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spaMM (version 2.4.35)

summary.HLfit: Summary and print methods for fit and test results.

Description

Summary and print methods for results from HLfit or related functions.

Usage

# S3 method for HLfit
summary(object, details=FALSE, max.print=100L, ...)
# S3 method for HLfitlist
summary(object, ...)
# S3 method for fixedLRT
summary(object, verbose=TRUE, ...)
# S3 method for HLfit
print(x,...)
# S3 method for HLfitlist
print(x,...)
# S3 method for fixedLRT
print(x,...)

Arguments

object

The return object of HLfit or related functions.

x

The return object of HLfit or related functions.

verbose

for summary.fixedLRT, whether to print the model fits or not.

max.print

Controls options("max.print") locally.

details

whether to print some obscure details. Currently affects only random-coefficients models (see Details).

further arguments passed to or from other methods.

Value

These methods return the object invisibly. They print details of the (lower level) HLfit results in a convenient form.

Details

The random effect terms of the linear predictor are of the form ZLv. In particular, for random-coefficients models (i.e., including random-effect terms such as (z|group) specifying a random-slope component), correlated random effects are represented as b = Lv for some matrix L, and where the elements of v are uncorrelated. In the output of the fit, the Var. column gives the variances of the correlated effects, b=Lv. The Corr. column(s) give their correlation(s). If details is TRUE, estimates and SEs of the (log) variances of the elements of v are reported as for other random effects in the Estimate and cond.SE. columns of the table of lambda coefficients. However, this non-default output is potentially misleading as the elements of v cannot generally be assigned to specific terms (such as intercept and slope) of the random-effect formula, and the representation of b as Lv is not unique.

Examples

Run this code
# NOT RUN {
## see examples of corrHLfit usage
# }

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