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emmeans (version 1.5.3)

ref_grid: Create a reference grid from a fitted model

Description

Using a fitted model object, determine a reference grid for which estimated marginal means are defined. The resulting ref_grid object encapsulates all the information needed to calculate EMMs and make inferences on them.

Usage

ref_grid(object, at, cov.reduce = mean,
  cov.keep = get_emm_option("cov.keep"), mult.names, mult.levs,
  options = get_emm_option("ref_grid"), data, df, type, transform, nesting,
  offset, sigma, ...)

Arguments

object

An object produced by a supported model-fitting function, such as lm. Many models are supported. See vignette("models", "emmeans").

at

Optional named list of levels for the corresponding variables

cov.reduce

A function, logical value, or formula; or a named list of these. Each covariate not specified in cov.keep or at is reduced according to these specifications. See the section below on “Using cov.reduce and cov.keep”.

cov.keep

Character vector: names of covariates that are not to be reduced; these are treated as factors and used in weighting calculations. cov.keep may also include integer value(s), and if so, the maximum of these is used to set a threshold such that any covariate having no more than that many unique values is automatically included in cov.keep.

mult.names

Character value: the name(s) to give to the pseudo-factor(s) whose levels delineate the elements of a multivariate response. If this is provided, it overrides the default name(s) used for class(object) when it has a multivariate response (e.g., the default is "rep.meas" for "mlm" objects).

mult.levs

A named list of levels for the dimensions of a multivariate response. If there is more than one element, the combinations of levels are used, in expand.grid order. The (total) number of levels must match the number of dimensions. If mult.name is specified, this argument is ignored.

options

If non-NULL, a named list of arguments to pass to update.emmGrid, just after the object is constructed.

data

A data.frame to use to obtain information about the predictors (e.g. factor levels). If missing, then recover_data is used to attempt to reconstruct the data. See the note with recover_data for an important precaution.

df

Numeric value. This is equivalent to specifying options(df = df). See update.emmGrid.

type

Character value. If provided, this is saved as the "predict.type" setting. See update.emmGrid and the section below on prediction types and transformations.

transform

Character, logical, or list. If non-missing, the reference grid is reconstructed via regrid with the given transform argument. See the section below on prediction types and transformations.

nesting

If the model has nested fixed effects, this may be specified here via a character vector or named list specifying the nesting structure. Specifying nesting overrides any nesting structure that is automatically detected. See the section below on Recovering or Overriding Model Information.

offset

Numeric scalar value (if a vector, only the first element is used). This may be used to add an offset, or override offsets based on the model. A common usage would be to specify offset = 0 for a Poisson regression model, so that predictions from the reference grid become rates relative to the offset that had been specified in the model.

sigma

Numeric value to use for subsequent predictions or back-transformation bias adjustments. If not specified, we use sigma(object), if available, and NULL otherwise.

...

Optional arguments passed to summary.emmGrid, emm_basis, and recover_data, such as params, vcov. (see Covariance matrix below), or options such as mode for specific model types (see vignette("models", "emmeans")).

Value

An object of the S4 class "emmGrid" (see emmGrid-class). These objects encapsulate everything needed to do calculations and inferences for estimated marginal means, and contain nothing that depends on the model-fitting procedure.

Using <code>cov.reduce</code> and <code>cov.keep</code>

The cov.keep argument was not available in emmeans versions 1.4.1 and earlier. Any covariates named in this list are treated as if they are factors: all the unique levels are kept in the reference grid. The user may also specify an integer value, in which case any covariate having no more than that number of unique values is implicitly included in cov.keep. The default for cove.keep is set and retrieved via the emm_options framework, and the system default is "2", meaning that covariates having only two unique values are automatically treated as two-level factors. See also the Note below on backward compatibility.

There is a subtle distinction between including a covariate in cov.keep and specifying its values manually in at: Covariates included in cov.keep are treated as factors for purposes of weighting, while specifying levels in at will not include the covariate in weighting. See the mtcars.lm example below for an illustration.

cov.reduce may be a function, logical value, formula, or a named list of these. If a single function, it is applied to each covariate. If logical and TRUE, mean is used. If logical and FALSE, it is equivalent to including all covariates in cov.keep. Use of cov.reduce = FALSE is inadvisable because it can result in a huge reference grid; it is far better to use cov.keep.

