Zilong Zhao, Aditya Kunar, Robert Birke, Hiek Van der Scheer, Lydia Y Chen
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CTAB-GAN+ improves upon state-of-the-art by (i) adding downstream losses to conditional GAN for higher utility synthetic data in both classification and regression domains; (ii) using Wasserstein loss with gradient penalty for better training convergence; (iii) introducing novel encoders targeting mixed continuous-categorical variables and variables with unbalanced or skewed data; and (iv) training with DP stochastic gradient descent to impose strict privacy guarantees. We extensively evaluate CTAB-GAN+ on statistical similarity and machine learning utility against state-of-the-art tabular GANs. The results show that CTAB-GAN+ synthesizes privacy-preserving data with at least 21.9% higher machine learning utility (i.e., F1-Score) across multiple datasets and learning tasks under given privacy budget.</p>","PeriodicalId":52859,"journal":{"name":"Frontiers in Big Data","volume":"6 ","pages":"1296508"},"PeriodicalIF":2.4000,"publicationDate":"2024-01-08","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10801038/pdf/","citationCount":"0","resultStr":"{\"title\":\"CTAB-GAN+: enhancing tabular data synthesis.\",\"authors\":\"Zilong Zhao, Aditya Kunar, Robert Birke, Hiek Van der Scheer, Lydia Y Chen\",\"doi\":\"10.3389/fdata.2023.1296508\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>The usage of synthetic data is gaining momentum in part due to the unavailability of original data due to privacy and legal considerations and in part due to its utility as an augmentation to the authentic data. Generative adversarial networks (GANs), a paragon of generative models, initially for images and subsequently for tabular data, has contributed many of the state-of-the-art synthesizers. As GANs improve, the synthesized data increasingly resemble the real data risking to leak privacy. Differential privacy (DP) provides theoretical guarantees on privacy loss but degrades data utility. Striking the best trade-off remains yet a challenging research question. In this study, we propose CTAB-GAN+ a novel conditional tabular GAN. 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引用次数: 0
摘要
由于隐私和法律方面的原因,无法获得原始数据,而合成数据作为真实数据的一种增强工具,其使用势头日益强劲。生成对抗网络(GANs)是生成模型的典范,最初用于图像,后来用于表格数据,它为许多最先进的合成器做出了贡献。随着 GANs 的改进,合成数据与真实数据越来越相似,从而有可能泄露隐私。差分隐私(DP)在理论上保证了隐私不会丢失,但却降低了数据的实用性。如何实现最佳权衡仍是一个具有挑战性的研究问题。在本研究中,我们提出了 CTAB-GAN+ 一种新型条件表式 GAN。CTAB-GAN+ 通过以下方式改进了最先进的技术:(i) 在条件 GAN 中添加下游损失,以在分类和回归领域获得更高的合成数据效用;(ii) 使用带有梯度惩罚的 Wasserstein 损失,以获得更好的训练收敛性;(iii) 引入新型编码器,以混合连续分类变量和具有不平衡或倾斜数据的变量为目标;(iv) 使用 DP 随机梯度下降法进行训练,以提供严格的隐私保证。我们对 CTAB-GAN+ 的统计相似性和机器学习效用进行了广泛评估,并与最先进的表格型 GAN 进行了比较。结果表明,在给定隐私预算的情况下,CTAB-GAN+ 在多个数据集和学习任务中合成的隐私保护数据的机器学习效用(即 F1 分数)至少高出 21.9%。
The usage of synthetic data is gaining momentum in part due to the unavailability of original data due to privacy and legal considerations and in part due to its utility as an augmentation to the authentic data. Generative adversarial networks (GANs), a paragon of generative models, initially for images and subsequently for tabular data, has contributed many of the state-of-the-art synthesizers. As GANs improve, the synthesized data increasingly resemble the real data risking to leak privacy. Differential privacy (DP) provides theoretical guarantees on privacy loss but degrades data utility. Striking the best trade-off remains yet a challenging research question. In this study, we propose CTAB-GAN+ a novel conditional tabular GAN. CTAB-GAN+ improves upon state-of-the-art by (i) adding downstream losses to conditional GAN for higher utility synthetic data in both classification and regression domains; (ii) using Wasserstein loss with gradient penalty for better training convergence; (iii) introducing novel encoders targeting mixed continuous-categorical variables and variables with unbalanced or skewed data; and (iv) training with DP stochastic gradient descent to impose strict privacy guarantees. We extensively evaluate CTAB-GAN+ on statistical similarity and machine learning utility against state-of-the-art tabular GANs. The results show that CTAB-GAN+ synthesizes privacy-preserving data with at least 21.9% higher machine learning utility (i.e., F1-Score) across multiple datasets and learning tasks under given privacy budget.