zmisc
Vector Look-Ups and Safer Sampling
A collection of utility functions that facilitate looking up vector values from a lookup table, annotate values in at table for clearer viewing, and support a safer approach to vector sampling, sequence generation, and aggregation.
Installation
You can install the released version of zmisc
from
CRAN with:
install.packages("zmisc")
You can use pak
to install the development version of zmisc
from
GitHub with:
pak::pak("torfason/zmisc")
Usage
In order to use the package, you generally want to attach it first:
library(zmisc)
Quick and easy value lookups
The functions
lookup() and
lookuper()
are used to look up values from a lookup table, which can be supplied as
a vector
, a list
, or a data.frame
. The functions are in some ways
similar to the Excel function VLOOKUP()
, but are designed to work
smoothly in an R workflow, in particular within pipes.
lookup: Lookup values from a lookup table
The lookup() function implements lookup of certain strings (such as variable names) from a lookup table which maps keys onto values (such as variable labels or descriptions).
The lookup table can be in the form of a two-column data.frame
, in the
form of a named vector
, or in the form of a list
. If the table is in
the form of a data.frame
, the lookup columns should be named name
(for the key) and value
(for the value). If the lookup table is in the
form of a named vector
or list
, the name is used for the key, and
the returned value is taken from the values in the vector or list.
Original values are returned if they are not found in the lookup table.
Alternatively, a default
can be specified for values that are not
found. Note that an NA
in x will never be found and will be replaced
with the default value. To specify different defaults for values that
are not found and for NA
values in x
, the default
must be crafted
manually to achieve this.
Any names in x are not included in the result.
Examples
fruit_lookup_vector <- c(a="Apple", b="Banana", c="Cherry")
lookup(letters[1:5], fruit_lookup_vector)
lookup(letters[1:5], fruit_lookup_vector, default = NA)
mtcars_lookup_data_frame <- data.frame(
name = c("mpg", "hp", "wt"),
value = c("Miles/(US) gallon", "Gross horsepower", "Weight (1000 lbs)"))
lookup(names(mtcars), mtcars_lookup_data_frame)
lookuper: Construct lookup function based on a specific lookup table
The lookuper() function returns a function equivalent to the lookup() function, except that instead of taking a lookup table as an argument, the lookup table is embedded in the function itself.
This can be very useful, in particular when using the lookup function as
an argument to other functions that expect a function which maps
character
->character
but do not offer a good way to pass additional
arguments to that function.
Examples
lookup_fruits <- lookuper(list(a="Apple", b="Banana", c="Cherry"))
lookup_fruits(letters[1:5])
Safer sampling, sequencing and aggregation
The functions zample(), zeq(), and zingle() are intended to make your code less likely to break in mysterious ways when you encounter unexpected boundary conditions. The zample() and zeq() are almost identical to the sample() and seq() functions, but a bit safer.
zample: Sample from a vector in a safe way
The zample()
function duplicates the functionality of
sample(), with the exception that
it does not attempt the (sometimes dangerous) user-friendliness of
switching the interpretation of the first element to a number if the
length of the vector is 1. zample()
always treats its first argument
as a vector containing elements that should be sampled, so your code
won’t break in unexpected ways when the input vector happens to be of
length 1.
Examples
# For vectors of length 2 or more, zample() and sample() are identical
set.seed(42); zample(7:11)
set.seed(42); sample(7:11)
# For vectors of length 1, zample() will still sample from the vector,
# whereas sample() will "magically" switch to interpreting the input
# as a number n, and sampling from the vector 1:n.
set.seed(42); zample(7)
set.seed(42); sample(7)
# The other arguments work in the same way as for sample()
set.seed(42); zample(7:11, size=13, replace=TRUE, prob=(5:1)^3)
set.seed(42); sample(7:11, size=13, replace=TRUE, prob=(5:1)^3)
# Of course, sampling more than the available elements without
# setting replace=TRUE will result in an error
set.seed(42); tryCatch(zample(7, size=2), error=wrap_error)
zeq: Generate sequence in a safe way
The zeq() function creates an increasing integer sequence, but differs from the standard one in that it will not silently generate a decreasing sequence when the second argument is smaller than the first. If the second argument is one smaller than the first it will generate an empty sequence, if the difference is greater, the function will throw an error.
Examples
# For increasing sequences, zeq() and seq() are identical
zeq(11,15)
zeq(11,11)
# If second argument equals first-1, an empty sequence is returned
zeq(11,10)
# If second argument is less than first-1, the function throws an error
tryCatch(zeq(11,9), error=wrap_error)
zingle: Return the single (unique) value found in a vector
The zingle()
function returns the first element in a vector, but only if all the
other elements are identical to the first one (the vector only has a
zingle
value). If the elements are not all identical, it throws an
error. The vector must contain at least one non-NA
value, or the
function errors out as well. This is especially useful in aggregations,
when all values in a given group should be identical, but you want to
make sure.
Examples
# If all elements are identical, all is good.
# The value of the element is returned.
zingle(c("Alpha", "Alpha", "Alpha"))
# If any elements differ, an error is thrown
tryCatch(zingle(c("Alpha", "Beta", "Alpha")), error=wrap_error)
if (require("dplyr", quietly=TRUE, warn.conflicts=FALSE)) {
d <- tibble::tribble(
~id, ~name, ~fouls,
1, "James", 3,
2, "Jack", 2,
1, "James", 4
)
# If the data is of the correct format, all is good
d %>%
dplyr::group_by(id) %>%
dplyr::summarise(name=zingle(name), total_fouls=sum(fouls))
}
if (require("dplyr", quietly=TRUE, warn.conflicts=FALSE)) {
# If a name does not match its ID, we should get an error
d[1,"name"] <- "Jammes"
tryCatch({
d %>%
dplyr::group_by(id) %>%
dplyr::summarise(name=zingle(name), total_fouls=sum(fouls))
}, error=wrap_error)
}
Getting a better view on variables
The notate()
function adds annotations to factor
and labelled
variables that make
it easier to see both values and labels/levels when using the
View() function
notate: Embed factor levels and value labels in values.
This function adds level/label information as an annotation to either
factors or labelled
variables. This function is called notate()
rather than annotate()
to avoid conflict with ggplot2::annotate()
.
It is a generic that can operate either on individual vectors or on a
data.frame
.
When printing labelled
variables from a tibble
in a console, both
the numeric value and the text label are shown, but no variable labels.
When using the View()
function, only variable labels are shown but no
value labels. For factors, there is no way to view the integer levels
and values at the same time.
In order to allow the viewing of both variable and value labels at the
same time, this function converts both factor
and labelled
variables
to character
, including both numeric levels (labelled
values) and
character values (labelled
labels) in the output.
Examples
d <- data.frame(
chr = letters[1:4],
fct = factor(c("alpha", "bravo", "chrly", "delta")),
lbl = ll_labelled(c(1, 2, 3, NA),
labels = c(one=1, two=2),
label = "A labelled vector")
)
dn <- notate(d)
dn
# View(dn)