APPARATUS AND METHOD OF PERSONALIZED FEDERATED LEARNING BASED ON PARTIAL PARAMETERS SHARING

    公开(公告)号:US20240242088A1

    公开(公告)日:2024-07-18

    申请号:US18219691

    申请日:2023-07-09

    CPC classification number: G06N3/098

    Abstract: Provided is a method of personalized federated learning performed by an electronic device. The method is performed by an electronic device including one or more processors, a communication circuit which communicates with an external device, and one or more memories storing at least one instruction executed by the one or more processors. The method may include, by the one or more processors, training a local model using local data, in which the local model as an artificial neural network model includes a first parameter set corresponding to a global parameter set and a second parameter set corresponding to a local parameter set, transmitting the first parameter set to the external device, receiving a 1-1st parameter set for renewing the first parameter set from the external device, changing the first parameter set included in the local model to the 1-1st parameter set, and training the local model including the 1-1st parameter set.

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