| mlfit-package | mlfit: Iterative Proportional Fitting Algorithms for Nested Structures | 
| as_flat_ml_fit_problem | Return a flattened representation of a multi-level fitting problem instance | 
| compute_margins | Compute margins for a weighting of a multi-level fitting problem | 
| dss | Calibrate sample weights | 
| flatten_ml_fit_problem | Return a flattened representation of a multi-level fitting problem instance | 
| format.ml_fit | Estimate weights for a fitting problem | 
| format.ml_problem | Create an instance of a fitting problem | 
| gginv | Generalized Inverse of a Matrix using a custom tolerance or SVD implementation | 
| is_ml_fit | Estimate weights for a fitting problem | 
| is_ml_problem | Create an instance of a fitting problem | 
| margin_to_df | Compute margins for a weighting of a multi-level fitting problem | 
| mlfit | mlfit: Iterative Proportional Fitting Algorithms for Nested Structures | 
| ml_fit | Estimate weights for a fitting problem | 
| ml_fit_dss | Estimate weights for a fitting problem | 
| ml_fit_entropy_o | Estimate weights for a fitting problem | 
| ml_fit_hipf | Estimate weights for a fitting problem | 
| ml_fit_ipu | Estimate weights for a fitting problem | 
| ml_problem | Create an instance of a fitting problem | 
| ml_replicate | Replicate records in a reference sample based on its fitted weights | 
| print.ml_fit | Estimate weights for a fitting problem | 
| print.ml_problem | Create an instance of a fitting problem | 
| special_field_names | Create an instance of a fitting problem | 
| toy_example | Access to toy examples bundled in this package |