ggcoefplot {ggfixest} | R Documentation |
Draw coefficient plots and interaction plots from fixest
regression
objects.
Description
Draws the ggplot2
equivalents of fixest::coefplot
and
fixest::iplot
. These "gg" versions do their best to recycle the same
arguments and plotting logic as their original base counterparts. But they
also support additional features via the ggplot2
API and infrastructure.
The overall goal remains the same as the original functions. To wit:
ggcoefplot
plots the results of estimations (coefficients and confidence
intervals). The function ggiplot
restricts the output to variables
created with i
, either interactions with factors or raw factors.
Usage
ggcoefplot(
object,
geom_style = c("pointrange", "errorbar"),
multi_style = c("dodge", "facet"),
facet_args = NULL,
theme = NULL,
...
)
ggiplot(
object,
geom_style = c("pointrange", "errorbar", "ribbon"),
multi_style = c("dodge", "facet"),
aggr_eff = NULL,
aggr_eff.par = list(col = "grey50", lwd = 1, lty = 1),
facet_args = NULL,
theme = NULL,
...
)
Arguments
object |
A model object of class |
geom_style |
Character string. One of |
multi_style |
Character string. One of |
facet_args |
A list of arguments passed down to |
theme |
ggplot2 theme. Defaults to |
... |
Arguments passed down to, or equivalent to, the corresponding
|
aggr_eff |
A keyword string or numeric sequence, indicating whether
mean treatment effects for some subset of the model should be displayed as
part of the plot. For example, the "post" keyword means that the mean
post-treatment effect will be plotted alongside the individual period
effects. Passed to |
aggr_eff.par |
List. Parameters of the aggregated treatment effect line,
if plotted. The default values are |
Details
These functions generally try to mimic the functionality and (where
appropriate) arguments of fixest::coefplot
and fixest::iplot
as
closely as possible. However, by leveraging the ggplot2 API and
infrastructure, they are able to support some more complex plot
arrangements out-of-the-box that would be more difficult to achieve using
the base coefplot
/iplot
alternatives.
Value
A ggplot2 object.
Functions
-
ggiplot()
: This function plots the results of estimations (coefficients and confidence intervals). The functionggiplot
restricts the output to variables created with i, either interactions with factors or raw factors.
See Also
fixest::coefplot()
, fixest::iplot()
.
Examples
library(ggfixest)
##
# Author note: The examples that follow deliberately follow the original
# examples from the coefplot/iplot help pages. A few "gg-" specific
# features are sprinkled within, with the final set of examples in
# particular highlighting unique features of this package.
#
# Example 1: Basic use and stacking two sets of results on the same graph
#
# Estimation on Iris data with one fixed-effect (Species)
est = feols(Petal.Length ~ Petal.Width + Sepal.Length + Sepal.Width | Species, iris)
ggcoefplot(est)
# Show multiple CIs
ggcoefplot(est, ci_level = c(0.8, 0.95))
# By default, fixest model standard errors are clustered by the first fixed
# effect (here: Species).
# But we can easily switch to "regular" standard-errors
est_std = summary(est, se = "iid")
# You can plot both results at once in the same plot frame...
ggcoefplot(list("Clustered" = est, "IID" = est_std))
# ... or as separate facets
ggcoefplot(list("Clustered" = est, "IID" = est_std), multi_style = "facet") +
theme(legend.position = "none")
#
# Example 2: Interactions
#
# Now we estimate and plot the "yearly" treatment effects
data(base_did)
base_inter = base_did
# We interact the variable 'period' with the variable 'treat'
est_did = feols(y ~ x1 + i(period, treat, 5) | id + period, base_inter)
# In the estimation, the variable treat is interacted
# with each value of period but 5, set as a reference
# ggcoefplot will show all the coefficients:
ggcoefplot(est_did)
# Note that the grouping of the coefficients is due to 'group = "auto"'
# If you want to keep only the coefficients
# created with i() (ie the interactions), use ggiplot
ggiplot(est_did)
# We can see that the graph is different from before:
# - only interactions are shown,
# - the reference is present,
# => this is fully flexible
ggiplot(est_did, ci_level = c(0.8, 0.95))
ggiplot(est_did, ref.line = FALSE, pt.join = TRUE, geom_style = "errorbar")
ggiplot(est_did, geom_style = "ribbon", col = "orange")
