Learn R Programming

nlme (version 3.1-163)

gapply: Apply a Function by Groups

Description

Applies the function to the distinct sets of rows of the data frame defined by groups.

Usage

gapply(object, which, FUN, form, level, groups, ...)

Value

Returns a data frame with as many rows as there are levels in the

groups argument.

Arguments

object

an object to which the function will be applied - usually a groupedData object or a data.frame. Must inherit from class "data.frame".

which

an optional character or positive integer vector specifying which columns of object should be used with FUN. Defaults to all columns in object.

FUN

function to apply to the distinct sets of rows of the data frame object defined by the values of groups.

form

an optional one-sided formula that defines the groups. When this formula is given the right-hand side is evaluated in object, converted to a factor if necessary, and the unique levels are used to define the groups. Defaults to formula(object).

level

an optional positive integer giving the level of grouping to be used in an object with multiple nested grouping levels. Defaults to the highest or innermost level of grouping.

groups

an optional factor that will be used to split the rows into groups. Defaults to getGroups(object, form, level).

...

optional additional arguments to the summary function FUN. Often it is helpful to specify na.rm = TRUE.

Author

José Pinheiro and Douglas Bates bates@stat.wisc.edu

References

Pinheiro, J.C., and Bates, D.M. (2000) "Mixed-Effects Models in S and S-PLUS", Springer, esp. sec. 3.4.

See Also

gsummary

Examples

Run this code
## Find number of non-missing "conc" observations for each Subject
gapply( Phenobarb, FUN = function(x) sum(!is.na(x$conc)) )

# Pinheiro and Bates, p. 127 
table( gapply(Quinidine, "conc", function(x) sum(!is.na(x))) )
changeRecords <- gapply( Quinidine, FUN = function(frm)
    any(is.na(frm[["conc"]]) & is.na(frm[["dose"]])) )

Run the code above in your browser using DataLab