If a formula (which must be two-sided), then a model is fitted to that formula using lm; then in the reference grid, its response variable is set to the results of predict for that model, with the reference grid as newdata. (This is done after the reference grid is determined.) A formula is appropriate here when you think experimental conditions affect the covariate as well as the response.

If cov.reduce is a named list, then the above criteria are used to determine what to do with covariates named in the list. (However, formula elements do not need to be named, as those names are determined from the formulas' left-hand sides.) Any unresolved covariates are reduced using "mean".

Any cov.reduce of cov.keep specification for a covariate also named in at is ignored.

Interdependent covariates

Care must be taken when covariate values depend on one another. For example, when a polynomial model was fitted using predictors x, x2 (equal to x^2), and x3 (equal to x^3), the reference grid will by default set x2 and x3 to their means, which is inconsistent. The user should instead use the at argument to set these to the square and cube of mean(x). Better yet, fit the model using a formula involving poly(x, 3) or I(x^2) and I(x^3); then there is only x appearing as a covariate; it will be set to its mean, and the model matrix will have the correct corresponding quadratic and cubic terms.

Matrix covariates

Support for covariates that appear in the dataset as matrices is very limited. If the matrix has but one column, it is treated like an ordinary covariate. Otherwise, with more than one column, each column is reduced to a single reference value -- the result of applying cov.reduce to each column (averaged together if that produces more than one value); you may not specify values in at; and they are not treated as variables in the reference grid, except for purposes of obtaining predictions.

Recovering or overriding model information

Ability to support a particular class of object depends on the existence of recover_data and emm_basis methods -- see extending-emmeans for details. The call methods("recover_data") will help identify these.

Data. In certain models, (e.g., results of glmer.nb), it is not possible to identify the original dataset. In such cases, we can work around this by setting data equal to the dataset used in fitting the model, or a suitable subset. Only the complete cases in data are used, so it may be necessary to exclude some unused variables. Using data can also help save computing, especially when the dataset is large. In any case, data must represent all factor levels used in fitting the model. It cannot be used as an alternative to at. (Note: If there is a pattern of NAs that caused one or more factor levels to be excluded when fitting the model, then data should also exclude those levels.)

Covariance matrix. By default, the variance-covariance matrix for the fixed effects is obtained from object, usually via its vcov method. However, the user may override this via a vcov. argument, specifying a matrix or a function. If a matrix, it must be square and of the same dimension and parameter order of the fixed effects. If a function, must return a suitable matrix when it is called with object as its only argument.

Nested factors. Having a nesting structure affects marginal averaging in emmeans in that it is done separately for each level (or combination thereof) of the grouping factors. ref_grid tries to discern which factors are nested in other factors, but it is not always obvious, and if it misses some, the user must specify this structure via nesting; or later using update.emmGrid. The nesting argument may be a character vector, a named list, or NULL. If a list, each name should be the name of a single factor in the grid, and its entry a character vector of the name(s) of its grouping factor(s). nested may also be a character value of the form "factor1 %in% (factor2*factor3)" (the parentheses are optional). If there is more than one such specification, they may be appended separated by commas, or as separate elements of a character vector. For example, these specifications are equivalent: nesting = list(state = "country", city = c("state", "country"), nesting = "state %in% country, city %in% (state*country)", and nesting = c("state %in% country", "city %in% state*country").

Predictors with subscripts and data-set references

When the fitted model contains subscripts or explicit references to data sets, the reference grid may optionally be post-processed to simplify the variable names, depending on the simplify.names option (see emm_options), which by default is TRUE. For example, if the model formula is data1$resp ~ data1$trt + data2[[3]] + data2[["cov"]], the simplified predictor names (for use, e.g., in the specs for emmeans) will be trt, data2[[3]], and cov. Numerical subscripts are not simplified; nor are variables having simplified names that coincide, such as if data2$trt were also in the model.

Please note that this simplification is performed after the reference grid is constructed. Thus, non-simplified names must be used in the at argument (e.g., at = list(`data2["cov"]` = 2:4).

