| apply_wrapper | Reduce predicted functions to scalars via a user-supplied wrapper |
| build_grid | Build a shared evaluation grid from a reference dataset |
| coef.metahunt_weight_model | Extract coefficients from a MetaHunt weight model |
| conformal_from_fit | Split conformal intervals from a pre-fit MetaHunt pipeline |
| coverage | Empirical coverage of a conformal prediction-interval object |
| cross_conformal | Cross-conformal prediction intervals (pooled K-fold scores) |
| cv_error_curve | Cross-validated prediction-error curve for basis-rank selection |
| dfspa | Denoised functional Successive Projection Algorithm (d-fSPA) |
| fit_weight_model | Fit a weight model mapping study-level covariates to simplex weights |
| f_hat_from_models | Build the 'F_hat' matrix from a list of fitted study-level models |
| metahunt | Fit the full MetaHunt pipeline |
| minmax_regret | Minimax-regret aggregator for multisite function-valued estimands |
| plot.metahunt | Plot recovered basis functions from a MetaHunt fit |
| plot.metahunt_conformal | Plot a conformal prediction-interval object |
| predict.metahunt | Predict target functions (or scalar summaries) from a MetaHunt fit |
| predict.metahunt_weight_model | Predict simplex weights for new study-level covariates |
| predict_target | Predict the target function for new study-level covariates |
| print.metahunt_denoising_search | Print method for d-fSPA denoising parameter search results |
| print.summary.metahunt | Print a 'summary.metahunt' object |
| project_to_simplex | Project study-level functions onto the simplex spanned by basis functions |
| reconstruction_error_curve | Reconstruction-error curve for basis-rank selection |
| select_denoising_params | Choose d-fSPA denoising parameters by cross-validation |
| split_conformal | Split conformal prediction intervals for target-function predictions |
| summary.metahunt | Summarise a MetaHunt fit |
| summary.metahunt_conformal | Summarise a conformal prediction-interval object |