Missing Features Reconstruction Using a Wasserstein Generative Adversarial Imputation Network

21 Jun 2020Magda FriedjungováDaniel VašataMaksym BalatskoMarcel Jiřina

Missing data is one of the most common preprocessing problems. In this paper, we experimentally research the use of generative and non-generative models for feature reconstruction... (read more)

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