Univariate blood pressure time series data
Missing data imputation methods (Kalman smoothing techniques, interpolation techniques [linear, spline, and Stineman], moving average techniques [SMA and EWMA])
Performance on data distribution and forecasting with ARIMA and LSTM models
Kalman smoothing, interpolation, and moving average techniques are recommended for imputing missing univariate blood pressure time series data, with LSTM slightly outperforming ARIMA for forecasting.
We recommend to the researchers that they consider Kalman smoothing techniques, interpolation techniques (linear, spline, and Stineman), moving average techniques (SMA and EWMA) for imputing univariate time series data as they perform well on both data distribution and forecasting with ARIMA and LSTM models. The LSTM slightly outperforms ARIMA models, however, for small samples, ARIMA is simpler and faster to execute.
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Nicholas Niako
Jesús D. Melgarejo
Gladys E. Maestre
BMC Medical Research Methodology
SHILAP Revista de lepidopterología
The University of Texas Rio Grande Valley
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Niako et al. (Thu,) studied this question.
www.synapsesocial.com/papers/69de811d7ed287395e5594f0 — DOI: https://doi.org/10.1186/s12874-024-02448-3