JSAI2024

Presentation information

Organized Session

Organized Session » OS-17

[3P5-OS-17a] OS-17

Thu. May 30, 2024 3:30 PM - 5:10 PM Room P (Room 401)

オーガナイザ:名取 直毅(株式会社アイシン)、梶 大介(株式会社デンソー)、廣瀬 正明(株式会社デンソー)、河村 芳海(トヨタ自動車株式会社)、梶 洋隆(トヨタ自動車株式会社)、城殿 清澄(株式会社豊田中央研究所)

4:50 PM - 5:10 PM

[3P5-OS-17a-05] Quantification of Data Uniqueness by Federated Learning with Autonomous Client Models

〇Shunsuke Kawano1, Yoshitaka Yamamoto1, Daisuke Kaji2 (1. Shizuoka University, 2. DENSO CORPORATION)

Keywords:Federated Learning, Data uniqueness, Personalized federated learning

Recently, Federated Learning (FL) has been attracting attention as a method for learning from distributed data. While FL has advantages such as privacy protection and reduced data traffic, it is difficult to characterize the non-i.i.d data of each client since data collection is not performed on the server side. In this study, we quantify the uniqueness of the data using FL with autonomous client models, which deals with a general model corresponding to all data constructed by the server side and a personalized model for each client data. The validity of the proposed method is assessed in terms of model performance and data feature extraction.

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