The summary
function is applied to each nls
component of
object
to produce summary information on the individual fits,
which is organized into a list of summary statistics. The returned
object is suitable for printing with the print.summary.nlsList
method.
# S3 method for nlsList
summary(object, …)
an object inheriting from class "nlsList"
,
representing a list of nls
fitted objects.
optional arguments to the summary.lmList
method.
One such optional argument is pool
, a logical value indicating
whether a pooled estimate of the residual standard error should be
used. Default is attr(object, "pool")
.
a list with summary statistics obtained by applying summary
to the elements of object
, inheriting from class
summary.nlsList
. The components of value
are:
a list containing an image of the nlsList
call that
produced object
.
a three dimensional array with summary information
on the nls
coefficients. The first dimension corresponds to
the names of the object
components, the second dimension is
given by "Value"
, "Std. Error"
, "t value"
,
and "Pr(>|t|)"
, corresponding, respectively, to the
coefficient estimates and their associated standard errors,
t-values, and p-values. The third dimension is given by the
coefficients names.
a three dimensional array with the
correlations between the individual nls
coefficient
estimates. The first dimension corresponds to the names of the
object
components. The third dimension is given by the
coefficients names. For each coefficient, the rows of the associated
array give the correlations between that coefficient and the
remaining coefficients, by nls
component.
a three dimensional array with the unscaled
variances/covariances for the individual lm
coefficient
estimates (giving the estimated variance/covariance for the
coefficients, when multiplied by the estimated residual errors). The
first dimension corresponds to the names of the object
components. The third dimension is given by the
coefficients names. For each coefficient, the rows of the associated
array give the unscaled covariances between that coefficient and the
remaining coefficients, by nls
component.
an array with the number of degrees of freedom for the model
and for residuals, for each nls
component.
the total number of degrees of freedom for
residuals, corresponding to the sum of residuals df of all nls
components.
the value of the pool
argument to the function.
the pooled estimate of the residual standard error.
a vector with the residual standard error estimates for
the individual lm
fits.
# NOT RUN {
fm1 <- nlsList(SSasymp, Loblolly)
summary(fm1)
# }
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