Detecting Deceptive Reviews using Generative Adversarial Networks
Hojjat Aghakhani, Aravind Machiry, Shirin Nilizadeh, Christopher, Kruegel, and Giovanni Vigna

TL;DR
FakeGAN introduces a novel GAN-based system with dual discriminators for detecting deceptive reviews, achieving comparable accuracy to supervised methods while enhancing stability in text classification tasks.
Contribution
The paper pioneers the use of dual discriminators in GANs for text classification, specifically for deceptive review detection, improving stability and performance.
Findings
FakeGAN achieves state-of-the-art accuracy on TripAdvisor reviews.
Using two discriminators enhances GAN stability in text classification.
GANs can be effective for deceptive review detection.
Abstract
In the past few years, consumer review sites have become the main target of deceptive opinion spam, where fictitious opinions or reviews are deliberately written to sound authentic. Most of the existing work to detect the deceptive reviews focus on building supervised classifiers based on syntactic and lexical patterns of an opinion. With the successful use of Neural Networks on various classification applications, in this paper, we propose FakeGAN a system that for the first time augments and adopts Generative Adversarial Networks (GANs) for a text classification task, in particular, detecting deceptive reviews. Unlike standard GAN models which have a single Generator and Discriminator model, FakeGAN uses two discriminator models and one generative model. The generator is modeled as a stochastic policy agent in reinforcement learning (RL), and the discriminators use Monte Carlo search…
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Taxonomy
MethodsConvolution · Dogecoin Customer Service Number +1-833-534-1729