# etc
# We can also use a dictionary to replace label values. The dicionary should
# take the form of a named vector or list, e.g. c("old_lab1" = "new_lab1", ...)
# Let's create a "month" variable
all_months = c("aug", "sept", "oct", "nov", "dec", "jan",
"feb", "mar", "apr", "may", "jun", "jul")
# Turn into a dictionary by providing the old names
# Note the implication that treatment occured here in December (5 month in our series)
dict = all_months; names(dict) = 1:12
# Pass our new dictionary to our ggiplot call
ggiplot(est_did, pt.join = TRUE, geom_style = "errorbar", dict = dict)
#
# What if the interacted variable is not numeric?
# let's re-use our all_months vector from the previous example, but add it
# directly to the dataset
base_inter$period_month = all_months[base_inter$period]
# The new estimation
est = feols(y ~ x1 + i(period_month, treat, "oct") | id+period, base_inter)
# Since 'period_month' of type character, iplot/coefplot both sort it
ggiplot(est)
# To respect a plotting order, use a factor
base_inter$month_factor = factor(base_inter$period_month, levels = all_months)
est = feols(y ~ x1 + i(month_factor, treat, "oct") | id + period, base_inter)
ggiplot(est)
# dict -> c("old_name" = "new_name")
dict = all_months; names(dict) = 1:12; dict
ggiplot(est_did, dict = dict)
#
# Example 3: Setting defaults
#
# The customization logic of ggcoefplot/ggiplot works differently than the
# original base fixest counterparts, so we don't have "gg" equivalents of
# setFixest_coefplot and setFixest_iplot. However, you can still invoke some
# global fixest settings like setFixest_dict(). SImple example:
base_inter$letter = letters[base_inter$period]
est_letters = feols(y ~ x1 + i(letter, treat, 'e') | id+letter, base_inter)
# Set global dictionary for capitalising the letters
dict = LETTERS[1:10]; names(dict) = letters[1:10]
setFixest_dict(dict)
ggiplot(est_letters)
setFixest_dict() # reset
#
# Example 4: group + cleaning
#
# You can use the argument group to group variables
# You can further use the special character "^^" to clean
# the beginning of the coef. name: particularly useful for factors
est = feols(Petal.Length ~ Petal.Width + Sepal.Length +
Sepal.Width + Species, iris)
# No grouping:
ggcoefplot(est)
# now we group by Sepal and Species
ggcoefplot(est, group = list(Sepal = "Sepal", Species = "Species"))
# now we group + clean the beginning of the names using the special character ^^
ggcoefplot(est, group = list(Sepal = "^^Sepal.", Species = "^^Species"))
#
# Example 5: Some more ggcoefplot/ggiplot extras
#
# We'll demonstrate using the staggered treatment example from the
# introductory fixest vignette.
data(base_stagg)
est_twfe = feols(
y ~ x1 + i(time_to_treatment, treated, ref = c(-1, -1000)) | id + year,
base_stagg
)
est_sa20 = feols(
y ~ x1 + sunab(year_treated, year) | id + year,
data = base_stagg
)
# Plot both regressions in a faceted plot
ggiplot(
list('TWFE' = est_twfe, 'Sun & Abraham (2020)' = est_sa20),
main = 'Staggered treatment', ref.line = -1, pt.join = TRUE
)
# So far that's no different than base iplot (automatic legend aside). But an
# area where ggiplot shines is in complex multiple estimation cases, such as
# lists of fixest_multi objects. To illustrate, let's add a split variable
# (group) to our staggered dataset.
base_stagg_grp = base_stagg
base_stagg_grp$grp = ifelse(base_stagg_grp$id %% 2 == 0, 'Evens', 'Odds')
# Now re-run our two regressions from earlier, but splitting the sample to
# generate fixest_multi objects.
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 combines the list of multi-estimation objects without a problem...
ggiplot(list('TWFE' = est_twfe_grp, 'Sun & Abraham (2020)' = est_sa20_grp),
ref.line = -1, main = 'Staggered treatment: Split multi-sample')
# ... but is even better when we use facets instead of dodged errorbars.
# Let's use this an opportunity to construct a fancy plot that invokes some
# additional arguments and ggplot theming.
ggiplot(
list('TWFE' = est_twfe_grp, 'Sun & Abraham (2020)' = est_sa20_grp),
ref.line = -1,
main = 'Staggered treatment: Split multi-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'
)
)
#
# Aside on theming and scale adjustments
#
# Setting the theme inside the `ggiplot()` call is optional and not strictly
# necessary, since the ggplot2 API allows programmatic updating of existing
# plots. E.g.
last_plot() +
labs(caption = 'Note: Super fancy plot brought to you by ggiplot')
last_plot() +
theme_grey() +
theme(legend.position = 'none') +
scale_fill_brewer(palette = 'Set1', aesthetics = c("colour", "fill"))
# etc.
#' @export