| %**% | Efficient Matrix Multiplication Operator |
| coef.lgspline | Extract model coefficients |
| create_onehot | Create One-Hot Encoded Matrix |
| Details | Lagrangian Multiplier Smoothing Splines: Mathematical Details |
| find_extremum | Find Extremum of Fitted Lagrangian Multiplier Smoothing Spline |
| generate_posterior | Generate Posterior Samples from Fitted Lagrangian Multiplier Smoothing Spline |
| leave_one_out | Compute Leave-One-Out Cross-Validated predictions for Gaussian Response/Identity Link under Constraint. |
| lgspline | Fit Lagrangian Multiplier Smoothing Splines |
| loglik_weibull | Compute Log-Likelihood for Weibull Accelerated Failure Time Model |
| matinvsqrt | Calculate Matrix Inverse Square Root |
| matsqrt | Calculate Matrix Square Root |
| plot.lgspline | Plot Method for Lagrangian Multiplier Smoothing Spline Models |
| predict.lgspline | Predict Method for Fitted Lagrangian Multiplier Smoothing Spline |
| print.lgspline | Print Method for lgspline Objects |
| print.summary.lgspline | Print Method for lgspline Object Summaries |
| prior_loglik | Log-Prior Distribution Evaluation for lgspline Models |
| summary.lgspline | Summary method for lgspline Objects |
| wald_univariate | Univariate Wald Tests and Confidence Intervals for Lagrangian Multiplier Smoothing Splines |
| weibull_dispersion_function | Estimate Weibull Dispersion for Accelerated Failure Time Model |
| weibull_family | Weibull Family for Survival Model Specification |
| weibull_glm_weight_function | Weibull GLM Weight Function for Constructing Information Matrix |
| weibull_qp_score_function | Compute gradient of log-likelihood of Weibull accelerated failure model without penalization |
| weibull_scale | Estimate Scale for Weibull Accelerated Failure Time Model |
| weibull_shur_correction | Correction for the Variance-Covariance Matrix for Uncertainty in Scale |