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Controllers were robust to BG sensor errors.
Results were robust to the different decomposition weighting schemes.
All our main conclusions were robust to these alternate specifications.
The hypertension results were robust to a several specification tests.
Further, the sensitivity analyses showed that these results were robust to changes in input parameters.
Hence, the instrumental variables were robust to the addition of these crucial controls.
Sensitivity analyses indicated that results were robust to a wide range of inputs.
Results were robust to the network size and connection probability.
Results were robust to probability ranges between 0.10 and 0.30.
The results were robust to univariate and probabilistic sensitivity analysis.
All topologies inferred were robust to model assumption.
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