This is a service routine for gamm
. Extracts
the estimated covariance matrix of the data from an lme
object, allowing the
user control about which levels of random effects to include in this
calculation. extract.lme.cov
forms the full matrix explicitly:
extract.lme.cov2
tries to be more economical than this.
extract.lme.cov(b,data=NULL,start.level=1)
extract.lme.cov2(b,data=NULL,start.level=1)
A fitted model object returned by a call to lme
The data frame/ model frame that was supplied to
lme
, but with any rows removed by the na action dropped. Uses
the data stored in the model object if not supplied.
The level of nesting at which to start including random effects in the calculation. This is used to allow smooth terms to be estimated as random effects, but treated like fixed effects for variance calculations.
For extract.lme.cov
an estimated covariance matrix.
For extract.lme.cov2
a list containing the estimated covariance matrix
and an indexing array. The covariance matrix is stored as the elements on the
leading diagonal, a list of the matrices defining a block diagonal matrix, or
a full matrix if the previous two options are not possible.
The random effects, correlation structure and variance structure used for a linear mixed model combine to imply a covariance matrix for the response data being modelled. These routines extracts that covariance matrix. The process is slightly complicated, because different components of the fitted model object are stored in different orders (see function code for details!).
The extract.lme.cov
calculation is not optimally efficient, since it forms the full matrix,
which may in fact be sparse. extract.lme.cov2
is more efficient. If the
covariance matrix is diagonal, then only the leading diagonal is returned; if
it can be written as a block diagonal matrix (under some permutation of the
original data) then a list of matrices defining the non-zero blocks is
returned along with an index indicating which row of the original data each
row/column of the block diagonal matrix relates to. The block sizes are defined by
the coarsest level of grouping in the random effect structure.
gamm
uses extract.lme.cov2
.
extract.lme.cov
does not currently deal with the situation in which the
grouping factors for a correlation structure are finer than those for the
random effects. extract.lme.cov2
does deal with this situation.
For lme
see:
Pinheiro J.C. and Bates, D.M. (2000) Mixed effects Models in S and S-PLUS. Springer
For details of how GAMMs are set up here for estimation using lme
see:
Wood, S.N. (2006) Low rank scale invariant tensor product smooths for Generalized Additive Mixed Models. Biometrics 62(4):1025-1036
or
Wood S.N. (2017) Generalized Additive Models: An Introduction with R (2nd edition). Chapman and Hall/CRC Press.
# NOT RUN {
## see also ?formXtViX for use of extract.lme.cov2
require(mgcv)
library(nlme)
data(Rail)
b <- lme(travel~1,Rail,~1|Rail)
extract.lme.cov(b)
extract.lme.cov2(b)
# }
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