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Fake Review Detection Of E-Commerce Electronic Products Using Machine Learning Techniques

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Davidelvis/Fake_Reviews_Detector_ML

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Fake Review Detection Of E-Commerce Electronic Products Using Machine Learning Techniques

Abstract

The rapid growth of internet access has given rise to a digital era. The availability of internet access has pushed almost 70% of the population to switch to internet for their daily needs and accessories. Mainly, E-commerce platforms are being used at a much higher rate than ever before. People who buy from these e-commerce platforms make decisions on whether to buy a product or not solely based on the ratings and reviews of a product that are provided by these platforms. Due to the simple nature of this review system, sellers and even individuals tend to exploit it by writing dishonest reviews with an intention of either boosting its ratings or simply to sabotage it. These fake reviews are aimed at deceiving customers and convince them to buy/deter a certain product. Due to the lack of a robust system to identify real and fake reviews, these spams manage to show up on top. To avoid this problem and provide a more efficient way to filter and provide a more efficient way to reviews

This Project is designed to detect whether the reviews given to a certain product are actually fake or legitimate reviews.

To run this project,

streamlit run Deployment.py

After running, a UI will be shown and then you will input a link to the product reviews page, a crawler will extract the reviews, then they will be cleaned, preprocessed and finally classified by a classifier.

Example of links : Link to Jumia Reviews

Project Output

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Fake Review Detection Of E-Commerce Electronic Products Using Machine Learning Techniques

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