# Converting a grouped continous variable into rows in R

I have a data frame with these values dummy vales and I want to do lm regression on them. One of the variables is a grouped continuous variable as shown below

``````df <- data.frame("y" = c(10, 11, 12, 13, 14),
"x" = as.factor(c("100-102", "103-105", "106-108", "109-111", "112-114")))
``````

I want to regress y~x, One way is to replace the x factors with their mean numeric values. This is easily done using regular expression.

Another way is to create the additional rows and expand your dataset so it looks like this

``````data.frame("y" = c(10, 10, 10, 11, 11, 11......),
"x" = c(100, 101, 102, 103, 104, 105......))
``````

Is there a function that will do this?

I'm thinking of first creating additional variables like x1, x2, x3 and then use reshape2 package to convert the x columns to rows.

-

A `data.table` solution. This should be really fast on large `data.frame`'s as well.

``````require(data.table)
dt <- data.table(df, key="y")
dt[, list(x=seq(sub("-.*\$", "", x), sub(".*-", "", x))),by=y]
``````

If you have more columns and you don't want each combinations while splitting by column `x`, then this is the code to use:

``````require(data.table)
dt <- data.table(df)
# get all column names except "x"
key.cols <- setdiff(names(df), "x")
# set the data.table columns to key.cols
setkeyv(dt, key.cols)
dt.out <- dt[, list(x=seq(sub("-.*\$", "", x), sub(".*-", "", x))), by = key.cols]
``````

This should give you what you expect.

-
this is an elegant and simple solution. Thanks. btw how will it scale with datasets with multiple columns. My example was a dummy dataframe. my actual dataframe has lots of numeric columns and one factor column –  MySchizoBuddy Feb 9 '13 at 23:22
just one column to split but the dataset has multiple columns, so rows for all the other columns should be repeated as well along with y –  MySchizoBuddy Feb 9 '13 at 23:29
works great with very few lines of code. Thanks –  MySchizoBuddy Feb 10 '13 at 0:14
``````require(stringr)
require(foreach)

foreach(i=1:nrow(df), .combine=rbind) %do% {
s <- as.numeric(str_extract_all(df\$x[i], "[0-9]+")[[1]])
data.frame(y=rep(df\$y[i], s[2]-s[1]+1), x=seq(s[1], s[2]))
}
``````

If your `data.frame` is really big you can go along with `%dopar%`.

-
that was quick. not big just 2500 rows. –  MySchizoBuddy Feb 9 '13 at 23:13
`%do%` and `%dopar%` are provided by `foreach` package. –  redmode Feb 9 '13 at 23:15