The ggfixest package provides dedicated ggplot2 plotting methods
for fixest objects. Specifically, it provides drop-in “gg”
equivalents of the latter’s
coefplot
and iplot
base plotting functions.
The goal of ggfixest is to produce nice looking coefficient plots and interaction plots—including event study plots—with minimal effort and scope for further customization.
The stable version of ggfixest is available on CRAN.
install.packages("ggfixest")
Or, you can grab the latest development version from R-universe.
install.packages("ggfixest", repos = "https://grantmcdermott.r-universe.dev")
The package website provides a
number of examples in the help documentation. (Also available by typing
?ggcoefplot
or ?ggiplot
in your R console.) But here are a few
quickstart examples to whet your appetite.
Start by loading the ggfixest package.
library(ggfixest)
#> Loading required package: ggplot2
#> Loading required package: fixest
Note that this automatically loads ggplot2 and fixest as required dependencies too. As the package name suggests, ggfixest only supports fixest model objects.1
Use ggcoefplot
to draw basic coefficient plots.
est = feols(
Petal.Length ~ Petal.Width + Sepal.Length + Sepal.Width + Species,
data = iris
)
# coefplot(est) ## base version
ggcoefplot(est) ## this package
The above plot call and output should look very familiar to regular
fixest users. Like its base equivalent, ggcoefplot
can be heavily
customized and contains various shortcuts for common operations. For
example, we can use regex to control the coefficient grouping logic.
ggcoefplot(est, group = list(Sepal = "^^Sepal.", Species = "^^Species"))
The ggiplot
function is a special case of ggocoefplot
that only
plots coefficients with factor levels or interactions (specifically,
those created with the
i
operator). This
is especially useful for producing event study plots in a
difference-in-differences (DiD) setup.
est_did = feols(y ~ x1 + i(period, treat, 5) | id+period, base_did)
# iplot(est_did) ## base version
ggiplot(est_did) ## this package
Again, the above plot call and output should look very familiar to
regular fixest users. But note that ggiplot
supports several
features that are not available in the base iplot
version. For
example, plotting multiple confidence intervals and aggregate treatments
effects.
ggiplot(
est_did,
ci_level = c(.8, .95),
aggr_eff = "post", aggr_eff.par = list(col = "orange")
)
And you can get quite fancy, combining lists of complex multiple estimation objects with custom themes, and so on.
base_stagg_grp = base_stagg
base_stagg_grp$grp = ifelse(base_stagg_grp$id %% 2 == 0, 'Evens', 'Odds')
est_twfe_grp = feols(
y ~ x1 + i(time_to_treatment, treated, ref = c(-1, -1000)) | id + year,
data = base_stagg_grp, split = ~grp
)
est_sa20_grp = feols(
y ~ x1 + sunab(year_treated, year) | id + year,
data = base_stagg_grp, split = ~grp
)
ggiplot(
list("TWFE" = est_twfe_grp, "Sun & Abraham (2020)" = est_sa20_grp),
ref.line = -1,
main = "Staggered treatment: Split mutli-sample",
xlab = "Time to treatment",
multi_style = "facet",
geom_style = "ribbon",
facet_args = list(labeller = labeller(id = \(x) gsub(".*: ", "", x))),
theme = theme_minimal() +
theme(
text = element_text(family = "HersheySans"),
plot.title = element_text(hjust = 0.5),
legend.position = "none"
)
)
For more ggiplot
examples and comparisons with its base counterpart,
see the detailed
vignette on
the package homepage (or, by typing vignette("ggiplot")
in your R
console).
Footnotes
-
For other model classes, a more generic visualization package/tool like see or modelsummary would be more appropriate. ↩