| coef.pffr | R Documentation |
Returns estimated coefficient functions/surfaces \beta(t), \beta(s,t)
and estimated smooth effects f(z), f(x,z) or f(x, z, t) and their point-wise estimated standard errors.
Not implemented for smooths in more than 3 dimensions.
## S3 method for class 'pffr'
coef(
object,
raw = FALSE,
se = TRUE,
freq = FALSE,
sandwich = FALSE,
seWithMean = TRUE,
n1 = 100,
n2 = 40,
n3 = 20,
Ktt = NULL,
...
)
object |
a fitted |
raw |
logical, defaults to FALSE. If TRUE, the function simply returns |
se |
logical, defaults to TRUE. Return estimated standard error of the estimates? |
freq |
logical, defaults to FALSE. If FALSE, use posterior variance |
sandwich |
logical, defaults to FALSE. Use a Sandwich-estimator for approximate variances? See Details. THIS IS AN EXPERIMENTAL FEATURE, USE A YOUR OWN RISK. |
seWithMean |
logical, defaults to TRUE. Include uncertainty about the intercept/overall mean in standard errors returned for smooth components? |
n1 |
see below |
n2 |
see below |
n3 |
|
Ktt |
(optional) an estimate of the covariance operator of the residual process |
... |
other arguments, not used. |
The seWithMean-option corresponds to the "iterms"-option in predict.gam.
The sandwich-options works as follows: Assuming that the residual vectors \epsilon_i(t), i=1,\dots,n are i.i.d.
realizations of a mean zero Gaussian process with covariance K(t,t'), we can construct an estimator for
K(t,t') from the n replicates of the observed residual vectors. The covariance matrix of the stacked observations
vec(Y_i(t)) is then given by a block-diagonal matrix with n copies of the estimated K(t,t') on the diagonal.
This block-diagonal matrix is used to construct the "meat" of a sandwich covariance estimator, similar to Chen et al. (2012),
see reference below.
If raw==FALSE, a list containing
pterms a matrix containing the parametric / non-functional coefficients (and, optionally, their se's)
smterms a named list with one entry for each smooth term in the model. Each entry contains
coef a matrix giving the grid values over the covariates, the estimated effect (and, optionally, the se's).
The first covariate varies the fastest.
x, y, z the unique gridpoints used to evaluate the smooth/coefficient function/coefficient surface
xlim, ylim, zlim the extent of the x/y/z-axes
xlab, ylab, zlab the names of the covariates for the x/y/z-axes
dim the dimensionality of the effect
main the label of the smooth term (a short label, same as the one used in summary.pffr)
Fabian Scheipl
Chen, H., Wang, Y., Paik, M.C., and Choi, A. (2013). A marginal approach to reduced-rank penalized spline smoothing with application to multilevel functional data. Journal of the American Statistical Association, 101, 1216–1229.
plot.gam, predict.gam which this routine is
based on.
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.