| create.fixed | Fixed-X knockoffs | 
| create.gaussian | Model-X Gaussian knockoffs | 
| create.second_order | Second-order Gaussian knockoffs | 
| create.solve_asdp | Relaxed optimization for fixed-X and Gaussian knockoffs | 
| create.solve_equi | Optimization for equi-correlated fixed-X and Gaussian knockoffs | 
| create.solve_sdp | Optimization for fixed-X and Gaussian knockoffs | 
| knockoff | knockoff: A package for controlled variable selection | 
| knockoff.filter | The Knockoff Filter | 
| knockoff.threshold | Threshold for the knockoff filter | 
| print.knockoff.result | Print results for the knockoff filter | 
| stat.forward_selection | Importance statistics based on forward selection | 
| stat.glmnet_coefdiff | Importance statistics based on a GLM with cross-validation | 
| stat.glmnet_lambdadiff | Importance statistics based on a GLM | 
| stat.glmnet_lambdasmax | GLM statistics for knockoff | 
| stat.lasso_coefdiff | Importance statistics based the lasso with cross-validation | 
| stat.lasso_coefdiff_bin | Importance statistics based on regularized logistic regression with cross-validation | 
| stat.lasso_lambdadiff | Importance statistics based on the lasso | 
| stat.lasso_lambdadiff_bin | Importance statistics based on regularized logistic regression | 
| stat.lasso_lambdasmax | Penalized linear regression statistics for knockoff | 
| stat.lasso_lambdasmax_bin | Penalized logistic regression statistics for knockoff | 
| stat.random_forest | Importance statistics based on random forests | 
| stat.sqrt_lasso | Importance statistics based on the square-root lasso | 
| stat.stability_selection | Importance statistics based on stability selection |