条件生成对抗网络合成数据的生成

Belén Vega-Márquez, Cristina Rubio-Escudero, Isabel A. Nepomuceno-Chamorro
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引用次数: 1

摘要

由于新的数据保护法的出现,合成数据的生成正在成为任何组织日常生活中的一项基本任务。由于人工智能使用的增加,解决这一问题的最新建议之一是使用生成对抗网络(gan)。这些类型的网络已经证明了创建具有良好性能的合成数据的巨大能力。合成数据生成的目标是创建在许多分析任务(如分类)中执行类似于原始数据集的数据。gan的问题在于,在分类问题中,gan在生成新数据时不考虑类标签,而是将其视为任何其他属性。本研究工作的重点是使用条件生成对抗网络(CGAN)从具有不同特征的数据集中创建新的合成数据。ggan是GANs的扩展,在生成新数据时考虑类标签。我们通过两种不同的方式来衡量结果的性能:首先,通过比较在原始数据集和生成数据中与分类算法获得的结果;其次,通过检查原始数据与生成数据之间的相关性是最小的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generation of Synthetic Data with Conditional Generative Adversarial Networks
The generation of synthetic data is becoming a fundamental task in the daily life of any organization due to the new protection data laws that are emerging. Because of the rise in the use of Artificial Intelligence, one of the most recent proposals to address this problem is the use of Generative Adversarial Networks (GANs). These types of networks have demonstrated a great capacity to create synthetic data with very good performance. The goal of synthetic data generation is to create data that will perform similarly to the original dataset for many analysis tasks, such as classification. The problem of GANs is that in a classification problem, GANs do not take class labels into account when generating new data, it is treated as any other attribute. This research work has focused on the creation of new synthetic data from datasets with different characteristics with a Conditional Generative Adversarial Network (CGAN). CGANs are an extension of GANs where the class label is taken into account when the new data is generated. The performance of our results has been measured in two different ways: firstly, by comparing the results obtained with classification algorithms, both in the original datasets and in the data generated; secondly, by checking that the correlation between the original data and those generated is minimal.
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