reshape {stats}R Documentation

Reshape Grouped Data

Description

This function reshapes a data frame between ‘wide’ format with repeated measurements in separate columns of the same record and ‘long’ format with the repeated measurements in separate records.

Usage

reshape(data, varying = NULL, v.names = NULL, timevar = "time",
        idvar = "id", ids = 1:NROW(data),
        times = seq(length = length(varying[[1]])),
        drop = NULL, direction, new.row.names = NULL,
        split = list(regexp="\.", include=FALSE))

Arguments

data a data frame
varying names of sets of variables in the wide format that correspond to single variables in long format (‘time-varying’). A list of vectors (or optionally a matrix for direction="wide"). See below for more details and options.
v.names names of variables in the long format that correspond to multiple variables in the wide format.
timevar the variable in long format that differentiates multiple records from the same group or individual.
idvar Names of one or more variables in long format that identify multiple records from the same group/individual. These variables may also be present in wide format
ids the values to use for a newly created idvar variable in long format.
times the values to use for a newly created timevar variable in long format.
drop a vector of names of variables to drop before reshaping
direction character string, either "wide" to reshape to wide format, or "long" to reshape to long format.
new.row.names logical; if TRUE and direction="wide", create new row names in long format from the values of the id and time variables.
split information for guessing the varying, v.names, and times arguments. See below for details.

Details

The arguments to this function are described in terms of longitudinal data, as that is the application motivating the functions. A ‘wide’ longitudinal dataset will have one record for each individual with some time-constant variables that occupy single columns and some time-varying variables that occupy a column for each time point. In ‘long’ format there will be multiple records for each individual, with some variables being constant across these records and others varying across the records. A ‘long’ format dataset also needs a ‘time’ variable identifying which time point each record comes from and an ‘id’ variable showing which records refer to the same person.

If the data frame resulted from a previous reshape then the operation can be reversed simply by reshape(a). The direction argument is optional and the other arguments are stored as attributes on the data frame.

If direction="long" and no varying or v.names arguments are supplied it is assumed that all variables except idvar and timevar are time-varying. They are all expanded into multiple variables in wide format.

If direction="wide" the varying argument can be a vector of column names or column numbers (converted to column names). The function will attempt to guess the v.names and times from these names. The default is variable names like x.1, x.2, where split=list(regexp="\.",include=FALSE) specifies to split at the dot and drop it from the name. To have alphabetic followed by numeric times use split=list(regexp="[A-Za-z][0-9]",include=TRUE). This splits between the alphabetic and numeric parts of the name and does not drop the regular expression.

Value

The reshaped data frame with added attributes to simplify reshaping back to the original form.

See Also

stack, aperm

Examples

summary(Indometh)
wide <- reshape(Indometh, v.names="conc", idvar="Subject",
                timevar="time", direction="wide")
wide

reshape(wide, direction="long")
reshape(wide, idvar="Subject", varying=list(names(wide)[2:12]),
        v.names="conc", direction="long")

## times need not be numeric
df <- data.frame(id=rep(1:4,rep(2,4)),
                 visit=I(rep(c("Before","After"),4)),
                 x=rnorm(4), y=runif(4))
df
reshape(df, timevar="visit", idvar="id", direction="wide")
## warns that y is really varying
reshape(df, timevar="visit", idvar="id", direction="wide", v.names="x")

##  unbalanced 'long' data leads to NA fill in 'wide' form
df2 <- df[1:7,]
df2
reshape(df2, timevar="visit", idvar="id", direction="wide")

## Alternative regular expressions for guessing names
df3 <- data.frame(id=1:4, age=c(40,50,60,50), dose1=c(1,2,1,2),
                  dose2=c(2,1,2,1), dose4=c(3,3,3,3))
reshape(df3, direction="long", varying=3:5,
        split=list(regexp="[a-z][0-9]", include=TRUE))

## an example that isn't longitudinal data
state.x77 <- as.data.frame(state.x77)
long <- reshape(state.x77, idvar="state", ids=row.names(state.x77),
                times=names(state.x77), timevar="Characteristic",
                varying=list(names(state.x77)), direction="long")

reshape(long, direction="wide")

reshape(long, direction="wide", new.row.names=unique(long$state))

## multiple id variables
df3 <- data.frame(school=rep(1:3,each=4), class=rep(9:10,6),
                  time=rep(c(1,1,2,2),3),
score=rnorm(12))
wide <- reshape(df3, idvar=c("school","class"), direction="wide")
wide
## transform back
reshape(wide)


[Package stats version 2.5.0 Index]