$C^3DRec$: Cloud-Client Cooperative Deep Learning for Temporal Recommendation in the Post-GDPR Era
Jialiang Han, Yun Ma

TL;DR
This paper introduces $C^3DRec$, a privacy-preserving framework for temporal recommendation that combines centralized pre-GDPR data with local device fine-tuning, maintaining accuracy while respecting user privacy laws.
Contribution
It proposes a novel cloud-client cooperative deep learning framework that enables effective temporal recommendations without violating GDPR privacy regulations.
Findings
Achieves comparable accuracy to centralized models.
Maintains user privacy with minimal concerns.
Supports two modes: pull and push for recommendations.
Abstract
Mobile devices enable users to retrieve information at any time and any place. Considering the occasional requirements and fragmentation usage pattern of mobile users, temporal recommendation techniques are proposed to improve the efficiency of information retrieval on mobile devices by means of accurately recommending items via learning temporal interests with short-term user interaction behaviors. However, the enforcement of privacy-preserving laws and regulations, such as GDPR, may overshadow the successful practice of temporal recommendation. The reason is that state-of-the-art recommendation systems require to gather and process the user data in centralized servers but the interaction behaviors data used for temporal recommendation are usually non-transactional data that are not allowed to gather without the explicit permission of users according to GDPR. As a result, if users do…
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Taxonomy
TopicsRecommender Systems and Techniques · Privacy-Preserving Technologies in Data · Caching and Content Delivery
