
GRP
performs fast, ordered and unordered, groupings of vectors and data frames (or lists of vectors) using radixorderv
or group
. The output is a list-like object of class 'GRP' which can be printed, plotted and used as an efficient input to all of collapse's fast statistical and transformation functions and operators (see macros .FAST_FUN
and .OPERATOR_FUN
), as well as to collap
, BY
and TRA
.
fgroup_by
is similar to dplyr::group_by
but faster and class-agnostic. It creates a grouped data frame with a 'GRP' object attached - for fast dplyr-like programming with collapse's fast functions.
There are also several conversion methods to and from 'GRP' objects. Notable among these is GRP.grouped_df
, which returns a 'GRP' object from a grouped data frame created with dplyr::group_by
or fgroup_by
, and the duo GRP.factor
and as_factor_GRP
.
gsplit
efficiently splits a vector based on a 'GRP' object, and greorder
helps to recombine the results. These are the workhorses behind functions like BY
, and collap
, fsummarise
and fmutate
when evaluated with base R and user-defined functions.
GRP(X, …)# S3 method for default
GRP(X, by = NULL, sort = TRUE, decreasing = FALSE, na.last = TRUE,
return.groups = TRUE, return.order = sort, method = "auto",
call = TRUE, …)
# S3 method for factor
GRP(X, …, group.sizes = TRUE, drop = FALSE, return.groups = TRUE,
call = TRUE)
# S3 method for qG
GRP(X, …, group.sizes = TRUE, return.groups = TRUE, call = TRUE)
# S3 method for pseries
GRP(X, effect = 1L, …, group.sizes = TRUE, return.groups = TRUE,
call = TRUE)
# S3 method for pdata.frame
GRP(X, effect = 1L, …, group.sizes = TRUE, return.groups = TRUE,
call = TRUE)
# S3 method for grouped_df
GRP(X, …, return.groups = TRUE, call = TRUE)
# Identify 'GRP' objects
is_GRP(x)
# S3 method for GRP
length(x) # Length of data being grouped
GRPN(x, expand = TRUE, …) # Group sizes (default: expanded to match data length)
GRPnames(x, force.char = TRUE, sep = ".") # Group names
as_factor_GRP(x, ordered = FALSE) # 'GRP'-object to (ordered) factor conversion
# Efficiently split a vector using a 'GRP' object
gsplit(x, g, use.g.names = FALSE, …)
# Efficiently reorder y = unlist(gsplit(x, g)) such that identical(greorder(y, g), x)
greorder(x, g, …)
# Fast, class-agnostic pendant to dplyr::group_by for use with fast functions, see details
fgroup_by(.X, …, sort = TRUE, decreasing = FALSE, na.last = TRUE,
return.order = sort, method = "auto")
# Shorthand for fgroup_by
gby(.X, …, sort = TRUE, decreasing = FALSE, na.last = TRUE,
return.order = sort, method = "auto")
# Get grouping columns from a grouped data frame created with dplyr::group_by or fgroup_by
fgroup_vars(X, return = "data")
# Ungroup grouped data frame created with dplyr::group_by or fgroup_by
fungroup(X, …)
# S3 method for GRP
print(x, n = 6, …)
# S3 method for GRP
plot(x, breaks = "auto", type = "s", horizontal = FALSE, …)
a vector, list of columns or data frame (default method), or a suitable object (conversion / extractor methods).
a data frame or list.
a 'GRP' object. For gsplit/greorder
, x
can be a vector of any type, or NULL
to return the integer indices of the groups. gsplit/greorder/GRPN
also support vectors or data frames to be passed to g/x
.
if X
is a data frame or list, by
can indicate columns to use for the grouping (by default all columns are used). Columns must be passed using a vector of column names, indices, or using a one-sided formula i.e. ~ col1 + col2
.
logical. If FALSE
, groups are not ordered but simply grouped in the order of first appearance of unique elements / rows. This often provides a performance gain if the data was not sorted beforehand. See also method
.
logical. TRUE
adds a class 'ordered' i.e. generates an ordered factor.
logical. Should the sort order be increasing or decreasing? Can be a vector of length equal to the number of arguments in X
/ by
(argument passed to radixorderv
).
logical. If missing values are encountered in grouping vector/columns, assign them to the last group (argument passed to radixorderv
).
logical. Include the unique groups in the created GRP object.
logical. If sort = TRUE
, include the output from radixorderv
in the created GRP object. This brings performance improvements in gsplit
(and thus also benefits grouped execution of base R functions).
character. The algorithm to use for grouping: either "radix"
, "hash"
or "auto"
. "auto"
will chose "radix"
when sort = TRUE
, yielding ordered grouping via radixorderv
, and "hash"
-based grouping in first-appearance order via group
otherwise. It is possibly to put method = "radix"
and sort = FALSE
, which will group character data in first appearance order but sort numeric data (a good hybrid option). method = "hash"
currently does not support any sorting, thus putting sort = TRUE
will simply be ignored.
