setFixest_fml {fixest} | R Documentation |
Sets/gets formula macros
Description
You can set formula macros globally with setFixest_fml
. These macros can then be used in fixest
estimations or when using the function xpd
.
Usage
setFixest_fml(..., reset = FALSE)
getFixest_fml()
Arguments
... |
Definition of the macro variables. Each argument name corresponds to the name of the
macro variable. It is required that each macro variable name starts with two dots
(e.g. |
reset |
A logical scalar, defaults to |
Details
In xpd
, the default macro variables are taken from getFixest_fml
.
Any value in the ...
argument of xpd
will replace these default values.
The definitions of the macro variables will replace in verbatim the macro variables.
Therefore, you can include multipart formulas if you wish but then beware of the order the
macros variable in the formula. For example, using the airquality data, say you want to set as
controls the variable Temp
and Day
fixed-effects, you can do
setFixest_fml(..ctrl = ~Temp | Day)
, but then
feols(Ozone ~ Wind + ..ctrl, airquality)
will be quite different from
feols(Ozone ~ ..ctrl + Wind, airquality)
, so beware!
Value
The function getFixest_fml()
returns a list of character strings, the names
corresponding to the macro variable names, the character strings corresponding
to their definition.
See Also
xpd
to make use of formula macros.
Examples
# Small examples with airquality data
data(airquality)
# we set two macro variables
setFixest_fml(..ctrl = ~ Temp + Day,
..ctrl_long = ~ poly(Temp, 2) + poly(Day, 2))
# Using the macro in lm with xpd:
lm(xpd(Ozone ~ Wind + ..ctrl), airquality)
lm(xpd(Ozone ~ Wind + ..ctrl_long), airquality)
# You can use the macros without xpd() in fixest estimations
a = feols(Ozone ~ Wind + ..ctrl, airquality)
b = feols(Ozone ~ Wind + ..ctrl_long, airquality)
etable(a, b, keep = "Int|Win")
# Using .[]
base = setNames(iris, c("y", "x1", "x2", "x3", "species"))
i = 2:3
z = "species"
lm(xpd(y ~ x.[2:3] + .[z]), base)
# No xpd() needed in feols
feols(y ~ x.[2:3] + .[z], base)
#
# Auto completion with '..' suffix
#
# You can trigger variables autocompletion with the '..' suffix
# You need to provide the argument data
base = setNames(iris, c("y", "x1", "x2", "x3", "species"))
xpd(y ~ x.., data = base)
# In fixest estimations, this is automatically taken care of
feols(y ~ x.., data = base)
#
# You can use xpd for stepwise estimations
#
# Note that for stepwise estimations in fixest, you can use
# the stepwise functions: sw, sw0, csw, csw0
# -> see help in feols or in the dedicated vignette
# we want to look at the effect of x1 on y
# controlling for different variables
base = iris
names(base) = c("y", "x1", "x2", "x3", "species")
# We first create a matrix with all possible combinations of variables
my_args = lapply(names(base)[-(1:2)], function(x) c("", x))
(all_combs = as.matrix(do.call("expand.grid", my_args)))
res_all = list()
for(i in 1:nrow(all_combs)){
res_all[[i]] = feols(xpd(y ~ x1 + ..v, ..v = all_combs[i, ]), base)
}
etable(res_all)
coefplot(res_all, group = list(Species = "^^species"))
#
# You can use macros to grep variables in your data set
#
# Example 1: setting a macro variable globally
data(longley)
setFixest_fml(..many_vars = grep("GNP|ployed", names(longley), value = TRUE))
feols(Armed.Forces ~ Population + ..many_vars, longley)
# Example 2: using ..("regex") or regex("regex") to grep the variables "live"
feols(Armed.Forces ~ Population + ..("GNP|ployed"), longley)
# Example 3: same as Ex.2 but without using a fixest estimation
# Here we need to use xpd():
lm(xpd(Armed.Forces ~ Population + regex("GNP|ployed"), data = longley), longley)
# Stepwise estimation with regex: use a comma after the parenthesis
feols(Armed.Forces ~ Population + sw(regex(,"GNP|ployed")), longley)
# Multiple LHS
etable(feols(..("GNP|ployed") ~ Population, longley))
#
# lhs and rhs arguments
#
# to create a one sided formula from a character vector
vars = letters[1:5]
xpd(rhs = vars)
# Alternatively, to replace the RHS
xpd(y ~ 1, rhs = vars)
# To create a two sided formula
xpd(lhs = "y", rhs = vars)
#
# argument 'add'
#
xpd(~x1, add = ~ x2 + x3)
# also works with character vectors
xpd(~x1, add = c("x2", "x3"))
# only adds to the RHS
xpd(y ~ x, add = ~bon + jour)
#
# Dot square bracket operator
#
# The basic use is to add variables in the formula
x = c("x1", "x2")
xpd(y ~ .[x])
# Alternatively, one-sided formulas can be used and their content will be inserted verbatim
x = ~x1 + x2
xpd(y ~ .[x])
# You can create multiple variables at once
xpd(y ~ x.[1:5] + z.[2:3])
# You can summon variables from the environment to complete variables names
var = "a"
xpd(y ~ x.[var])
# ... the variables can be multiple
vars = LETTERS[1:3]
xpd(y ~ x.[vars])
# You can have "complex" variable names but they must be nested in character form
xpd(y ~ .["x.[vars]_sq"])
# DSB can be used within regular expressions
re = c("GNP", "Pop")
xpd(Unemployed ~ regex(".[re]"), data = longley)
# => equivalent to regex("GNP|Pop")
# Use .[,var] (NOTE THE COMMA!) to expand with commas
# !! can break the formula if missused
vars = c("wage", "unemp")
xpd(c(y.[,1:3]) ~ csw(.[,vars]))
# Example of use of .[] within a loop
res_all = list()
for(p in 1:3){
res_all[[p]] = feols(Ozone ~ Wind + poly(Temp, .[p]), airquality)
}
etable(res_all)
# The former can be compactly estimated with:
res_compact = feols(Ozone ~ Wind + sw(.[, "poly(Temp, .[1:3])"]), airquality)
etable(res_compact)
# How does it work?
# 1) .[, stuff] evaluates stuff and, if a vector, aggregates it with commas
# Comma aggregation is done thanks to the comma placed after the square bracket
# If .[stuff], then aggregation is with sums.
# 2) stuff is evaluated, and if it is a character string, it is evaluated with
# the function dsb which expands values in .[]
#
# Wrapping up:
# 2) evaluation of dsb("poly(Temp, .[1:3])") leads to the vector:
# c("poly(Temp, 1)", "poly(Temp, 2)", "poly(Temp, 3)")
# 1) .[, c("poly(Temp, 1)", "poly(Temp, 2)", "poly(Temp, 3)")] leads to
# poly(Temp, 1), poly(Temp, 2), poly(Temp, 3)
#
# Hence sw(.[, "poly(Temp, .[1:3])"]) becomes:
# sw(poly(Temp, 1), poly(Temp, 2), poly(Temp, 3))
#
# In non-fixest functions: guessing the data allows to use regex
#
# When used in non-fixest functions, the algorithm tries to "guess" the data
# so that ..("regex") can be directly evaluated without passing the argument 'data'
data(longley)
lm(xpd(Armed.Forces ~ Population + ..("GNP|ployed")), longley)
# same for the auto completion with '..'
lm(xpd(Armed.Forces ~ Population + GN..), longley)