If you don't want names simplified, use emm_options(simplify.names = FALSE).

Prediction types and transformations

Transformations can exist because of a link function in a generalized linear model, or as a response transformation, or even both. In many cases, they are auto-detected, for example a model formula of the form sqrt(y) ~ .... Even transformations containing multiplicative or additive constants, such as 2*sqrt(y + pi) ~ ..., are auto-detected. A response transformation of y + 1 ~ ... is not auto-detected, but I(y + 1) ~ ... is interpreted as identity(y + 1) ~ .... A warning is issued if it gets too complicated. Complex transformations like the Box-Cox transformation are not auto-detected; but see the help page for make.tran for information on some advanced methods.

There is a subtle difference between specifying type = "response" and transform = "response". While the summary statistics for the grid itself are the same, subsequent use in emmeans will yield different results if there is a response transformation or link function. With type = "response", EMMs are computed by averaging together predictions on the linear-predictor scale and then back-transforming to the response scale; while with transform = "response", the predictions are already on the response scale so that the EMMs will be the arithmetic means of those response-scale predictions. To add further to the possibilities, geometric means of the response-scale predictions are obtainable via transform = "log", type = "response". See also the help page for regrid.

Side effect

The most recent result of ref_grid, whether called directly or indirectly via emmeans, emtrends, or some other function that calls one of these, is saved in the user's environment as .Last.ref_grid. This facilitates checking what reference grid was used, or reusing the same reference grid for further calculations. This automatic saving is enabled by default, but may be disabled via emm_options(save.ref_grid = FALSE), and re-enabled by specifying TRUE.

Details

To users, the ref_grid function itself is important because most of its arguments are in effect arguments of emmeans and related functions, in that those functions pass their ... arguments to ref_grid.

The reference grid consists of combinations of independent variables over which predictions are made. Estimated marginal means are defined as these predictions, or marginal averages thereof. The grid is determined by first reconstructing the data used in fitting the model (see recover_data), or by using the data.frame provided in data. The default reference grid is determined by the observed levels of any factors, the ordered unique values of character-valued predictors, and the results of cov.reduce for numeric predictors. These may be overridden using at. See also the section below on recovering/overriding model information.

See Also

Reference grids are of class emmGrid, and several methods exist for them -- for example summary.emmGrid. Reference grids are fundamental to emmeans. Supported models are detailed in vignette("models", "emmeans"). See update.emmGrid for details of arguments that can be in options (or in ...).

Examples

Run this code
# NOT RUN {
fiber.lm <- lm(strength ~ machine*diameter, data = fiber)
ref_grid(fiber.lm)
summary(.Last.ref_grid)

ref_grid(fiber.lm, at = list(diameter = c(15, 25)))

# }
# NOT RUN {
# We could substitute the sandwich estimator vcovHAC(fiber.lm)
# as follows:
summary(ref_grid(fiber.lm, vcov. = sandwich::vcovHAC))
# }
# NOT RUN {
# If we thought that the machines affect the diameters
# (admittedly not plausible in this example), then we should use:
ref_grid(fiber.lm, cov.reduce = diameter ~ machine)

### Model with indicator variables as predictors:
mtcars.lm <- lm(mpg ~ disp + wt + vs * am, data = mtcars)
(rg.default <- ref_grid(mtcars.lm))
(rg.nokeep <- ref_grid(mtcars.lm, cov.keep = character(0)))
(rg.at <- ref_grid(mtcars.lm, at = list(vs = 0:1, am = 0:1)))

# Two of these have the same grid but different weights:
rg.default@grid
rg.at@grid

# Multivariate example
MOats.lm = lm(yield ~ Block + Variety, data = MOats)
ref_grid(MOats.lm, mult.names = "nitro")
# Silly illustration of how to use 'mult.levs' to make comb's of two factors
ref_grid(MOats.lm, mult.levs = list(T=LETTERS[1:2], U=letters[1:2]))

# Using 'params'
require("splines")
my.knots = c(2.5, 3, 3.5)
mod = lm(Sepal.Length ~ Species * ns(Sepal.Width, knots = my.knots), data = iris)
## my.knots is not a predictor, so need to name it in 'params'
ref_grid(mod, params = "my.knots") 

# }

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