logical. TRUE
tabulates factor levels using tabulate
to create a vector of group sizes; FALSE
leaves that slot empty when converting from factors.
logical. TRUE
efficiently drops unused factor levels beforehand using fdroplevels
.
logical. TRUE
calls match.call
and saves it in the final slot of the GRP object.
logical. TRUE
returns a vector the same length as the data. FALSE
returns the group sizes (computed in first-appearance-order of groups if x
is not already a 'GRP' object).
logical. Always output group names as character vector, even if a single numeric vector was passed to GRP.default
.
character. The separator passed to paste
when creating group names from multiple grouping variables by pasting them together.
plm / indexed data methods: Select which panel identifier should be used as grouping variable. 1L takes the first variable in the index, 2L the second etc., identifiers can also be passed as a character string. More than one variable can be supplied.
an integer or string specifying what fgroup_vars
should return. The options are:
Int. | String | Description | ||
1 | "data" | full grouping columns (default) | ||
2 | "unique" | unique rows of grouping columns | ||
3 | "names" | names of grouping columns | ||
4 | "indices" | integer indices of grouping columns | ||
5 | "named_indices" | named integer indices of grouping columns | ||
6 | "logical" | logical selection vector of grouping columns | ||
7 | "named_logical" | named logical selection vector of grouping columns |
logical. TRUE
returns a named list, like split
. FALSE
is slightly more efficient.
integer. Number of groups to print out.
integer. Number of breaks in the histogram of group-sizes.
linetype for plot.
logical. TRUE
arranges plots next to each other, instead of above each other.
for fgroup_by
: unquoted comma-separated column names, sequences of columns, expressions involving columns, and column names, indices, logical vectors or selector functions. See Examples. For gsplit
, greorder
and GRPN
: further arguments passed to GRP
(if g/x
is not already a 'GRP' object). For example the by
argument could be used if a data frame is passed.
A list-like object of class `GRP' containing information about the number of groups, the observations (rows) belonging to each group, the size of each group, the unique group names / definitions, whether the groups are ordered and data grouped is sorted or not, the ordering vector used to perform the ordering and the group start positions. The object is structured as follows:
List-index | Element-name | Content type | Content description | |||
[[1]] |
N.groups | integer(1) |
||||
Number of Groups | [[2]] |
group.id | integer(NROW(X)) |
|||
An integer group-identifier | [[3]] |
group.sizes | ||||
integer(N.groups) |
Vector of group sizes | [[4]] |
groups | |||
unique(X) or NULL |
Unique groups (same format as input, except for fgroup_by which uses a plain list, sorted if sort = TRUE ), or NULL if return.groups = FALSE |
[[5]] |
||||
group.vars | character |
The names of the grouping variables | [[6]] | |||
ordered | logical(2) |
[1] Whether the groups are ordered: equal to the sort argument in the default method, or TRUE if converted objects inherit a class "ordered" and NA otherwise, [2] Whether the data (X ) is already sorted: the result of !is.unsorted(group.id) . If sort = FALSE (default method) the second entry is NA . |
||||
[[7]] |
order | integer(NROW(X)) or NULL |
Ordering vector from radixorderv (with "starts" attribute), or NULL if return.order = FALSE |
|||
[[8]] | group.starts | integer(N.groups) or NULL |
||||
The first-occurrence positions/rows of the groups. Useful e.g. with ffirst(x, g, na.rm = FALSE) . NULL if return.groups = FALSE . |
List-index | Element-name | Content type |
GRP
is a central function in the collapse package because it provides, in the form of integer vectors, some key pieces of information to efficiently perform grouped operations at the C/C++
level.
Most statistical function require information about (1) the number of groups (2) an integer group-id indicating which values / rows belong to which group and (3) information about the size of each group. Provided with these, collapse's Fast Statistical Functions pre-allocate intermediate and result vectors of the right sizes and (in most cases) perform grouped statistical computations in a single pass through the data.
The sorting functionality of GRP.default
lets groups receive different integer-id's depending on whether the groups are sorted sort = TRUE
(FALSE
gives first-appearance order), and in which order (argument decreasing
). This affects the order of values/rows in the output whenever an aggregation is performed.
Other elements in the object provide information about whether the data was sorted by the variables defining the grouping (6) and the ordering vector (7). These also feed into optimizations in gsplit/greorder
that benefit the execution of base R functions across groups.
