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Analysis Study Research Paper | Computer Science and Information Technology | United States of America | Volume 14 Issue 1, January 2025 | Popularity: 3.4 / 10
Balancing Privacy and Personalization: AI Solutions for Hyper - Personalized Media Platforms
Raghu K Para
Abstract: Hyper - personalized online media platforms are increasingly leveraging deep learning and natural language processing (NLP) to tailor content, recommendations, and interactions to individual users. However, such personalization often comes at the expense of user privacy due to extensive data collection and centralized model training processes. This study investigates the intersection of AI - driven hyper - personalization and privacy - preserving technologies in online media platforms. It focuses on federated learning and encryption - based NLP systems to address privacy concerns while maintaining personalization efficacy. By exploring cutting - edge privacy - enhancing methods and cryptographic protocols, the paper proposes frameworks to balance these competing objectives. It also examines challenges such as system heterogeneity, computational overhead, and regulatory compliance, offering future directions for secure, scalable, and user - centric AI solutions. Finally, we present future directions for secure collaborative learning, advanced cryptographic approaches, and policy considerations that can help shape an era of user - centric, privacy - preserving AI.
Keywords: privacy - preserving AI, federated learning, hyper - personalization, encryption - based NLP, user data protection
Edition: Volume 14 Issue 1, January 2025
Pages: 272 - 279
DOI: https://www.doi.org/10.21275/SR25104094633
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