A Privacy-Preserving Social Computing Framework for Health Management Using Federated Learning

IEEE TRANSACTIONS ON COMPUTATIONAL SOCIAL SYSTEMS(2023)

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摘要
Currently, health management driven by intelligent means is a general demand of social systems. Although a number of researchers have paid attention to such areas, they have primarily focused on improving the performance of intelligent algorithms. Such intelligent algorithms are mostly based on the central computing mode, where all the user data are aggregated together in a central cloud to implement computing tasks. This poses a great threat to personal privacy due to exposure to the outside world. To address this challenge, this work uses a federated learning mechanism and proposes a privacy-preserving social computing framework for health management. User data are deposited in different user terminals to prevent exposure. A group of parameters are pretrained for each terminal in an iteration and are then transferred to the center cloud for updating. After multiple rounds of interactive training between the center cloud and the terminals, a recognition model finishes training for each terminal without direct access to data from other sources. Finally, this work also conducts experiments on a real-world dataset to assess the overall performance of the proposed approach.
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关键词
Social computing,Medical diagnostic imaging,Computational modeling,Task analysis,Privacy,Convolution,Security,Federated learning,health management,privacy security,social computing
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