R’s built-in copy-on-modify behavior prevents the user from having two symbols always pointing to the same object. Because pointers, as they are common in other programming languages, are essentially symbols (variables) related to an object that has already another symbol attached to it, it is clear that pointers do not fit naturally into R’s language concept.
However, pointers would be incredibly useful, e.g. when you work with complex subsets of dataframes. These complex filtering conditions make the code harder to read and to maintain. For this reason, it would be good to have a kind of ‘abbreviation’ or ‘shortcut’ that lets you write such filtering conditions more efficiently.
The pointr package provides
functionality to create pointers to any R object easily, including
pointers to subsets/selections from dataframes.
pointrpointrTo install the CRAN version of pointr
from the R console, just call:
install.packages("pointr", dependencies = TRUE)Before using pointr, it needs to be
attached to the package search path:
library(pointr)Now, we are ready to go.
From the user’s perspective, pointr
provides three simple functions:
ptr(symbol1, symbol2) creates a
pointer called symbol1 to the object in
symbol2. The function has no return value. The
symbol1 pointer variable is created by the function. Both
arguments, symbol1 and symbol2, are
strings.
rm.ptr(symbol1, keep=TRUE) removes
the pointer. It deletes the hidden access function
.symbol1(). If keep == FALSE it also deletes
the pointer variable symbol1. If, however
keep == FALSE a copy of the object that the pointer refers
to is stored in the symbol1 variable. The
symbol1 argument is a string.
where(symbol1) shows the name of
the object the pointer symbol1 points to. The
symbol1 argument is a character vector.
Pointers work like the referenced variable itself. You can, for example, print them (which prints the contents of the referenced variable) or assign values to them (which assigns the values to the referenced variable).
First, we define a variable myvar and create a pointer
mypointer to this variable. Accessing the pointer
mypointer actually reads myvar.
myvar <- 3
ptr("mypointer", "myvar")
mypointer## [1] 3
Accordingly, changes to myvar can be seen using the
pointer.
myvar <- 5
mypointer## [1] 5
The pointer can also be used in assignments; this changes the variables the pointer points to:
mypointer <- 7
myvar## [1] 7
We create a simple dataframe:
df <- data.frame(list(var1 = c(1,2,3), var2 = c("a", "b", "c")), stringsAsFactors = FALSE)
df## var1 var2
## 1 1 a
## 2 2 b
## 3 3 c
Now we set a pointer sel to a subset of
df:
i <- 2
ptr("sel", "df$var2[i]")We can now change…
sel <- "hello"
df$var2[i]## [1] "hello"
and read data from df using the sel
pointer:
df$var2[i] <- "world"
sel## [1] "world"
We can also check easily where our pointer points to:
where.ptr("sel")## [1] "world"
When the index variable i changes, our pointer adjusts
accordingly:
i <- 3
sel## [1] "c"
Active bindings are used to create the
pointr pointers. For each pointer an
object with active binding is created. Every time the pointer is
accessed, the active binding calls a hidden function called
.pointer where pointer is the name of
the pointer variable. This function evaluates the assignment (if the
user assigns a value to the pointer) or evaluates the object the pointer
refers to as such (if the user accesses the contents of the object the
pointer points to). This way it is possible not only to address objects
like vectors or dataframes but also to have pointers to things like, for
example, subsets of datafames.
All pointr functions operate in the
environment in which the pointer is created.