Complimentary to GRP
, the function fgroup_by
is a significantly faster and class-agnostic alternative to dplyr::group_by
for programming with collapse. It creates a grouped data frame with a 'GRP' object attached in a "groups"
attribute. This data frame has classes 'GRP_df', …, 'grouped_df' and 'data.frame', where … stands for any other classes the input frame inherits such as 'data.table', 'sf', 'tbl_df', 'indexed_frame' etc.. collapse functions with a 'grouped_df' method respond to 'grouped_df' objects created with either fgroup_by
or dplyr::group_by
. The method GRP.grouped_df
takes the "groups"
attribute from a 'grouped_df' and converts it to a 'GRP' object if created with dplyr::group_by
.
The 'GRP_df' class in front responds to print.GRP_df
which first calls print(fungroup(x), ...)
and prints one line below the object indicating the grouping variables, followed, in square brackets, by some statistics on the group sizes: [N | Mean (SD) Min-Max]
. The mean is rounded to a full number and the standard deviation (SD) to one digit. Minimum and maximum are only displayed if the SD is non-zero. There also exist a method [.GRP_df
which calls NextMethod
but makes sure that the grouping information is preserved or dropped depending on the dimensions of the result (subsetting rows or aggregation with data.table drops the grouping object).
GRP.default
supports vector and list input and will also return 'GRP' objects if passed. There is also a hidden method GRP.GRP
which simply returns grouping objects (no re-grouping functionality is offered).
Apart from GRP.grouped_df
there are several further conversion methods:
The conversion of factors to 'GRP' objects by GRP.factor
involves obtaining the number of groups calling ng <- fnlevels(f)
and then computing the count of each level using tabulate(f, ng)
. The integer group-id (2) is already given by the factor itself after removing the levels and class attributes and replacing any missing values with ng + 1L
. The levels are put in a list and moved to position (4) in the 'GRP' object, which is reserved for the unique groups. Finally, a sortedness check !is.unsorted(id)
is run on the group-id to check if the data represented by the factor was sorted (6). GRP.qG
works similarly (see also qG
), and the 'pseries' and 'pdata.frame' methods simply group one or more factors in the index (selected using the effect
argument) .
Creating a factor from a 'GRP' object using as_factor_GRP
does not involve any computations, but may involve interacting multiple grouping columns using the paste
function to produce unique factor levels.
radixorder
, qF
, Fast Grouping and Ordering, Collapse Overview
# NOT RUN {
## default method
GRP(mtcars$cyl)
GRP(mtcars, ~ cyl + vs + am) # Or GRP(mtcars, c("cyl","vs","am")) or GRP(mtcars, c(2,8:9))
g <- GRP(mtcars, ~ cyl + vs + am) # Saving the object
print(g) # Printing it
plot(g) # Plotting it
GRPnames(g) # Retain group names
fsum(mtcars, g) # Compute the sum of mtcars, grouped by variables cyl, vs and am
gsplit(mtcars$mpg, g) # Use the object to split a vector
gsplit(NULL, g) # The indices of the groups
identical(mtcars$mpg, # greorder and unlist undo the effect of gsplit
greorder(unlist(gsplit(mtcars$mpg, g)), g))
## Convert factor to GRP object and vice-versa
GRP(iris$Species)
as_factor_GRP(g)
# }
# NOT RUN {
<!-- % No code relying on suggested package -->
## dplyr integration
library(dplyr)
mtcars %>% group_by(cyl,vs,am) %>% GRP() # Get GRP object from a dplyr grouped tibble
mtcars %>% group_by(cyl,vs,am) %>% fmean() # Grouped mean using dplyr grouping
mtcars %>% fgroup_by(cyl,vs,am) %>% fmean() # Faster alternative with collapse grouping
mtcars %>% fgroup_by(cyl,vs,am) # Print method for grouped data frame
# }
# NOT RUN {
library(magrittr)
## Adding a column of group sizes.
mtcars %>% fgroup_by(cyl,vs,am) %>% fsummarise(Sizes = GRPN())
mtcars %>% fgroup_by(cyl,vs,am) %>% fmutate(Sizes = GRPN())
# Note: can also use n <- GRPN, or set options(collapse_mask = "all") to use n()
# Other options:
mtcars %>% fgroup_by(cyl,vs,am) %>% ftransform(Sizes = GRPN(.))
mtcars %>% ftransform(Sizes = GRPN(list(cyl,vs,am))) # Same thing, slightly more efficient
## Various options for programming and interactive use
fgroup_by(GGDC10S, Variable, Decade = floor(Year / 10) * 10) %>% head(3)
fgroup_by(GGDC10S, 1:3, 5) %>% head(3)
fgroup_by(GGDC10S, c("Variable", "Country")) %>% head(3)
fgroup_by(GGDC10S, is.character) %>% head(3)
fgroup_by(GGDC10S, Country:Variable, Year) %>% head(3)
fgroup_by(GGDC10S, Country:Region, Var = Variable, Year) %>% head(3)
# }
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