summary method for class segmented
.
# S3 method for segmented
summary(object, short = FALSE, var.diff = FALSE, p.df="p", .vcov=NULL, ...)# S3 method for summary.segmented
print(x, short=x$short, var.diff=x$var.diff,
digits = max(3, getOption("digits") - 3),
signif.stars = getOption("show.signif.stars"),...)
A list (similar to one returned by segmented.lm
or segmented.glm
) with additional components:
estimated break-points and relevant (approximate) standard errors
estimates and standard errors of the model parameters. This is similar
to the matrix coefficients
returned by summary.lm
or summary.glm
,
but without the rows corresponding to the breakpoints. Even the p-values relevant to the
difference-in-slope parameters have been replaced by NA, since they are meaningless in
this case, see davies.test
.
estimated coefficients, standard errors and t-values for the `gap' variables
if var.diff=TRUE
, the covaraince matrix accounting for heteroscedastic errors.
if var.diff=TRUE
, the square root of the estimated error variances in each interval.
if var.diff=TRUE
, the residual degrees of freedom in each interval.
Object of class "segmented".
logical indicating if the `short' summary should be printed.
logical indicating if different error variances should be computed
in each interval of the segmented variable, see Details. If .vcov
is provided, var.diff
is set to FALSE
.
A character as a function of 'p'
(number of parameters) and 'K'
(number of groups or segments) affecting computations of the group-specific
variance (and the standard errors) if var.diff=TRUE
, see Details.
Optional. The full covariance matrix for the parameter estimates. If provided, standard errors are computed (and displayed) according to this matrix.
a summary.segmented
object produced by summary.segmented()
.
controls number of digits printed in output.
logical, should stars be printed on summary tables of coefficients?
further arguments.
Vito M.R. Muggeo
If short=TRUE
only coefficients of the segmented relationships are printed.
If var.diff=TRUE
and there is only one segmented variable, different error variances are
computed in the intervals defined by the estimated breakpoints of the segmented variable.
For the jth interval with \(n_j\) observations, the error variance is estimated via \(RSS_j/(n_j-p)\),
where \(RSS_j\) is the residual sum of squares in interval j, and \(p\) is the number of model parameters. This number to be subtracted from \(n_j\) can be changed via argument p.df
. For instance p.df="0"
uses \(RSS_j/(n_j)\), and p.df="p/K"
leads to \(RSS_j/(n_j-p/K)\), where \(K\) is the number of groups (segments), and \(p/K\) can be interpreted as the average number of model parameter in that group.
Note var.diff=TRUE
only affects the estimates covariance matrix. It does not affect the parameter estimates, neither the log likelihood and relevant measures, such as AIC or BIC. In other words, var.diff=TRUE
just provides 'alternative' standard errors, probably appropriate when the error variances are different before/after the estimated breakpoints. Also \(p-values\) are computed using the t-distribution with 'naive' degrees of freedom (as reported in object$df.residual
).
If var.diff=TRUE
the variance-covariance matrix of the estimates is computed via the
sandwich formula,
$$(X^TX)^{-1}X^TVX(X^TX)^{-1}$$
where V is the diagonal matrix including the different group-specific error variance estimates. Standard errors are the square root of the main diagonal of this matrix.
print.segmented
, davies.test
##continues example from segmented()
# summary(segmented.model,short=TRUE)
## an heteroscedastic example..
# set.seed(123)
# n<-100
# x<-1:n/n
# y<- -x+1.5*pmax(x-.5,0)+rnorm(n,0,1)*ifelse(x<=.5,.4,.1)
# o<-lm(y~x)
# oseg<-segmented(o,seg.Z=~x,psi=.6)
# summary(oseg,var.diff=TRUE)$sigma.new
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