pdMat class pdIdent
from library nlme. The modification is to replace the log parameterization used in pdMat
with a notLog parameterization, since the latter is much less susceptible to overflow
and underflow of the parameters on the original scale. The functions are particularly useful for
working with Generalized Additive Mixed Models where variance parameters/smoothing parameters can
be very large or very small, so that overflow or underflow can be a problem.pdIdnot(value = numeric(0), form = NULL,
nam = NULL, data = sys.frame(sys.parent()))pdIdnot object, or related quantities. See the nlme documentation for further details.pdTenspdFactor and pdMatrix functions return the inverse of the scaled random
effect covariance matrix or its factor, the pdConstruct function is initialised with estimates of the
scaled covariance matrix itself.The nlme source code.
te, pdTens, notLog, gamm