Deep learning has proven to be successful in various domains and for different tasks. However, when it comes to private data several restrictions are making it difficult to use deep learning approaches in these application fields. Recent approaches try to generate data privately instead of applying a privacy-preserving mechanism directly, on top of the classifier. The solution is to create public data from private data in a manner that preserves the privacy of the data. In this work, two very prominent GAN-based architectures were evaluated in the context of private time series classification. In contrast to previous work, mostly limited to the image domain, the scope of this benchmark was the time series domain. The experiments show that especially GSWGAN performs well across a variety of public datasets outperforming the competitor DPWGAN. An analysis of the generated datasets further validates the superiority of GSWGAN in the context of time series generation.
翻译:深度学习在各个领域和不同任务中已经证明了其成功。然而,当涉及私密数据时,许多限制使得在这些应用领域中使用深度学习方法变得困难。最近的方法尝试生成隐私数据,而不是直接在分类器之上应用隐私保护机制。解决方法是创建公共数据,以一种保护数据隐私的方式从私密数据生成。在这项工作中,评估了两种非常突出的基于 GAN 的架构,用于私密时间序列分类。与先前主要限于图像域的工作不同,这个基准测试的范围是时间序列域。实验表明,尤其是 GSWGAN在各种公共数据集中表现良好,优于竞争对手 DPWGAN。生成数据集的分析进一步验证了 GSWGAN 在时间序列生成方面的优越性。