Semi-Supervised Federated Heterogeneous Transfer Learning

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Federated learning (FL) is a privacy-preserving paradigm that collaboratively train machine learning models with distributed data stored in different silos without exposing sensitive information. Different from most existing FL approaches requiring data from different parties share either the same feature space or sample ID space, federated transfer learning (FTL), which is a recently proposed FL concept, is designed for situations where data from different parties differ not only in samples but also in feature space. However, like most traditional FL approaches, FTL methods also suffer from issues caused by insufficiency of overlapping data. In this paper, we propose a novel FTL framework referred to as Semi-Supervised Federated Heterogeneous Transfer Learning (SFHTL) to leverage on the unlabeled non-overlapping samples to reduce model overfitting as a result of insufficient overlapping training samples in FL scenarios. Unlike existing FTL approaches, SFHTL makes use of non-overlapping samples from all parties to expand the training set for each party to improve local model performance. Through extensive experimental evaluation based on real-world datasets, we demonstrate significant advantages of SFHTL over state-of-the-art approaches.

论文关键词:Federated transfer learning,Data privacy preservation,Non-overlapping data utilization,Training set expansion

论文评审过程:Received 30 March 2021, Revised 28 June 2022, Accepted 4 July 2022, Available online 11 July 2022, Version of Record 15 July 2022.

论文官网地址:https://doi.org/10.1016/j.knosys.2022.109384