Let's imagine you're dealing with something like:
mydf <- data.frame(
V1 = c("peanut butter sandwich", "peanut butter and jam sandwich"),
V2 = c("2 slices of bread 1 tablespoon peanut butter",
"2 slices of bread 1 tablespoon peanut butter 1 tablespoon jam"))
mydf
## V1
## 1 peanut butter sandwich
## 2 peanut butter and jam sandwich
## V2
## 1 2 slices of bread 1 tablespoon peanut butter
## 2 2 slices of bread 1 tablespoon peanut butter 1 tablespoon jam
You can first add in a delimiter that you don't expect in "V2", and use cSplit
from my "splitstackshape" to get the "long" dataset format.
library(splitstackshape)
mydf$V2 <- gsub(" (\\d+)", "|\\1", mydf$V2)
cSplit(mydf, "V2", "|", "long")
## V1 V2
## 1: peanut butter sandwich 2 slices of bread
## 2: peanut butter sandwich 1 tablespoon peanut butter
## 3: peanut butter and jam sandwich 2 slices of bread
## 4: peanut butter and jam sandwich 1 tablespoon peanut butter
## 5: peanut butter and jam sandwich 1 tablespoon jam
The following aren't really enough to post on their own as an answer, because they are variations on @Jota's approach, but I'm sharing them here for completeness:
strsplit
within "data.table"
The split list
is automatically flattened into a single column....
library(data.table)
as.data.table(mydf)[, list(
V2 = unlist(strsplit(as.character(V2), '\\s(?=\\d)', perl=TRUE))), by = V1]
"dplyr" + "tidyr"
You can use unnest
from "tidyr" to expand the list column into a long form....
library(dplyr)
library(tidyr)
mydf %>%
mutate(V2 = strsplit(as.character(V2), " (?=\\d)", perl=TRUE)) %>%
unnest(V2)