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DGSA

This package implements the distance based generalized sensitivity analysis method (DGSA). For more information about the method please consider:

Fenwick, Darryl, Céline Scheidt, and Jef Caers. "Quantifying asymmetric parameter interactions in sensitivity analysis: Application to reservoir modeling." Mathematical Geosciences 46.4 (2014): 493-511.

You can install the package manually or from GitHub:

Manual installation

Clone to your own computer, open Rstudio or R and type:

install.packages("package_Location", repos = NULL, type=source)

You also have an option to load your clone as a project in Rstudio and then proceed with project build Ctrl+Shift+B. This is particularly useful if you plan on adding/modifying features.

Installing from GitHub

First, you will need to make sure that you have devtools installed, then you can install with the following command:

devtools::install_github("ogru/DGSA")

After that, you can proceed to load the routines in the usual way with library(DGSA).

Examples of usage

To view some of the package capabilities go to the following link.

Related software

If you prefer to work with MATLAB, you can find the original MATLAB implementation here: https://github.com/scheidtc/dGSA. However, without the matrix plot for visualization of all sensitivities/importances.

Citation

If you find this sofware useful please consider citing it in your publications. You may use the following Bibtex entry:

@Manual{DGSA_2016,
  title  = {DGSA, an \proglang{R} package},
  author = {Ognjen Grujic},
  year   = {2016},
  note   = {\proglang{R}~package version~1.0},
  url    = {https://github.com/ogru/DGSA},
}

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An R implementation of the DGSA method

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