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A recommendation system is of vital importance in delivering personalization services, which often brings continuous dual improvement in user experience and organization revenue. However, the data of one single organization may not be enough to build an accurate recommendation model for inactive or new cold-start users. Moreover, due to the recent regulatory restrictions on user privacy and data security, as well as the commercial conflicts, the raw data in different organizations cannot be merged to alleviate the scarcity issue in training a model. In order to learn users' preferences from such cross-silo data of different organizations and then provide recommendations to the cold-start users, we propose a novel federated learning framework, i.e., federated cross-organization recommendation ecosystem (FedCORE). Specifically, we first focus on the ecosystem problem of cross-organization federated recommendation, including cooperation patterns and privacy protection. For the former, we propose a privacy-aware collaborative training and inference algorithm. For the latter, we define four levels of privacy leakage and propose some methods for protecting the privacy. We then conduct extensive experiments on three real-world datasets and two seminal recommendation models to study the impact of cooperation in our proposed ecosystem and the effectiveness of privacy protection.
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Zhitao Li
Shandong University of Traditional Chinese Medicine
Xueyang Wu
Hong Kong Polytechnic University
Weike Pan
Shenzhen University
IEEE Transactions on Knowledge and Data Engineering
University of Hong Kong
Hong Kong University of Science and Technology
Shenzhen University
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Li et al. (Thu,) studied this question.
synapsesocial.com/papers/68e780c8b6db6435876f3b52 — DOI: https://doi.org/10.1109/tkde.2024.3363505