| bin {fixest} | R Documentation |
Tool to easily group the values of a given variable.
bin(x, bin)
x |
A vector whose values have to be grouped. Can be of any type but must be atomic. |
bin |
A list of values to be grouped, a vector, a formula, or the special values |
It returns a vector of the same length as x
Numeric vectors can be cut easily into: a) equal parts, b) user-specified bins.
Use "cut::n" to cut the vector into n (roughly) equal parts. Percentiles are used to partition the data, hence some data distributions can lead to create less than n parts (for example if P0 is the same as P50).
The user can specify custom bins with the following syntax: "cut::a]b]c]"etc. Here the numbers a, b, c, etc, are a sequence of increasing numbers, each followed by an open or closed square bracket. The numbers can be specified as either plain numbers (e.g. "cut::5]12[32["), quartiles (e.g. "cut::q1]q3["), or percentiles (e.g. "cut::p10]p15]p90]"). Values of different types can be mixed: "cut::5]q2[p80[" is valid provided the median (q2) is indeed greater than 5, otherwise an error is thrown.
The square bracket right of each number tells whether the numbers should be included or excluded from the current bin. For example, say x ranges from 0 to 100, then "cut::5]" will create two bins: one from 0 to 5 and a second from 6 to 100. With "cut::5[" the bins would have been 0-4 and 5-100.
A factor is returned. The labels report the min and max values in each bin.
To have user-specified bin labels, just add them in the character vector following 'cut::values'. You don't need to provide all of them, and NA values fall back to the default label. For example, bin = c("cut::4", "Q1", NA, "Q3") will modify only the first and third label that will be displayed as "Q1" and "Q3".
data(airquality)
month_num = airquality$Month
table(month_num)
# Grouping the first two values
table(bin(month_num, 5:6))
# ... plus changing the name to '10'
table(bin(month_num, list("10" = 5:6)))
# ... and grouping 7 to 9
table(bin(month_num, list("g1" = 5:6, "g2" = 7:9)))
# Grouping every two months
table(bin(month_num, "bin::2"))
# ... every 2 consecutive elements
table(bin(month_num, "!bin::2"))
# ... idem starting from the last one
table(bin(month_num, "!!bin::2"))
# Using .() for list():
table(bin(month_num, .("g1" = 5:6)))
#
# with non numeric data
#
month_lab = c("may", "june", "july", "august", "september")
month_fact = factor(month_num, labels = month_lab)
# Grouping the first two elements
table(bin(month_fact, c("may", "jun")))
# ... using regex
table(bin(month_fact, "@may|jun"))
# ...changing the name
table(bin(month_fact, list("spring" = "@may|jun")))
# Grouping every 2 consecutive months
table(bin(month_fact, "!bin::2"))
# ...idem but starting from the last
table(bin(month_fact, "!!bin::2"))
# Relocating the months using "@d" in the name
table(bin(month_fact, .("@5" = "may", "@1 summer" = "@aug|jul")))
# Putting "@" as first item means subsequent items will be placed first
table(bin(month_fact, .("@", "aug", "july")))
#
# "Cutting" numeric data
#
data(iris)
plen = iris$Petal.Length
# 3 parts of (roughly) equal size
table(bin(plen, "cut::3"))
# Three custom bins
table(bin(plen, "cut::2]5]"))
# .. same, excluding 5 in the 2nd bin
table(bin(plen, "cut::2]5["))
# Using quartiles
table(bin(plen, "cut::q1]q2]q3]"))
# Using percentiles
table(bin(plen, "cut::p20]p50]p70]p90]"))
# Mixing all
table(bin(plen, "cut::2[q2]p90]"))
# NOTA:
# -> the labels always contain the min/max values in each bin
# Custom labels can be provided, just give them in the char. vector
# NA values lead to the default label
table(bin(plen, c("cut::2[q2]p90]", "<2", "]2; Q2]", NA, ">90%")))
#
# With a formula
#
data(iris)
plen = iris$Petal.Length
# We need to use "x"
table(bin(plen, list("< 2" = ~x < 2, ">= 2" = ~x >= 2)))