Opinion Fraud Detection via Neural Autoencoder Decision Forest

05/09/2018
by   Manqing Dong, et al.
0

Online reviews play an important role in influencing buyers' daily purchase decisions. However, fake and meaningless reviews, which cannot reflect users' genuine purchase experience and opinions, widely exist on the Web and pose great challenges for users to make right choices. Therefore,it is desirable to build a fair model that evaluates the quality of products by distinguishing spamming reviews. We present an end-to-end trainable unified model to leverage the appealing properties from Autoencoder and random forest. A stochastic decision tree model is implemented to guide the global parameter learning process. Extensive experiments were conducted on a large Amazon review dataset. The proposed model consistently outperforms a series of compared methods.

READ FULL TEXT
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
09/09/2016

Detecting Singleton Review Spammers Using Semantic Similarity

Online reviews have increasingly become a very important resource for co...
research
06/21/2018

GrCAN: Gradient Boost Convolutional Autoencoder with Neural Decision Forest

Random forest and deep neural network are two schools of effective class...
research
09/07/2020

Personalized Review Ranking for Improving Shopper's Decision Making: A Term Frequency based Approach

User-generated reviews serve as crucial references in shopper's decision...
research
10/09/2018

Fake Comment Detection Based on Sentiment Analysis

With the development of the E-commerce and reviews website, the comment ...
research
10/03/2022

Measurement of Trustworthiness of the Online Reviews

In electronic commerce (e-commerce)markets, a decision-maker faces a seq...
research
04/24/2022

Subgroup Fairness in Graph-based Spam Detection

Fake reviews are prevalent on review websites such as Amazon and Yelp. G...

Please sign up or login with your details

Forgot password? Click here to reset