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Error bounds for data-driven models of dynamical systems
Authors:Oleng' Nicholas O  Gribok Andrei  Reifman Jaques
Institution:Bioinformatics Cell, U.S. Army Medical Research and Materiel Command, Frederick, MD 21702, USA.
Abstract:This work provides a technique for estimating error bounds about the predictions of data-driven models of dynamical systems. The bootstrap technique is applied to predictions from a set of dynamical system models, rather than from the time-series data, to estimate the reliability (in the form of prediction intervals) for each prediction. The technique is illustrated using human core temperature data, modeled by a hybrid (autoregressive plus first principles) approach. The temperature prediction intervals obtained are in agreement with those from the Camp-Meidell inequality. Moreover, as expected, the prediction intervals increase with the prediction horizon, time-series data variability, and model inaccuracy.
Keywords:Physiologic measurement predictions  Bootstrap  Error bounds  Confidence interval  Prediction interval  Time-series data  Dynamical systems
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