
doi: 10.3233/shti210214
pmid: 34042620
The study aims at generating initial and directional insights in the applicability of conditional recurrent generative adversarial nets for the imputation and forecasting of medical time series data. Our experiment with blood pressure series showed that a generative recurrent autoencoder exhibits significant individual learning progress but needs further tuning to benefit from joint training.
Learning, Neural Networks, Computer, Forecasting
Learning, Neural Networks, Computer, Forecasting
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