fdapace-package |
PACE: Principal Analysis by Conditional Expectation |
BwNN |
Minimum bandwidth based on kNN criterion. |
CheckData |
Check data format |
CheckOptions |
Check option format |
ConvertSupport |
Convert support of a mu/phi/cov etc. to and from obsGrid and workGrid |
CreateBasis |
Create an orthogonal basis of K functions in [0, 1], with nGrid points. |
CreateBWPlot |
Functional Principal Component Analysis Bandwidth Diagnostics plot |
CreateCovPlot |
Create the covariance surface plot based on the results from FPCA() or FPCder(). |
CreateDesignPlot |
Create the design plot of the functional data. |
CreateDiagnosticsPlot |
Functional Principal Component Analysis Diagnostics plot |
CreateFuncBoxPlot |
Create functional boxplot using 'bagplot', 'KDE' or 'pointwise' methodology |
CreateModeOfVarPlot |
Functional Principal Component Analysis mode of variation plot |
CreateOutliersPlot |
Functional Principal Component or Functional Singular Value Decomposition Scores Plot using 'bagplot' or 'KDE' methodology |
CreatePathPlot |
Create the fitted sample path plot based on the results from FPCA(). |
CreateScreePlot |
Create the scree plot for the fitted eigenvalues |
CreateStringingPlot |
Create plots for observed and stringed high dimensional data |
cumtrapzRcpp |
Cumulative Trapezoid Rule Numerical Integration |
FAM |
Functional Additive Models |
FCCor |
Calculate functional correlation between two simultaneously observed processes. |
FClust |
Functional clustering and identifying substructures of longitudinal data |
FCReg |
Functional Concurrent Regression by 2D smoothing method. |
fdapace |
PACE: Principal Analysis by Conditional Expectation |
fitted.FPCA |
Fitted functional sample from FPCA object |
fitted.FPCAder |
Fitted functional sample from FPCAder object |
FOptDes |
Optimal Designs for Functional and Longitudinal Data for Trajectory Recovery or Scalar Response Prediction |
FPCA |
Functional Principal Component Analysis |
FPCAder |
Take derivative of an FPCA object |
FPCReg |
Function for performing functonal linear regression where the covariates are functions X1(t1),X2(t2),.. and the response is a function Y(t_y). |
FSVD |
Functional Singular Value Decomposition |
FVPA |
Functional Variance Process Analysis for dense functional data |
GetCrCorYX |
Make cross-correlation matrix from auto- and cross-covariance matrix |
GetCrCorYZ |
Make cross-correlation matrix from auto- and cross-covariance matrix |
GetCrCovYX |
Functional Cross Covariance between longitudinal variable Y and longitudinal variable X |
GetCrCovYZ |
Functional Cross Covariance between longitudinal variable Y and scalar variable Z |
GetNormalisedSample |
Normalise sparse functional sample |
GetNormalizedSample |
Normalise sparse functional sample |
kCFC |
Functional clustering and identifying substructures of longitudinal data using kCFC. |
Lwls1D |
One dimensional local linear kernel smoother |
Lwls2D |
Two dimensional local linear kernel smoother. |
Lwls2DDeriv |
Two dimensional local linear kernel smoother with derivatives. |
MakeBWtoZscore02y |
Z-score body-weight for age 0 to 24 months based on WHO standards |
MakeFPCAInputs |
Format FPCA input |
MakeGPFunctionalData |
Make Gaussian Process Dense Functional Data sample |
MakeHCtoZscore02y |
Z-score head-circumference for age 0 to 24 months based on WHO standards |
MakeLNtoZscore02y |
Z-score height for age 0 to 24 months based on WHO standards |
MakeSparseGP |
Make Gaussian Process Sparse Functional Data sample |
medfly25 |
Number of eggs laid daily from medflies |
MultiFAM |
Functional Additive Models with Multiple Predictor Processes |
NormCurvToArea |
Normalise a curve to a particular area. |
plot.FPCA |
Functional Principal Component Analysis Diagnostics plot |
predict.FPCA |
Predict FPC scores for a new sample given an FPCA object |
print.FPCA |
Print an FPCA object |
print.FSVD |
Print an FSVD object |
print.WFDA |
Print a WFDA object |
SBFitting |
Iterative Smooth Backfitting Algorithm |
SelectK |
Selects number of functional principal components for given FPCA output and selection criteria |
SetOptions |
Set the PCA option list |
Sparsify |
Sparsify densely observed functional data |
str.FPCA |
Compactly display the structure of an FPCA object |
Stringing |
Stringing for High-Dimensional data |
trapzRcpp |
Trapezoid Rule Numerical Integration |
WFDA |
Warped Functional DAta Analysis |
Wiener |
Simulate standard Wiener processes (Brownian motions) |