lmer
) across multiple grouping
variables.Linear mixed-effects model (lmer
) across multiple grouping
variables.
grouped_lmer(
data,
grouping.vars,
...,
output = "tidy",
tidy.args = list(conf.int = TRUE, conf.level = 0.95, effects = "fixed", conf.method =
"Wald"),
augment.args = list()
)
Dataframe (or tibble) from which variables are to be taken.
Grouping variables.
Arguments passed on to lme4::lmer
formula
a two-sided linear formula object describing both the
fixed-effects and random-effects part of the model, with the
response on the left of a ~
operator and the terms, separated
by +
operators, on the right. Random-effects terms are
distinguished by vertical bars (|
) separating expressions
for design matrices from grouping factors. Two vertical bars
(||
) can be used to specify multiple uncorrelated random
effects for the same grouping variable.
(Because of the way it is implemented, the ||
-syntax works
only for design matrices containing numeric (continuous) predictors;
to fit models with independent categorical effects, see dummy
or the lmer_alt
function from the afex package.)
REML
logical scalar - Should the estimates be chosen to optimize the REML criterion (as opposed to the log-likelihood)?
control
a list (of correct class, resulting from
lmerControl()
or glmerControl()
respectively) containing control parameters, including the nonlinear
optimizer to be used and parameters to be passed through to the
nonlinear optimizer, see the *lmerControl
documentation for
details.
start
a named list
of starting values for the
parameters in the model. For lmer
this can be a numeric
vector or a list with one component named "theta"
.
verbose
integer scalar. If > 0
verbose output is
generated during the optimization of the parameter estimates. If
> 1
verbose output is generated during the individual
penalized iteratively reweighted least squares (PIRLS) steps.
subset
an optional expression indicating the subset of the rows
of data
that should be used in the fit. This can be a logical
vector, or a numeric vector indicating which observation numbers are
to be included, or a character vector of the row names to be
included. All observations are included by default.
weights
an optional vector of ‘prior weights’ to be used
in the fitting process. Should be NULL
or a numeric vector.
Prior weights
are not normalized or standardized in
any way. In particular, the diagonal of the residual covariance
matrix is the squared residual standard deviation parameter
sigma
times the vector of inverse weights
.
Therefore, if the weights
have relatively large magnitudes,
then in order to compensate, the sigma
parameter will
also need to have a relatively large magnitude.
na.action
a function that indicates what should happen when the
data contain NA
s. The default action (na.omit
,
inherited from the 'factory fresh' value of
getOption("na.action")
) strips any observations with any
missing values in any variables.
offset
this can be used to specify an a priori known
component to be included in the linear predictor during
fitting. This should be NULL
or a numeric vector of length
equal to the number of cases. One or more offset
terms can be included in the formula instead or as well, and if more
than one is specified their sum is used. See
model.offset
.
contrasts
an optional list. See the contrasts.arg
of
model.matrix.default
.
devFunOnly
logical - return only the deviance evaluation function. Note that because the deviance function operates on variables stored in its environment, it may not return exactly the same values on subsequent calls (but the results should always be within machine tolerance).
A character describing what output is expected. Two possible
options: "tidy"
(default), which will return the results, or "glance"
,
which will return model summaries.
A list of arguments to be used in the relevant S3
method.
A list of arguments to be used in the relevant S3
method.
A tibble dataframe with tidy results from a linear mixed-effects
model. Note that p-value is computed using parameters::p_value
.
# NOT RUN {
# for reproducibility
set.seed(123)
# loading libraries containing data
library(ggplot2)
library(gapminder)
# getting tidy output of results
# let's use only subset of the data
groupedstats::grouped_lmer(
data = gapminder,
formula = scale(lifeExp) ~ scale(gdpPercap) + (gdpPercap | continent),
grouping.vars = year,
REML = FALSE,
tidy.args = list(effects = "fixed", conf.int = TRUE, conf.level = 0.95),
output = "tidy"
)
# }
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