all.equal {base} | R Documentation |
all.equal(x, y)
is a utility to compare R objects x
and y
testing ‘near equality’. If they are different,
comparison is still made to some extent, and a report of the
differences is returned. Do not use all.equal
directly in
if
expressions—either use isTRUE(all.equal(....))
or
identical
if appropriate.
all.equal(target, current, ...) ## S3 method for class 'numeric' all.equal(target, current, tolerance = sqrt(.Machine$double.eps), scale = NULL, countEQ = FALSE, formatFUN = function(err, what) format(err), ..., check.attributes = TRUE) ## S3 method for class 'list' all.equal(target, current, ..., check.attributes = TRUE, use.names = TRUE) ## S3 method for class 'environment' all.equal(target, current, all.names=TRUE, ...) ## S3 method for class 'POSIXt' all.equal(target, current, ..., tolerance = 1e-3, scale) attr.all.equal(target, current, ..., check.attributes = TRUE, check.names = TRUE)
target |
R object. |
current |
other R object, to be compared with |
... |
further arguments for different methods, notably the following two, for numerical comparison: |
tolerance |
numeric ≥ 0. Differences smaller than
|
scale |
|
countEQ |
logical indicating if the |
formatFUN |
a |
check.attributes |
logical indicating if the
|
use.names |
logical indicating if |
all.names |
logical passed to |
check.names |
logical indicating if the |
all.equal
is a generic function, dispatching methods on the
target
argument. To see the available methods, use
methods("all.equal")
, but note that the default method
also does some dispatching, e.g. using the raw method for logical
targets.
Remember that arguments which follow ...
must be specified by
(unabbreviated) name. It is inadvisable to pass unnamed arguments in
...
as these will match different arguments in different
methods.
Numerical comparisons for scale = NULL
(the default) are
typically on relative difference scale unless the target values
are close to zero: First, the mean absolute difference of the two
numerical vectors is computed. If this is smaller than
tolerance
or not finite, absolute differences are used,
otherwise relative differences scaled by the mean absolute
target
value.
Note that these comparisons are computed only for those vector elements
where target
is not NA
and differs from current
.
If countEQ
is true, the equal and NA
cases are
counted in determining “sample” size.
If scale
is numeric (and positive), absolute comparisons are
made after scaling (dividing) by scale
.
For complex target
, the modulus (Mod
) of the
difference is used: all.equal.numeric
is called so arguments
tolerance
and scale
are available.
The list
method compares components of
target
and current
recursively, passing all other
arguments, as long as both are “list-like”, i.e., fulfill
either is.vector
or is.list
.
The environment
method works via the list
method,
and is also used for reference classes (unless a specific
all.equal
method is defined).
The methods for the date-time classes by default allow a tolerance of
tolerance = 0.001
seconds, and ignore scale
.
attr.all.equal
is used for comparing
attributes
, returning NULL
or a
character
vector.
Either TRUE
(NULL
for attr.all.equal
) or a vector
of mode
"character"
describing the differences
between target
and current
.
Chambers, J. M. (1998)
Programming with Data. A Guide to the S Language.
Springer (for =
).
identical
, isTRUE
, ==
, and
all
for exact equality testing.
all.equal(pi, 355/113) # not precise enough (default tol) > relative error d45 <- pi*(1/4 + 1:10) stopifnot( all.equal(tan(d45), rep(1, 10))) # TRUE, but all (tan(d45) == rep(1, 10)) # FALSE, since not exactly all.equal(tan(d45), rep(1, 10), tolerance = 0) # to see difference ## advanced: equality of environments ae <- all.equal(as.environment("package:stats"), asNamespace("stats")) stopifnot(is.character(ae), length(ae) > 10, ## were incorrectly "considered equal" in R <= 3.1.1 all.equal(asNamespace("stats"), asNamespace("stats"))) ## A situation where 'countEQ = TRUE' makes sense: x1 <- x2 <- (1:100)/10; x2[2] <- 1.1*x1[2] ## 99 out of 100 pairs (x1[i], x2[i]) are equal: plot(x1,x2, main = "all.equal.numeric() -- not counting equal parts") all.equal(x1,x2) ## "Mean relative difference: 0.1" mtext(paste("all.equal(x1,x2) :", all.equal(x1,x2)), line= -2) ##' extract the 'Mean relative difference' as number: all.eqNum <- function(...) as.numeric(sub(".*:", '', all.equal(...))) set.seed(17) ## When x2 is jittered, typically all pairs (x1[i],x2[i]) do differ: summary(r <- replicate(100, all.eqNum(x1, x2*(1+rnorm(x1)*1e-7)))) mtext(paste("mean(all.equal(x1, x2*(1 + eps_k))) {100 x} Mean rel.diff.=", signif(mean(r), 3)), line = -4, adj=0) ## With argument countEQ=TRUE, get "the same" (w/o need for jittering): mtext(paste("all.equal(x1,x2, countEQ=TRUE) :", signif(all.eqNum(x1,x2, countEQ=TRUE), 3)), line= -6, col=2)