| auc | Area under the ROC curve | 
| auto_cor | Multicollinearity reduction via Pearson correlation | 
| auto_vif | Multicollinearity reduction via Variance Inflation Factor | 
| beowulf_cluster | Defines a beowulf cluster | 
| case_weights | Generates case weights for binary data | 
| default_distance_thresholds | Default distance thresholds to generate spatial predictors | 
| distance_matrix | Matrix of distances among ecoregion edges. | 
| double_center_distance_matrix | Double centers a distance matrix | 
| filter_spatial_predictors | Removes redundant spatial predictors | 
| get_evaluation | Gets performance data frame from a cross-validated model | 
| get_importance | Gets the global importance data frame from a model | 
| get_importance_local | Gets the local importance data frame from a model | 
| get_moran | Gets Moran's I test of model residuals | 
| get_performance | Gets out-of-bag performance scores from a model | 
| get_predictions | Gets model predictions | 
| get_residuals | Gets model residuals | 
| get_response_curves | Gets data to allow custom plotting of response curves | 
| get_spatial_predictors | Gets the spatial predictors of a spatial model | 
| is_binary | Checks if dependent variable is binary with values 1 and 0 | 
| make_spatial_fold | Makes one training and one testing spatial folds | 
| make_spatial_folds | Makes training and testing spatial folds | 
| mem | Moran's Eigenvector Maps of a distance matrix | 
| mem_multithreshold | Moran's Eigenvector Maps for different distance thresholds | 
| moran | Moran's I test | 
| moran_multithreshold | Moran's I test on a numeric vector for different neighborhoods | 
| objects_size | Shows size of objects in the R environment | 
| optimization_function | Optimization equation to select spatial predictors | 
| pca | Principal Components Analysis | 
| pca_multithreshold | PCA of a distance matrix over distance thresholds | 
| plant_richness_df | Plant richness and predictors of American ecoregions | 
| plot_evaluation | Plots the results of a spatial cross-validation | 
| plot_importance | Plots the variable importance of a model | 
| plot_moran | Plots a Moran's I test of model residuals | 
| plot_optimization | Optimization plot of a selection of spatial predictors | 
| plot_residuals_diagnostics | Plot residuals diagnostics | 
| plot_response_curves | Plots the response curves of a model. | 
| plot_response_surface | Plots the response surfaces of a random forest model | 
| plot_training_df | Scatterplots of a training data frame | 
| plot_training_df_moran | Moran's I plots of a training data frame | 
| plot_tuning | Plots a tuning object produced by 'rf_tuning()' | 
| prepare_importance_spatial | Prepares variable importance objects for spatial models | 
| print.rf | Custom print method for random forest models | 
| print_evaluation | Prints cross-validation results | 
| print_importance | Prints variable importance | 
| print_moran | Prints results of a Moran's I test | 
| print_performance | print_performance | 
| rank_spatial_predictors | Ranks spatial predictors | 
| rescale_vector | Rescales a numeric vector into a new range | 
| residuals_diagnostics | Normality test of a numeric vector | 
| residuals_test | Normality test of a numeric vector | 
| rf | Random forest models with Moran's I test of the residuals | 
| rf_compare | Compares models via spatial cross-validation | 
| rf_evaluate | Evaluates random forest models with spatial cross-validation | 
| rf_importance | Contribution of each predictor to model transferability | 
| rf_repeat | Fits several random forest models on the same data | 
| rf_spatial | Fits spatial random forest models | 
| rf_tuning | Tuning of random forest hyperparameters via spatial cross-validation | 
| root_mean_squared_error | RMSE and normalized RMSE | 
| select_spatial_predictors_recursive | Finds optimal combinations of spatial predictors | 
| select_spatial_predictors_sequential | Sequential introduction of spatial predictors into a model | 
| standard_error | Standard error of the mean of a numeric vector | 
| statistical_mode | Statistical mode of a vector | 
| the_feature_engineer | Suggest variable interactions and composite features for random forest models | 
| thinning | Applies thinning to pairs of coordinates | 
| thinning_til_n | Applies thinning to pairs of coordinates until reaching a given n | 
| vif | Variance Inflation Factor of a data frame | 
| weights_from_distance_matrix | Transforms a distance matrix into a matrix of weights |