2021
DOI: 10.48550/arxiv.2111.07015
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HydraGAN A Multi-head, Multi-objective Approach to Synthetic Data Generation

Abstract: Synthetic data generation overcomes limitations of real-world machine learning. Traditional methods are valuable for augmenting costly datasets but only optimize one criterion: realism. In this paper, we tackle the problem of generating synthetic data that optimize multiple criteria. This goal is necessary when real data are replaced by synthetic for privacy preservation. We introduce HydraGAN, a new approach to synthetic data generation that introduces multiple generator and discriminator agents into the syst… Show more

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References 33 publications
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