broom (version 0.5.0)

emmeans_tidiers: Tidy estimated marginal means (least-squares means) objects from the emmeans and lsmeans packages

Description

Tidiers for estimated marginal means objects, which report the predicted means for factors or factor combinations in a linear model. This covers three classes: emmGrid, lsmobj, and ref.grid. (The first class is from the emmeans package, and is the successor to the latter two classes, which have slightly different purposes within the lsmeans package but have similar output).

Usage

# S3 method for lsmobj
tidy(x, conf.level = 0.95, ...)

# S3 method for ref.grid tidy(x, ...)

# S3 method for emmGrid tidy(x, ...)

Arguments

x

"emmGrid", lsmobj", or "ref.grid" object

conf.level

Level of confidence interval, used only for emmGrid and lsmobj objects

...

Additional arguments passed to emmeans::summary.emmGrid() or lsmeans::summary.ref.grid(). Cautionary note: mispecified arguments may be silently ignored!

Value

A data frame with one observation for each estimated mean, and one column for each combination of factors, along with the following variables:

estimate

Estimated least-squares mean

std.error

Standard error of estimate

df

Degrees of freedom

conf.low

Lower bound of confidence interval

conf.high

Upper bound of confidence interval

When the input is a contrast, each row will contain one estimated contrast, along with some of the following columns:

level1

One level of the factor being contrasted

level2

Second level

contrast

In cases where the contrast is not made up of two levels, describes each

statistic

T-ratio statistic

p.value

P-value

Details

There are a large number of arguments that can be passed on to emmeans::summary.emmGrid() or lsmeans::summary.ref.grid(). By broom convention, we use conf.level to pass the level argument.

Examples

Run this code
# NOT RUN {
if (require("emmeans", quietly = TRUE)) {
  # linear model for sales of oranges per day
  oranges_lm1 <- lm(sales1 ~ price1 + price2 + day + store, data = oranges)

  # reference grid; see vignette("basics", package = "emmeans")
  oranges_rg1 <- ref_grid(oranges_lm1)
  td <- tidy(oranges_rg1)
  td

  # marginal averages
  marginal <- emmeans(oranges_rg1, "day")
  tidy(marginal)

  # contrasts
  tidy(contrast(marginal))
  tidy(contrast(marginal, method = "pairwise"))

  # plot confidence intervals
  library(ggplot2)
  ggplot(tidy(marginal), aes(day, estimate)) +
    geom_point() +
    geom_errorbar(aes(ymin = conf.low, ymax = conf.high))

  # by multiple prices
  by_price <- emmeans(oranges_lm1, "day", by = "price2",
                      at = list(price1 = 50, price2 = c(40, 60, 80),
                      day = c("2", "3", "4")) )
  by_price
  tidy(by_price)

  ggplot(tidy(by_price), aes(price2, estimate, color = day)) +
    geom_line() +
    geom_errorbar(aes(ymin = conf.low, ymax = conf.high))
}

# }

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