nlsList.selfStart {nlme} | R Documentation |
The response variable and primary covariate in formula(data)
are used together with model
to construct the nonlinear model
formula. This is used in the nls
calls and, because a
selfStarting model function can calculate initial estimates for its
parameters from the data, no starting estimates need to be provided.
## S3 method for class 'selfStart' nlsList(model, data, start, control, level, subset, na.action = na.fail, pool = TRUE, warn.nls = NA)
model |
a |
data |
a data frame in which to interpret the variables in
|
start |
an optional named list with initial values for the
parameters to be estimated in |
control |
a list of control values passed as the |
level |
an optional integer specifying the level of grouping to be used when multiple nested levels of grouping are present. |
subset |
an optional expression indicating the subset of the rows of
|
na.action |
a function that indicates what should happen when the
data contain |
pool, warn.nls |
a list of nls
objects with as many components as the number of
groups defined by the grouping factor. A NULL
value is assigned
to the components corresponding to clusters for which the nls
algorithm failed to converge. Generic functions such as coef
,
fixed.effects
, lme
, pairs
, plot
,
predict
, random.effects
, summary
, and
update
have methods that can be applied to an nlsList
object.
selfStart
, groupedData
,
nls
, nlsList
,
nlme.nlsList
, nlsList.formula
fm1 <- nlsList(SSasympOff, CO2) summary(fm1)