| fbps |
Sandwich smoother for matrix data |
| ff |
Construct a function-on-function regression term |
| ffpc |
Construct a PC-based function-on-function regression term |
| ffpcplot |
Plot PC-based function-on-function regression terms |
| fgam |
Functional Generalized Additive Models |
| fitted.pffr |
Obtain residuals and fitted values for a pffr models |
| fosr |
Function-on-scalar regression |
| fosr.perm |
Permutation testing for function-on-scalar regression |
| fosr.perm.fit |
Permutation testing for function-on-scalar regression |
| fosr.perm.test |
Permutation testing for function-on-scalar regression |
| fosr.vs |
Function-on Scalar Regression with variable selection |
| fosr2s |
Two-step function-on-scalar regression |
| fpc |
Construct a FPC regression term |
| fpca.face |
Functional principal component analysis with fast covariance estimation |
| fpca.lfda |
Longitudinal Functional Data Analysis using FPCA |
| fpca.sc |
Functional principal components analysis by smoothed covariance |
| fpca.ssvd |
Smoothed FPCA via iterative penalized rank one SVDs. |
| fpca2s |
Functional principal component analysis by a two-stage method |
| fpcr |
Functional principal component regression |
| f_sum |
Sum computation 1 |
| f_sum2 |
Sum computation 2 |
| f_sum4 |
Sum computation 2 |
| f_trace |
Trace computation |
| pco |
Principal coordinate ridge regression |
| pco_predict_preprocess |
Make predictions using pco basis terms |
| pcre |
pffr-constructor for functional principal component-based functional random intercepts. |
| peer |
Construct a PEER regression term in a 'pfr' formula |
| PEER.Sim |
Simulated longitudinal data with functional predictor and scalar response, and structural information associated with predictor function |
| peer_old |
Functional Models with Structured Penalties |
| pffr |
Penalized flexible functional regression |
| pffr.check |
Some diagnostics for a fitted pffr model |
| pffrGLS |
Penalized function-on-function regression with non-i.i.d. residuals |
| pffrSim |
Simulate example data for pffr |
| pfr |
Penalized Functional Regression |
| pfr_old |
Penalized Functional Regression (old version) |
| plot.fosr |
Default plotting of function-on-scalar regression objects |
| plot.fosr.perm |
Permutation testing for function-on-scalar regression |
| plot.fosr.vs |
Plot for Function-on Scalar Regression with variable selection |
| plot.fpcr |
Default plotting for functional principal component regression output |
| plot.lpeer |
Plotting of estimated regression functions obtained through 'lpeer()' |
| plot.peer |
Plotting of estimated regression functions obtained through 'peer()' |
| plot.pffr |
Plot a pffr fit |
| plot.pfr |
Plot a pfr object |
| poridge |
Principal coordinate ridge regression |
| predict.fbps |
Prediction for fast bivariate _P_-spline (fbps) |
| predict.fgam |
Prediction from a fitted FGAM model |
| predict.fosr |
Prediction from a fitted bayes_fosr model |
| predict.fosr.vs |
Prediction for Function-on Scalar Regression with variable selection |
| Predict.matrix.dt.smooth |
Predict.matrix method for dt basis |
| Predict.matrix.fpc.smooth |
mgcv-style constructor for prediction of FPC terms |
| Predict.matrix.pco.smooth |
Principal coordinate ridge regression |
| Predict.matrix.pcre.random.effect |
mgcv-style constructor for prediction of PC-basis functional random effects |
| Predict.matrix.peer.smooth |
mgcv-style constructor for prediction of PEER terms |
| Predict.matrix.pi.smooth |
Predict.matrix method for pi basis |
| predict.pffr |
Prediction for penalized function-on-function regression |
| predict.pfr |
Prediction from a fitted pfr model |
| print.summary.pffr |
Print method for summary of a pffr fit |
| pwcv |
Pointwise cross-validation for function-on-scalar regression |