Covariate-adjusted Skewed Functional Model (cSFM)


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Documentation for package ‘cSFM’ version 1.1

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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