AI-Driven Personalization in E-Commerce: Recommender Systems Using ML
Abstract
E-commerce platforms increasingly rely on AI-driven recommender systems to enhance user experience and sales. This paper surveys recommendation algorithms including collaborative filtering, content-based filtering, and hybrid models. We focus on the application of deep learning techniques such as matrix factorization and attention mechanisms to improve recommendation accuracy.
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