- Advances in Artificial Intelligence Research
- Cilt: 5 Sayı: 1
- Hybrid Visual-Textual Product Recommendation System for E-Commerce Platforms
Hybrid Visual-Textual Product Recommendation System for E-Commerce Platforms
Authors : Pınar Süngü İşiaçik, Onur Tunali, Emre Tekelioğlu, Ali Hakan Işik
Pages : 1-6
Doi:10.54569/aair.1700682
View : 101 | Download : 19
Publication Date : 2025-06-16
Article Type : Research Paper
Abstract :Today, e-commerce sites provide a large number of products to users. However, presenting the right products to users is important for both customer satisfaction and increasing company revenues. Recommendation systems are systems that offer personalized product suggestions by analyzing user preferences and behaviors. This study presents a novel hybrid product recommendation system that integrates collaborative filtering and content-based filtering methods, enhanced by deep learning techniques. By using both visual and textual product features through BERT and CLIP models, our system addresses cold-start problem and real-time performance constraints. The system has been successfully deployed on the Cimri e-commerce platform, providing personalized recommendations that adapt to evolving user preferences while maintaining computational efficiency.Keywords : Ürün Öneri Sistemi, E-Ticaret, İşbirlikçi Filtreleme, İçerik Tabanlı Filtreleme, Hibrit Sistem
ORIGINAL ARTICLE URL
