Extract.data.frame {base} | R Documentation |
Extract or replace subsets of data frames.
## S3 method for class 'data.frame'
x[i, j, drop = ]
## S3 replacement method for class 'data.frame'
x[i, j] <- value
## S3 method for class 'data.frame'
x[[..., exact = TRUE]]
## S3 replacement method for class 'data.frame'
x[[i, j]] <- value
## S3 replacement method for class 'data.frame'
x$name <- value
x |
data frame. |
i , j , ... |
elements to extract or replace. For |
name |
a literal character string or a name (possibly backtick quoted). |
drop |
logical. If |
value |
a suitable replacement value: it will be repeated a whole
number of times if necessary and it may be coerced: see the
Coercion section. If |
exact |
logical: see |
Data frames can be indexed in several modes. When [
and
[[
are used with a single vector index (x[i]
or
x[[i]]
), they index the data frame as if it were a list. In
this usage a drop
argument is ignored, with a warning.
There is no data.frame
method for $
, so x$name
uses the default method which treats x
as a list (with partial
matching of column names if the match is unique, see
Extract
). The replacement method (for $
) checks
value
for the correct number of rows, and replicates it if necessary.
When [
and [[
are used with two indices (x[i, j]
and x[[i, j]]
) they act like indexing a matrix: [[
can
only be used to select one element. Note that for each selected
column, xj
say, typically (if it is not matrix-like), the
resulting column will be xj[i]
, and hence rely on the
corresponding [
method, see the examples section.
If [
returns a data frame it will have unique (and non-missing)
row names, if necessary transforming the row names using
make.unique
. Similarly, if columns are selected column
names will be transformed to be unique if necessary (e.g., if columns
are selected more than once, or if more than one column of a given
name is selected if the data frame has duplicate column names).
When drop = TRUE
, this is applied to the subsetting of any
matrices contained in the data frame as well as to the data frame itself.
The replacement methods can be used to add whole column(s) by specifying non-existent column(s), in which case the column(s) are added at the right-hand edge of the data frame and numerical indices must be contiguous to existing indices. On the other hand, rows can be added at any row after the current last row, and the columns will be in-filled with missing values. Missing values in the indices are not allowed for replacement.
For [
the replacement value can be a list: each element of the
list is used to replace (part of) one column, recycling the list as
necessary. If columns specified by number are created, the names
(if any) of the corresponding list elements are used to name the
columns. If the replacement is not selecting rows, list values can
contain NULL
elements which will cause the corresponding
columns to be deleted. (See the Examples.)
Matrix indexing (x[i]
with a logical or a 2-column integer
matrix i
) using [
is not recommended. For extraction,
x
is first coerced to a matrix. For replacement, logical
matrix indices must be of the same dimension as x
.
Replacements are done one column at a time, with multiple type
coercions possibly taking place.
Both [
and [[
extraction methods partially match row
names. By default neither partially match column names, but [[
will if exact = FALSE
(and with a warning if exact =
NA
). If you want to exact matching on row names use
match
, as in the examples.
For [
a data frame, list or a single column (the latter two
only when dimensions have been dropped). If matrix indexing is used for
extraction a vector results. If the result would be a data frame an
error results if undefined columns are selected (as there is no general
concept of a 'missing' column in a data frame). Otherwise if a single
column is selected and this is undefined the result is NULL
.
For [[
a column of the data frame or NULL
(extraction with one index)
or a length-one vector (extraction with two indices).
For $
, a column of the data frame (or NULL
).
For [<-
, [[<-
and $<-
, a data frame.
The story over when replacement values are coerced is a complicated one, and one that has changed during R's development. This section is a guide only.
When [
and [[
are used to add or replace a whole column,
no coercion takes place but value
will be
replicated (by calling the generic function rep
) to the
right length if an exact number of repeats can be used.
When [
is used with a logical matrix, each value is coerced to
the type of the column into which it is to be placed.
When [
and [[
are used with two indices, the
column will be coerced as necessary to accommodate the value.
Note that when the replacement value is an array (including a matrix)
it is not treated as a series of columns (as
data.frame
and as.data.frame
do) but
inserted as a single column.
The default behaviour when only one row is left is equivalent to
specifying drop = FALSE
. To drop from a data frame to a list,
drop = TRUE
has to be specified explicitly.
Arguments other than drop
and exact
should not be named:
there is a warning if they are and the behaviour differs from the
description here.
subset
which is often easier for extraction,
data.frame
, Extract
.
sw <- swiss[1:5, 1:4] # select a manageable subset
sw[1:3] # select columns
sw[, 1:3] # same
sw[4:5, 1:3] # select rows and columns
sw[1] # a one-column data frame
sw[, 1, drop = FALSE] # the same
sw[, 1] # a (unnamed) vector
sw[[1]] # the same
sw$Fert # the same (possibly w/ warning, see ?Extract)
sw[1,] # a one-row data frame
sw[1,, drop = TRUE] # a list
sw["C", ] # partially matches
sw[match("C", row.names(sw)), ] # no exact match
try(sw[, "Ferti"]) # column names must match exactly
sw[sw$Fertility > 90,] # logical indexing, see also ?subset
sw[c(1, 1:2), ] # duplicate row, unique row names are created
sw[sw <= 6] <- 6 # logical matrix indexing
sw
## adding a column
sw["new1"] <- LETTERS[1:5] # adds a character column
sw[["new2"]] <- letters[1:5] # ditto
sw[, "new3"] <- LETTERS[1:5] # ditto
sw$new4 <- 1:5
sapply(sw, class)
sw$new # -> NULL: no unique partial match
sw$new4 <- NULL # delete the column
sw
sw[6:8] <- list(letters[10:14], NULL, aa = 1:5)
# update col. 6, delete 7, append
sw
## matrices in a data frame
A <- data.frame(x = 1:3, y = I(matrix(4:9, 3, 2)),
z = I(matrix(letters[1:9], 3, 3)))
A[1:3, "y"] # a matrix
A[1:3, "z"] # a matrix
A[, "y"] # a matrix
stopifnot(identical(colnames(A), c("x", "y", "z")), ncol(A) == 3L,
identical(A[,"y"], A[1:3, "y"]),
inherits (A[,"y"], "AsIs"))
## keeping special attributes: use a class with a
## "as.data.frame" and "[" method;
## "avector" := vector that keeps attributes. Could provide a constructor
## avector <- function(x) { class(x) <- c("avector", class(x)); x }
as.data.frame.avector <- as.data.frame.vector
`[.avector` <- function(x,i,...) {
r <- NextMethod("[")
mostattributes(r) <- attributes(x)
r
}
d <- data.frame(i = 0:7, f = gl(2,4),
u = structure(11:18, unit = "kg", class = "avector"))
str(d[2:4, -1]) # 'u' keeps its "unit"