| add_white_noise | Target-encoding methods |
| auc_score | Area Under the Receiver Operating Characteristic |
| collinear | Automated multicollinearity management |
| cor_df | Correlation data frame of numeric and character variables |
| cor_matrix | Correlation matrix of numeric and character variables |
| cor_select | Automated multicollinearity reduction via pairwise correlation |
| cramer_v | Bias Corrected Cramer's V |
| f_gam_auc_balanced | AUC of Logistic GAM Model |
| f_gam_auc_unbalanced | AUC of Logistic GAM Model with Weighted Cases |
| f_gam_deviance | Explained Deviance from univariate GAM model |
| f_logistic_auc_balanced | AUC of Binomial GLM with Logit Link |
| f_logistic_auc_unbalanced | AUC of Binomial GLM with Logit Link and Case Weights |
| f_rf_auc_balanced | AUC of Random Forest model of a balanced binary response |
| f_rf_auc_unbalanced | AUC of Random Forest model of an unbalanced binary response |
| f_rf_deviance | R-squared of Random Forest model |
| f_rf_rsquared | R-squared of Random Forest model |
| f_rsquared | R-squared between a response and a predictor |
| identify_non_numeric_predictors | Identify non-numeric predictors |
| identify_numeric_predictors | Identify numeric predictors |
| identify_zero_variance_predictors | Identify zero and near-zero-variance predictors |
| preference_order | Compute the preference order for predictors based on a user-defined function. |
| target_encoding_lab | Target encoding of non-numeric variables |
| target_encoding_loo | Target-encoding methods |
| target_encoding_mean | Target-encoding methods |
| target_encoding_rank | Target-encoding methods |
| target_encoding_rnorm | Target-encoding methods |
| toy | One response and four predictors with varying levels of multicollinearity |
| validate_df | Validate input data frame |
| validate_predictors | Validate the 'predictors' argument for analysis |
| validate_response | Validate the 'response' argument for target encoding of non-numeric variables |
| vi | 30.000 records of responses and predictors all over the world |
| vif_df | Variance Inflation Factor |
| vif_select | Automated multicollinearity reduction via Variance Inflation Factor |
| vi_predictors | Predictor names in data frame 'vi' |