| decisionSupport-package | Quantitative Support of Decision Making under Uncertainty. |
| as.data.frame.mcSimulation | Coerce Monte Carlo simulation results to a data frame. |
| as.estimate | Create a multivariate estimate object. |
| as.estimate1d | Create a 1-dimensional estimate object. |
| chance_event | simulate occurrence of random events |
| compound_figure | Compound figure for decision support |
| corMat | Return the Correlation Matrix. |
| corMat.estimate | Get and set attributes of an 'estimate' object. |
| corMat<- | Replace correlation matrix. |
| corMat<-.estimate | Get and set attributes of an 'estimate' object. |
| decisionSupport | Welfare Decision and Value of Information Analysis wrapper function. |
| discount | Discount time series for Net Present Value (NPV) calculation |
| empirical_EVPI | Expected value of perfect information (EVPI) for a simple model with the predictor variable sampled from a normal distribution with. |
| estimate | Create a multivariate estimate object. |
| estimate1d | Create a 1-dimensional estimate object. |
| estimate_read_csv | Read an Estimate from CSV - File. |
| estimate_read_csv_old | Read an Estimate from CSV - File. |
| estimate_write_csv | Write an Estimate to CSV - File. |
| eviSimulation | Expected Value of Information (EVI) Simulation. |
| gompertz_yield | Gompertz function yield prediction for perennials |
| hist.eviSimulation | Plot Histograms of results of an EVI simulation |
| hist.mcSimulation | Plot Histogram of results of a Monte Carlo Simulation |
| hist.welfareDecisionAnalysis | Plot Histogram of results of a Welfare Decision Analysis |
| individualEvpiSimulation | Individual Expected Value of Perfect Information Simulation |
| make_CPT | Make Conditional Probability tables using the likelihood method |
| mcSimulation | Perform a Monte Carlo simulation. |
| multi_EVPI | Expected value of perfect information (EVPI) for multiple variables. This is a wrapper for the empirical_EVPI function. See the documentation of the 'empirical_EVPI' function for more details. |
| names.estimate | Get and set attributes of an 'estimate' object. |
| paramtnormci_fit | Fit parameters of truncated normal distribution based on a confidence interval. |
| paramtnormci_numeric | Return parameters of truncated normal distribution based on a confidence interval. |
| plainNames2data.frameNames | Transform model function variable names: plain to data.frame names. |
| plot.EVPI_outputs | Expected value of perfect information (EVPI) for multiple variables. This is a wrapper for the empirical_EVPI function. See the documentation of the 'empirical_EVPI' function for more details. |
| plot.EVPI_res | Expected value of perfect information (EVPI) for a simple model with the predictor variable sampled from a normal distribution with. |
| plot_cashflow | Cashflow plot for Monte Carlo simulation results |
| plot_distributions | Probability distribution plots for various types of Monte Carlo simulation results |
| plot_empirical_EVPI | Expected value of perfect information (EVPI) for a simple model with the predictor variable sampled from a normal distribution with. |
| plot_evpi | Visualizing the results of Expected Value of Perfect Information (EVPI) analysis for various types of Monte Carlo simulation results |
| plot_multi_EVPI | Expected value of perfect information (EVPI) for multiple variables. This is a wrapper for the empirical_EVPI function. See the documentation of the 'empirical_EVPI' function for more details. |
| plot_pls | Visualizing Projection to Latent Structures (PLS) regression outputs for various types of Monte Carlo simulation results |
| plsr.mcSimulation | Partial Least Squares Regression (PLSR) of Monte Carlo simulation results. |
| print.mcSimulation | Print Basic Results from Monte Carlo Simulation. |
| print.summary.eviSimulation | Print the Summarized EVI Simulation Results. |
| print.summary.mcSimulation | Print the summary of a Monte Carlo simulation. |
| print.summary.welfareDecisionAnalysis | Print the summarized Welfare Decision Analysis results. |
| random | Quantiles or empirically based generic random number generation. |
| random.data.frame | Quantiles or empirically based generic random number generation. |
| random.default | Quantiles or empirically based generic random number generation. |
| random.estimate | Generate random numbers for an estimate. |
| random.estimate1d | Generate univariate random numbers defined by a 1-d estimate. |
| random.vector | Quantiles or empirically based generic random number generation. |
| random_state | Draw a random state for a categorical variable |
| rdist90ci_exact | 90%-confidence interval based univariate random number generation (by exact parameter calculation). |
| rdistq_fit | Quantiles based univariate random number generation (by parameter fitting). |
| rmvnorm90ci_exact | 90%-confidence interval multivariate normal random number generation. |
| row.names.estimate | Get and set attributes of an 'estimate' object. |
| rposnorm90ci | 90%-confidence interval based truncated normal random number generation. |
| rtnorm90ci | 90%-confidence interval based truncated normal random number generation. |
| rtnorm_0_1_90ci | 90%-confidence interval based truncated normal random number generation. |
| sample_CPT | Sample a Conditional Probability Table |
| sample_simple_CPT | Make Conditional Probability tables using the likelihood method |
| scenario_mc | Perform a Monte Carlo simulation for predefined scenarios. |
| sort.summary.eviSimulation | Sort Summarized EVI Simulation Results.. |
| summary.eviSimulation | Summarize EVI Simulation Results |
| summary.EVPI_outputs | Expected value of perfect information (EVPI) for multiple variables. This is a wrapper for the empirical_EVPI function. See the documentation of the 'empirical_EVPI' function for more details. |
| summary.EVPI_res | Expected value of perfect information (EVPI) for a simple model with the predictor variable sampled from a normal distribution with. |
| summary.mcSimulation | Summarize results from Monte Carlo simulation. |
| summary.welfareDecisionAnalysis | Summarize Welfare Decision Analysis results. |
| summary_empirical_EVPI | Expected value of perfect information (EVPI) for a simple model with the predictor variable sampled from a normal distribution with. |
| summary_multi_EVPI | Expected value of perfect information (EVPI) for multiple variables. This is a wrapper for the empirical_EVPI function. See the documentation of the 'empirical_EVPI' function for more details. |
| temp_situations | Situation occurrence and resolution |
| vv | value varier function |
| welfareDecisionAnalysis | Analysis of the underlying welfare based decision problem. |