The main aim of Privacy-Preserving Machine Learning (PPML) is to protect the privacy and provide security to the data used in building Machine Learning models. There are various techniques in PPML such as Secure Multi-Party Computation, Differential Privacy, and Homomorphic Encryption (HE). The techniques are combined with various Machine Learning models and even Deep Learning Networks to protect the data privacy as well as the identity of the user. In this paper, we propose a fully homomorphic encrypted wavelet neural network to protect privacy and at the same time not compromise on the efficiency of the model. We tested the effectiveness of the proposed method on seven datasets taken from the finance and healthcare domains. The results show that our proposed model performs similarly to the unencrypted model.
翻译:保护隐私机器学习(PPML)的主要目的是保护隐私,为建立机器学习模型时使用的数据提供安全保障; PPML中存在多种技术,例如安全多党计算、差异隐私和单体加密(HE)。这些技术与各种机器学习模型、甚至深学习网络相结合,以保护数据隐私和用户身份。在本文中,我们提议建立一个完全同质加密的加密波盘神经网络,以保护隐私,同时不损及模型的效率。我们测试了从金融和保健领域采集的七个数据集的拟议方法的有效性。结果显示,我们提议的模型与未加密模型类似。