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목록data augmentation (1)

EZI 기술 블로그 JU

Time Series Data Augmentation for Deep Learning: A Survey

https://arxiv.org/pdf/2002.12478.pdf Current DGMs(Deep Generative Models) adopted for time series data augmentation are mainly GANs. In summary, besides the common GAN architectures, how to leverage other deep generative models like DARNs(Deep Autoregressive Networks), NFs(Normalizing Flows), and VAEs(Variational Autoencoders), which are less investigated for time series data augmentation, remai..

Paper review 2023. 3. 14. 12:51
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