Fake Product Review Detection

As we know that the mobile application market is rising day by day. Many users use mobile applications for various purposes. On Google play store mobile applications have grown to 3.5 million. There is also an increase in the number of fraud applications. As fake reviews pose a general and damaging

2025-06-28 16:27:13 - Adil Khan

Project Title

Fake Product Review Detection

Project Area of Specialization Artificial IntelligenceProject Summary

As we know that the mobile application market is rising day by day. Many users use mobile applications for various purposes. On Google play store mobile applications have grown to 3.5 million. There is also an increase in the number of fraud applications. As fake reviews pose a general and damaging problem, helping consumers and businesses differentiate ingenuous reviews from fake ones remains a vital but challenging task. Fake review detection can combine manual efforts, supervised ML, and heuristic methods (Fontanarava et al., 2017). Some approaches in the literature focus solely on features extracted from the review text. Linguistic characteristics range from counting the frequency of words or n-grams (Viviani and Pasi, 2017) to more advanced approaches relying on distributional semantics (Lee et al., 2016). However, despite the progress made in detection studies, considerable challenges lie ahead

Project Objectives Project Implementation Method

Initially, identification of rating based suggestion is done. Then identification of review based suggestion then by leading mining sessions ranking fraud suggestion is collected. And finally, the system performs the aggregation of all three suggestions to detect fraud apps. This method will offer considerable benefits and provides an opportunity to prevent fraudulent apps in the market.

Benefits of the Project

As fake reviews pose a general and damaging problem, helping consumers and businesses differentiate ingenuous reviews from fake ones remains a vital but challenging task (Crawford et al., 2015). Fake review detection can combine manual efforts, supervised ML, and heuristic methods (Fontanarava et al., 2017). Some approaches in the literature focus solely on features extracted from the review text. Linguistic characteristics range from counting the frequency of words or n-grams (Viviani and Pasi, 2017) to more advanced approaches relying on distributional semantics (Lee et al., 2016). However, despite the progress made in detection studies, considerable challenges lie ahead

Technical Details of Final Deliverable Final Deliverable of the Project Software SystemCore Industry ITOther IndustriesCore Technology Artificial Intelligence(AI)Other TechnologiesSustainable Development Goals Good Health and Well-Being for People, Decent Work and Economic GrowthRequired Resources
Item Name Type No. of Units Per Unit Cost (in Rs) Total (in Rs)
Total in (Rs) 68000
GeForce GTX 1070 Equipment16800068000

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