The hardware and bandwidth for this mirror is donated by METANET, the Webhosting and Full Service-Cloud Provider.
If you wish to report a bug, or if you are interested in having us mirror your free-software or open-source project, please feel free to contact us at mirror[@]metanet.ch.
The VDPO package provides, among other tools, methods for analyzing
variable domain functional data. This vignette demonstrates how to fit
variable domain functional regression models using the
vd_fit
function, which is designed to handle various types
of functional and non-functional covariates in a flexible framework.
We’ll start by generating sample data using the
data_generator_vd
function. This function creates simulated
data with variable domain functional covariates and additional
non-functional covariates if specified.
The vd_fit
function is the main tool for fitting
variable domain functional regression models. It supports various model
specifications through a formula interface.
Let’s start with a basic model using only the functional covariate:
If your data contains multiple functional covariates, you can include them in the model:
The vd_fit
function also supports including
non-functional covariates, both linear and smooth terms:
data <- data_generator_vd(beta_index = 1, use_x = TRUE, use_f = TRUE)
formula <- y ~ ffvd(X_se, nbasis = c(10, 10, 10)) + f(x2, nseg = 30, pord = 2, degree = 3) + x1
res_complex <- vd_fit(formula = formula, data = data)
In this model:
ffvd(X_se, nbasis = c(10, 10, 10))
specifies the
functional covariatef(x2, nseg = 30, pord = 2, degree = 3)
adds a smooth
effect for x2
x1
is included as a linear termYou can obtain a summary of the fitted model using the
summary
function:
summary(res_complex)
#>
#> Family: gaussian
#> Link function: identity
#>
#>
#> Formula:
#> NULL
#>
#>
#> Fixed terms:
#> x2
#> 1.4678062 0.9742174 -0.1430355 -3.5265899 5.2136636 -10.5801911
#>
#> 6.0838833
#>
#>
#> Estimated degrees of freedom:
#> Total edf Total <NA> <NA> <NA>
#> 4.9380 4.5461 0.0001 9.4842 16.4842
#>
#> R-sq.(adj) = 0.958 Deviance explained = 97.5% n = 100
#>
#> Number of iterations: 1
The vd_fit
function can handle both aligned and
non-aligned functional data. Here’s an example with non-aligned
data:
If you need to include an offset in your model, you can use the
offset
argument:
The vd_fit
function in the VDPO package provides a
flexible and powerful tool for fitting variable domain functional
regression models. It supports a wide range of model specifications,
including multiple functional covariates, non-functional covariates, and
various distribution families. By leveraging the formula interface,
users can easily specify complex models tailored to their specific
analysis needs.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.