Differentially Private Online Learning for Cloud-Based Video Recommendation with Multimedia Big Data in Social Networks
Pan Zhou, Yingxue Zhou, Dapeng Wu, Hai Jin

TL;DR
This paper introduces a cloud-assisted, differentially private online learning system for video recommendation in social networks, effectively balancing user privacy with recommendation accuracy amidst big data challenges.
Contribution
It proposes a novel geometric differentially private model for distributed online learning, enhancing privacy preservation while maintaining recommendation performance.
Findings
Outperforms existing methods in simulation tests.
Balances privacy and recommendation accuracy effectively.
Reduces performance loss in big social media data scenarios.
Abstract
With the rapid growth in multimedia services and the enormous offers of video contents in online social networks, users have difficulty in obtaining their interests. Therefore, various personalized recommendation systems have been proposed. However, they ignore that the accelerated proliferation of social media data has led to the big data era, which has greatly impeded the process of video recommendation. In addition, none of them has considered both the privacy of users' contexts (e,g., social status, ages and hobbies) and video service vendors' repositories, which are extremely sensitive and of significant commercial value. To handle the problems, we propose a cloud-assisted differentially private video recommendation system based on distributed online learning. In our framework, service vendors are modeled as distributed cooperative learners, recommending videos according to user's…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Recommender Systems and Techniques · Stochastic Gradient Optimization Techniques
