This paper considers the problem of differentially private semi-supervised transfer learning. The notion of membership-mapping is developed using measure theory basis to learn data representation via a fuzzy membership function. An alternative conception of deep autoencoder, referred to as Conditionally Deep Membership-Mapping Autoencoder (CDMMA) (that consists of a nested compositions of membership-mappings), is considered. Under practice-oriented settings, an analytical solution for the learning of CDMFA can be derived by means of variational optimization. The paper proposes a transfer learning approach that combines CDMMA with a tailored noise adding mechanism to achieve a given level of privacy-loss bound with the minimum perturbation of the data. Numerous experiments were carried out using MNIST, USPS, Office, and Caltech256 datasets to verify the competitive robust performance of the proposed methodology.
翻译:本文探讨了不同私人半监督转让学习的问题。 会员制图的概念是利用计量理论依据来通过模糊的会籍功能来学习数据代表的。 一种称为“有条件的深入会籍映射自动编码器”的深自动编码器(CDMMA)(由会员制映射的嵌套组成)的替代概念得到了考虑。 在面向实践的环境下,通过变通优化,可以产生一种学习CDMFA的分析性解决办法。 该文件提出了一种转让学习方法,将CDMMA与一个定制的添加噪音机制结合起来,以实现一定程度的隐私损失,同时尽量减少数据的扰动。 利用MNIST、USPS、Office和Caltech256数据集进行了许多实验,以核实拟议方法的竞争性强效表现。