rxSummary: Object Summaries
Description
Produce univariate summaries of objects in RevoScaleR.
Usage
rxSummary(formula, data, byGroupOutFile = NULL,
summaryStats = c("Mean", "StdDev", "Min", "Max", "ValidObs", "MissingObs"),
byTerm = TRUE, pweights = NULL, fweights = NULL, rowSelection = NULL,
transforms = NULL, transformObjects = NULL,
transformFunc = NULL, transformVars = NULL,
transformPackages = NULL, transformEnvir = NULL,
overwrite = FALSE,
useSparseCube = rxGetOption("useSparseCube"),
removeZeroCounts = useSparseCube,
blocksPerRead = rxGetOption("blocksPerRead"),
rowsPerBlock = 100000,
reportProgress = rxGetOption("reportProgress"), verbose = 0,
computeContext = rxGetOption("computeContext"), ...)
Arguments
formula
formula, as described in rxFormula. The formula typically does not contain a response variable, i.e. it should be of the form ~ terms
. If ~.
is used as the formula, summary statistics will be computed for all non-character variables. If a numeric variable is interacted with a factor variable, summary statistics will be computed for each category of the factor.
data
either a data source object, a character string specifying a .xdf file, or a data frame object to summarize.
byGroupOutFile
NULL, a character string or vector of character strings specifying .xdf file names(s), or an RxXdfData object or list of RxXdfData objects. If not NULL, and the formula includes computations by factor, the by-group summary results will be written out to one or more .xdf files. If more than one .xdf
file is created and a single character string is specified, an integer will be appended to the base byGroupOutFile name for additional file names. The resulting RxXdfData objects will be listed in the categorical
component of the output object. byGroupOutFile
is not supported when using distributed compute contexts such as RxHadoopMR.
summaryStats
a character vector containing one or more of the following values: "Mean", "StdDev", "Min", "Max", "ValidObs", "MissingObs", "Sum".
byTerm
logical variable. If TRUE
, missings will be removed by term (by variable or by interaction expression) before computing summary statistics. If FALSE
, observations with missings in any term will be removed before computations.
pweights
character string specifying the variable to use as probability weights for the observations.
fweights
character string specifying the variable to use as frequency weights for the observations.
rowSelection
name of a logical variable in the data set (in quotes) or a logical expression using variables in the data set to specify row selection. For example, rowSelection = "old"
will use only observations in which the value of the variable old
is TRUE
. rowSelection = (age > 20) & (age < 65) & (log(income) > 10)
will use only observations in which the value of the age
variable is between 20 and 65 and the value of the log
of the income
variable is greater than 10. The row selection is performed after processing any data transformations (see the arguments transforms
or transformFunc
). As with all expressions, rowSelection
can be defined outside of the function call using the expression function.
transforms
an expression of the form list(name = expression, ...)
representing the first round of variable transformations. As with all expressions, transforms
(or rowSelection
) can be defined outside of the function call using the expression function.
transformObjects
a named list containing objects that can be referenced by transforms
, transformsFunc
, and rowSelection
.
transformFunc
variable transformation function. See rxTransform for details.
transformVars
character vector of input data set variables needed for the transformation function. See rxTransform for details.
transformPackages
character vector defining additional R packages (outside of those specified in rxGetOption("transformPackages")
) to be made available and preloaded for use in variable transformation functions, e.g., those explicitly defined in RevoScaleR functions via their transforms
and transformFunc
arguments or those defined implicitly via their formula
or rowSelection
arguments. The transformPackages
argument may also be NULL
, indicating that no packages outside rxGetOption("transformPackages")
will be preloaded.
transformEnvir
user-defined environment to serve as a parent to all environments developed internally and used for variable data transformation. If transformEnvir = NULL
, a new "hash" environment with parent baseenv()
is used instead.
overwrite
logical value. If TRUE
, an existing byGroupOutFile
will be overwritten. overwrite
is ignored byGroupOutFile
is NULL
.
useSparseCube
logical value. If TRUE
, sparse cube is used.
removeZeroCounts
logical flag. If TRUE
, rows with no observations will be removed from the output for counts of categorical data. By default, it has the same value as useSparseCube
. For large summary computation, this should be set to TRUE
, otherwise R may run out of memory even if the internal C++ computation succeeds.
blocksPerRead
number of blocks to read for each chunk of data read from the data source.
rowsPerBlock
maximum number of rows to write to each block in the byGroupOutFile
(if it is not NULL
).
reportProgress
integer value with options:
0
: no progress is reported.1
: the number of processed rows is printed and updated.2
: rows processed and timings are reported.3
: rows processed and all timings are reported.
verbose
integer value. If 0
, no additional output is printed. If 1
, additional summary information is printed.
computeContext
a valid RxComputeContext. The RxSpark
, and RxHadoopMR
compute contexts distribute the computation among the nodes specified by the compute context; for other compute contexts, the computation is distributed if possible on the local computer.
...
additional arguments to be passed directly to the Revolution Compute Engine.
Details
Special function F()
can be used in formula to force a variable to be
interpreted as factors.
If the formula contains a single dependent or response variable, summary statistics are
computed for the interaction between that variable and the first term
of the independent variables. (Multiple response variables are not permitted.)
For example, using the formula y ~ xfac
will give the same results as using the formula ~y:xfac
, where y
is a continuous variable and xfac
is a factor. Summary statistics
for y
are computed for each factor level of x
. This facilitates using the
same formula in rxSummary
as in, for example, rxCube
or rxLinMod
.
Value
an rxSummary object containing the following elements:
nobs.valid
number of valid observations.
nobs.missing
number of missing observations.
sDataFrame
data frame containing summaries for continuous variables.
categorical
list of summaries for categorical variables.
categorical.type
types of categorical summaries: can be "counts", or "cube" (for crosstab counts) or "none" (if there is no categorical summaries).
formula
formula used to obtain the summary.
Author(s)
Microsoft Corporation Microsoft Technical Support
See Also
Examples
# Create a local data frame
DF <- data.frame(sex = c("Male", "Male", "Female", "Male"),
age = c(20, 20, 12, 10), score = 1.1:4.1)
# get summary of sex variable
rxSummary(~ sex, DF)
# obtain within sex-category statistics of the score variable
rxSummary(score ~ sex, DF)
# use transforms to create a factor variable and compute
# summary statistics by each factor level
rxSummary(~score:ageGroup, data=DF,
transforms = list(ageGroup = cut(age, seq(0, 30, 10))))
# the following will give the same results
rxSummary(score~ageGroup, data=DF,
transforms = list(ageGroup = cut(age, seq(0, 30, 10))))
# the same formula can be used in rxCube
rxCube(score~ageGroup, data=DF, transforms=list(ageGroup = cut(age, seq(0,30,10))))
# Write summary statistics by group to an .xdf file. Here the groups
# are defined as year of age by sex by state (3 states in CensusWorkers file),
# so summary statistics for 46 x 2 x 3 groups are computed. The first term
# will just compute the Counts for each group, while the second two will
# compute by-group Means and ValidObs for incwage and wkswork1
censusWorkers <- file.path(rxGetOption("sampleDataDir"), "CensusWorkers.xdf")
sumOutFile <- tempfile(pattern = ".rxTempSumOut", fileext = ".xdf")
sumOut <- rxSummary(~F(age):sex:state + incwage:F(age):sex:state + wkswork1:F(age):sex:state,
data = censusWorkers, blocksPerRead = 3,
byGroupOutFile = sumOutFile, rowsPerBlock = 10, summaryStats = c("Mean", "ValidObs"))
rxGetVarInfo(sumOutFile)
file.remove(sumOutFile)