Smooth data across multiple dimensions using weighted averages
Project description
Weighted-Average (WeAve)
The WeAve package (pronounced 'weave') smooths data across multiple dimensions using weighted averages with methods inspired by the spatial-temporal models developed in the following paper:
Foreman, K.J., Lozano, R., Lopez, A.D., et al. "Modeling causes of death: an integrated approach using CODEm," Popul Health Metrics, vol. 10, no. 1, pp. 1-23, 2012.
For instructions on how to install and use WeAve, please refer to the documentation.
License
This project uses the following license: BSD 2-Clause
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