decisionSupport (1.105.2)
Quantitative Support of Decision Making under Uncertainty.
http://www.worldagroforestry.org/
http://cran.rproject.org/web/packages/decisionSupport
Supporting the quantitative analysis of binary welfare based decision making processes using Monte Carlo simulations. Decision support is given on two levels: (i) The actual decision level is to choose between two alternatives under probabilistic uncertainty. This package calculates the optimal decision based on maximizing expected welfare. (ii) The meta decision level is to allocate resources to reduce the uncertainty in the underlying decision problem, i.e to increase the current information to improve the actual decision making process. This problem is dealt with using the Value of Information Analysis. The Expected Value of Information for arbitrary prospective estimates can be calculated as well as Individual Expected Value of Perfect Information. The probabilistic calculations are done via Monte Carlo simulations. This Monte Carlo functionality can be used on its own.
Maintainer:
Eike Luedeling
Author(s): Eike Luedeling [cre, aut] (University of Bonn), Lutz Goehring [aut] (ICRAF and Lutz Goehring Consulting), Katja Schiffers [aut] (University of Bonn)
License: GPL3
Uses: chillR, fANCOVA, ggplot2, msm, mvtnorm, nleqslv, rriskDistributions, eha, pls, mc2d, testthat, knitr, rmarkdown
Released 4 months ago.
8 previous versions
 decisionSupport_1.103.8. Released over 1 year ago.
 decisionSupport_1.103.7. Released almost 2 years ago.
 decisionSupport_1.103.6. Released about 2 years ago.
 decisionSupport_1.103.2. Released about 2 years ago.
 decisionSupport_1.102.2. Released over 2 years ago.
 decisionSupport_1.102.1. Released over 2 years ago.
 decisionSupport_1.101.2. Released almost 4 years ago.
 decisionSupport_1.101.1. Released almost 5 years ago.
Ratings
Overall: 

Documentation: 

Log in to vote.
Reviews
No one has written a review of decisionSupport yet. Want to be the first? Write one now.
Related packages: … (20 best matches, based on common tags.)
Search for decisionSupport on google, google scholar, rhelp, rdevel.
Visit decisionSupport on R Graphical Manual.