On-Device Recommender Systems: A Comprehensive Survey
Hongzhi Yin, Liang Qu, Tong Chen, Wei Yuan, Ruiqi Zheng, Jing Long, Xin Xia, Yuhui Shi, Chengqi Zhang

TL;DR
This paper provides the first comprehensive survey of on-device recommender systems, covering deployment, training, privacy, and security, highlighting current methods, challenges, and future research directions.
Contribution
It systematically categorizes and contrasts existing methods for on-device recommender systems, filling a gap in the literature with a detailed taxonomy and analysis.
Findings
Provides a systematic taxonomy of DeviceRS methods
Highlights key challenges and future research directions
Synthesizes current research status in DeviceRS field
Abstract
Recommender systems have been widely deployed in various real-world applications to help users identify content of interest from massive amounts of information. Traditional recommender systems work by collecting user-item interaction data in a cloud-based data center and training a centralized model to perform the recommendation service. However, such cloud-based recommender systems (CloudRSs) inevitably suffer from excessive resource consumption, response latency, as well as privacy and security risks concerning both data and models. Recently, driven by the advances in storage, communication, and computation capabilities of edge devices, there has been a shift of focus from CloudRSs to on-device recommender systems (DeviceRSs), which leverage the capabilities of edge devices to minimize centralized data storage requirements, reduce the response latency caused by communication…
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Taxonomy
TopicsRecommender Systems and Techniques · IoT and Edge/Fog Computing · Caching and Content Delivery
Methodstravel james · Focus
