cSFM-package |
Covariate-adjusted Skewed Functional Model |
beta2cp |
Transformation between Parameters and B-spline Coefficients |
case2.b.initial |
Initial Estimates of Parameter Functions |
case2.gr |
Negative loglikelihood function and the Gradient |
case2.unmll.optim |
Negative loglikelihood function and the Gradient |
cp2beta |
Transformation between Parameters and B-spline Coefficients |
cSFM |
Covariate-adjusted Skewed Functional Model |
cSFM.est |
Model Estimation with Bivariate Regression B-Splines |
cSFM.est.parallel |
Knots Selection by AIC |
D.gamma |
Reparameterize Skewed Normal Parameterized using Shape and Skewness. |
D.lg |
Standard Skewed Normal Parameterized using Skewness. |
D.SN |
Derivatives of Normalized Skewed Normal Parameterized by Shape |
data.generator.y.F |
Generate Data using Skewed Pointwise Distributions and Gaussian copulas |
data.simulation |
Data with Skewed Marginal Distributions and Gaussian Copula (Simulated) |
DFT.basis |
Discrete Fourier Transformation (DFT) Basis System |
DST |
Data with Skewed Marginal Distributions and Gaussian Copula (Simulated) |
DSV |
Data with Skewed Marginal Distributions and Gaussian Copula (Simulated) |
fitted.cSFM |
Generic Method for 'cSFM' Objects |
g |
Standard Skewed Normal Parameterized using Skewness. |
kpbb |
Kronecker Product Bspline Basis |
legendre.polynomials |
Orthogonal Legendre Polynomials Basis System |
predict.cSFM |
Generic Method for 'cSFM' Objects |
predict.kpbb |
Evaluate a predefined Kronecker product B-spline basis at provided values |
print.cSFM |
Generic Method for 'cSFM' Objects |
shape.dp |
Reparameterize Skewed Normal Parameterized using Shape and Skewness. |
skewness.cp |
Reparameterize Skewed Normal Parameterized using Shape and Skewness. |
uni.fpca |
Functional Principle Component Analysis with Corpula |