Back to Search Start Over

Detecting Deceptive Dark Patterns in E-commerce Platforms

Authors :
Ramteke, Arya
Tembhurne, Sankalp
Sonawane, Gunesh
Bhimanpallewar, Ratnmala N.
Publication Year :
2024

Abstract

Dark patterns are deceptive user interfaces employed by e-commerce websites to manipulate user's behavior in a way that benefits the website, often unethically. This study investigates the detection of such dark patterns. Existing solutions include UIGuard, which uses computer vision and natural language processing, and approaches that categorize dark patterns based on detectability or utilize machine learning models trained on datasets. We propose combining web scraping techniques with fine-tuned BERT language models and generative capabilities to identify dark patterns, including outliers. The approach scrapes textual content, feeds it into the BERT model for detection, and leverages BERT's bidirectional analysis and generation abilities. The study builds upon research on automatically detecting and explaining dark patterns, aiming to raise awareness and protect consumers.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.01608
Document Type :
Working Paper