Medical data is often highly sensitive in terms of data privacy and security concerns. Federated learning, one type of machine learning techniques, has been started to use for the improvement of the privacy and security of medical data. In the federated learning, the training data is distributed across multiple machines, and the learning process is performed in a collaborative manner. There are several privacy attacks on deep learning (DL) models to get the sensitive information by attackers. Therefore, the DL model itself should be protected from the adversarial attack, especially for applications using medical data. One of the solutions for this problem is homomorphic encryption-based model protection from the adversary collaborator. This paper proposes a privacy-preserving federated learning algorithm for medical data using homomorphic encryption. The proposed algorithm uses a secure multi-party computation protocol to protect the deep learning model from the adversaries. In this study, the proposed algorithm using a real-world medical dataset is evaluated in terms of the model performance.
翻译:联邦学习是一种机器学习技术,已开始用于改善医疗数据的隐私和安全。在联邦学习中,培训数据分布在多个机器之间,学习过程以协作方式进行。为了让攻击者获得敏感信息,对深层学习模式进行了几次隐私攻击。因此,DL模型本身应当受到保护,免受对抗性攻击,特别是使用医疗数据的应用。这个问题的一个解决办法是对抗方合作者对基于同一形态加密模型的保护。本文建议采用一种使用同形态加密的保密混合学习算法,用于医疗数据。提议的算法使用一种安全的多方计算协议来保护敌方的深层学习模式。在这项研究中,使用真实世界医学数据集的拟议算法是用模型性能来评估的。