy or robustness. So, we require a powerful ML-based solution that will be able to automatically evaluate the reviews, distinguish between the authentic and fake ones and then, in a very small time period, choose the most valuable comments of others. To achieve this. In that regard, we propose a modern fake reviews detecting model using ML. The evolution of this study assumes the combination of baseline learning, deep learning and ensemble learning algorithms for fake reviews detection. Therefore, Naive Bayes, Random Forest, Decision Tree, SVM, and K-N Neighbour have been paired together to train and test our proposed model. The proposed model of voting consists of a strict pre-processing procedure and feature extraction. The functions that were carried out before preprocessing are tokenization, removal of stop words, punctuation, and even deletion of rare words. We availed the step of feature engineering, which enhances data prior to entering the next stage, which is the advanced bi-grams, whose name is the N-gram and TFIDF. We have done several experiments and compared the future model and the state-of-the-art models with reference to one another. The obtained data yields that our proposed model is superior to the received data regarding the Uni-Bi-Gram TFIDF-features and effectively classifies the reviews into two classes, real and fake, with 93Percent success precision.
Title: Ensemble-based Machine Learning Model for Online Fake Reviews Detection
Description:
Online shopping/e-commerce sites are usually unknown to most customers, and they do not know the seller or the goods and services.
They will purchase and make any decisions without consulting the reviews done by customers.
It does not matter whether they are true or not, but product reviews can play a huge role in the bottom line of a company.
Some e-commerce sites have a section where one can confirm the authenticity of the seller, but the majority of buyers would rather read reviews done by real people who have bought the target product and used it.
Due to the possible number of reviews regarding a particular product being hundreds or even thousands, it is dubious as to which ones are authentic.
Machine learning (ML) has, in recent years, enabled machines to perform tricky tasks with close human levels of expertise.
It is possible to find different ways.
Conventional means of fake reviews are time-consuming and usually unproductive due to the vast number of reviews produced.
Moreover, there is no accuracy or robustness.
So, we require a powerful ML-based solution that will be able to automatically evaluate the reviews, distinguish between the authentic and fake ones and then, in a very small time period, choose the most valuable comments of others.
To achieve this.
In that regard, we propose a modern fake reviews detecting model using ML.
The evolution of this study assumes the combination of baseline learning, deep learning and ensemble learning algorithms for fake reviews detection.
Therefore, Naive Bayes, Random Forest, Decision Tree, SVM, and K-N Neighbour have been paired together to train and test our proposed model.
The proposed model of voting consists of a strict pre-processing procedure and feature extraction.
The functions that were carried out before preprocessing are tokenization, removal of stop words, punctuation, and even deletion of rare words.
We availed the step of feature engineering, which enhances data prior to entering the next stage, which is the advanced bi-grams, whose name is the N-gram and TFIDF.
We have done several experiments and compared the future model and the state-of-the-art models with reference to one another.
The obtained data yields that our proposed model is superior to the received data regarding the Uni-Bi-Gram TFIDF-features and effectively classifies the reviews into two classes, real and fake, with 93Percent success precision.

Related Results

Analisis Saddu Dzari’ah terhadap Penggunaan Aplikasi Fake Global Positioning System (GPS) pada Shopeefood Driver
Analisis Saddu Dzari’ah terhadap Penggunaan Aplikasi Fake Global Positioning System (GPS) pada Shopeefood Driver
Abstract. Shopee is a company engaged in online-based buying and selling services. One of the latest features of Shopee is the ShopeeFood service and has standard rules that must b...
Initial Experience with Pediatrics Online Learning for Nonclinical Medical Students During the COVID-19 Pandemic 
Initial Experience with Pediatrics Online Learning for Nonclinical Medical Students During the COVID-19 Pandemic 
Abstract Background: To minimize the risk of infection during the COVID-19 pandemic, the learning mode of universities in China has been adjusted, and the online learning o...
DISCOURSE: KNOWLEDGE, NEWS, AND FAKE INTERTWINED
DISCOURSE: KNOWLEDGE, NEWS, AND FAKE INTERTWINED
Discourse has been a focal point for linguists over an extended period. The multidisciplinary character of the term ‘discourse’ has resulted in diverse approaches aiming to define ...
Deep Learning for Forgery Face Detection Using Fuzzy Fisher Capsule Dual Graph
Deep Learning for Forgery Face Detection Using Fuzzy Fisher Capsule Dual Graph
In digital manipulation, creating fake images/videos or swapping face images/videos with another person is done by using a deep learning algorithm is termed deep fake. Fake pornogr...
Fake Review Detection System: A Review
Fake Review Detection System: A Review
Fake reviews, often referred to as deceptive or dishonest reviews, have become a significant concern for both businesses and consumers (Feng et al., 2016). These reviews are delibe...
Fake News Detection using Machine Learning Algorithms and Recurrent Neural Networks
Fake News Detection using Machine Learning Algorithms and Recurrent Neural Networks
<p>In recent years, fake news has been surfacing in enormous numbers and spreading on the internet world for various political and commercial purposes. One major reason for t...
Fake News Detection Using Machine Learning Technique
Fake News Detection Using Machine Learning Technique
People got to know about the world from newspapers to today’s digital media.From 1605 to 2021 the topography of news has evolved at an immense. People forgotten about newspapers an...
Depth-aware salient object segmentation
Depth-aware salient object segmentation
Object segmentation is an important task which is widely employed in many computer vision applications such as object detection, tracking, recognition, and ret...

Back to Top