aggregate {stats} | R Documentation |
Splits the data into subsets, computes summary statistics for each, and returns the result in a convenient form.
aggregate(x, ...) ## Default S3 method: aggregate(x, ...) ## S3 method for class 'data.frame' aggregate(x, by, FUN, ..., simplify = TRUE) ## S3 method for class 'formula' aggregate(formula, data, FUN, ..., subset, na.action = na.omit) ## S3 method for class 'ts' aggregate(x, nfrequency = 1, FUN = sum, ndeltat = 1, ts.eps = getOption("ts.eps"), ...)
x |
an R object. |
by |
a list of grouping elements, each as long as the variables
in |
FUN |
a function to compute the summary statistics which can be applied to all data subsets. |
simplify |
a logical indicating whether results should be simplified to a vector or matrix if possible. |
formula |
a formula, such as |
data |
a data frame (or list) from which the variables in formula should be taken. |
subset |
an optional vector specifying a subset of observations to be used. |
na.action |
a function which indicates what should happen when
the data contain |
nfrequency |
new number of observations per unit of time; must
be a divisor of the frequency of |
ndeltat |
new fraction of the sampling period between
successive observations; must be a divisor of the sampling
interval of |
ts.eps |
tolerance used to decide if |
... |
further arguments passed to or used by methods. |
aggregate
is a generic function with methods for data frames
and time series.
The default method aggregate.default
uses the time series
method if x
is a time series, and otherwise coerces x
to a data frame and calls the data frame method.
aggregate.data.frame
is the data frame method. If x
is
not a data frame, it is coerced to one, which must have a non-zero
number of rows. Then, each of the variables (columns) in x
is
split into subsets of cases (rows) of identical combinations of the
components of by
, and FUN
is applied to each such subset
with further arguments in ...
passed to it. The result is
reformatted into a data frame containing the variables in by
and x
. The ones arising from by
contain the unique
combinations of grouping values used for determining the subsets, and
the ones arising from x
the corresponding summaries for the
subset of the respective variables in x
. If simplify
is
true, summaries are simplified to vectors or matrices if they have a
common length of one or greater than one, respectively; otherwise,
lists of summary results according to subsets are obtained. Rows with
missing values in any of the by
variables will be omitted from
the result. (Note that versions of R prior to 2.11.0 required
FUN
to be a scalar function.)
aggregate.formula
is a standard formula interface to
aggregate.data.frame
.
aggregate.ts
is the time series method, and requires FUN
to be a scalar function. If x
is not a time series, it is
coerced to one. Then, the variables in x
are split into
appropriate blocks of length frequency(x) / nfrequency
, and
FUN
is applied to each such block, with further (named)
arguments in ...
passed to it. The result returned is a time
series with frequency nfrequency
holding the aggregated values.
Note that this make most sense for a quarterly or yearly result when
the original series covers a whole number of quarters or years: in
particular aggregating a monthly series to quarters starting in
February does not give a conventional quarterly series.
FUN
is passed to match.fun
, and hence it can be a
function or a symbol or character string naming a function.
For the time series method, a time series of class "ts"
or
class c("mts", "ts")
.
For the data frame method, a data frame with columns
corresponding to the grouping variables in by
followed by
aggregated columns from x
. If the by
has names, the
non-empty times are used to label the columns in the results, with
unnamed grouping variables being named Group.i
for
by[[i]]
.
Kurt Hornik, with contributions by Arni Magnusson.
Becker, R. A., Chambers, J. M. and Wilks, A. R. (1988) The New S Language. Wadsworth & Brooks/Cole.
## Compute the averages for the variables in 'state.x77', grouped ## according to the region (Northeast, South, North Central, West) that ## each state belongs to. aggregate(state.x77, list(Region = state.region), mean) ## Compute the averages according to region and the occurrence of more ## than 130 days of frost. aggregate(state.x77, list(Region = state.region, Cold = state.x77[,"Frost"] > 130), mean) ## (Note that no state in 'South' is THAT cold.) ## example with character variables and NAs testDF <- data.frame(v1 = c(1,3,5,7,8,3,5,NA,4,5,7,9), v2 = c(11,33,55,77,88,33,55,NA,44,55,77,99) ) by1 <- c("red","blue",1,2,NA,"big",1,2,"red",1,NA,12) by2 <- c("wet","dry",99,95,NA,"damp",95,99,"red",99,NA,NA) aggregate(x = testDF, by = list(by1, by2), FUN = "mean") # and if you want to treat NAs as a group fby1 <- factor(by1, exclude = "") fby2 <- factor(by2, exclude = "") aggregate(x = testDF, by = list(fby1, fby2), FUN = "mean") ## Formulas, one ~ one, one ~ many, many ~ one, and many ~ many: aggregate(weight ~ feed, data = chickwts, mean) aggregate(breaks ~ wool + tension, data = warpbreaks, mean) aggregate(cbind(Ozone, Temp) ~ Month, data = airquality, mean) aggregate(cbind(ncases, ncontrols) ~ alcgp + tobgp, data = esoph, sum) ## Dot notation: aggregate(. ~ Species, data = iris, mean) aggregate(len ~ ., data = ToothGrowth, mean) ## Often followed by xtabs(): ag <- aggregate(len ~ ., data = ToothGrowth, mean) xtabs(len ~ ., data = ag) ## Compute the average annual approval ratings for American presidents. aggregate(presidents, nfrequency = 1, FUN = mean) ## Give the summer less weight. aggregate(presidents, nfrequency = 1, FUN = weighted.mean, w = c(1, 1, 0.5, 1))