I have string like this:
years<-c("20 years old", "1 years old")
I would like to grep only the numeric number from this vector. Expected output is a vector:
c(20, 1)
How do I go about doing this?
How about
# pattern is by finding a set of numbers in the start and capturing them
as.numeric(gsub("([0-9]+).*$", "\\1", years))
or
# pattern is to just remove _years_old
as.numeric(gsub(" years old", "", years))
or
# split by space, get the element in first index
as.numeric(sapply(strsplit(years, " "), "[[", 1))
.*
necessary? If you want them at the start, why not use ^[[:digit:]]+
?
Commented
Jan 27, 2013 at 2:13
.*
is necessary as you need to match the entire string. Without that, nothing is removed. Also, note that sub
can be used here instead of gsub
.
Commented
Jan 27, 2013 at 2:20
gsub(".*?([0-9]+).*", "\\1", years)
gsub(".*?([0-9]+).*?", "\\1", "Jun. 27–30")
Result: [1] "2730" gsub(".*?([0-9]+)\\-.*?", "\\1", "Jun. 27–30")
Result: [1] "Jun. 27–30"
Commented
Jun 5, 2019 at 21:45
Update
Since extract_numeric
is deprecated, we can use parse_number
from readr
package.
library(readr)
parse_number(years)
Here is another option with extract_numeric
library(tidyr)
extract_numeric(years)
#[1] 20 1
parse_number
does not play with negative numbers. Try parse_number("–27,633")
readr::parse_number("-12,345") # [1] -12345
Commented
Apr 23, 2019 at 11:29
Update
if you noticed that
I think that substitution is an indirect way of getting to the solution. If you want to retrieve all the numbers, I recommend gregexpr
:
matches <- regmatches(years, gregexpr("[[:digit:]]+", years))
as.numeric(unlist(matches))
If you have multiple matches in a string, this will get all of them. If you're only interested in the first match, use regexpr
instead of gregexpr
and you can skip the unlist
.
gregexpr
. I hadn't tried regexpr
until just now. HUGE difference. Using regexpr
puts it between Andrew's and Arun's solutions (second fastest) on a 1e6 set. Perhaps also interesting, using sub
in Andrew's solution does not improve the speed.
Commented
Jan 27, 2013 at 16:42
"-?[[:digit:]]+(\\.[[:digit:]]+)?"
I believe will account for negative numbers and decimals
Commented
Oct 24, 2022 at 16:47
Or simply:
as.numeric(gsub("\\D", "", years))
# [1] 20 1
\\D
is a metacharacter that matches non-digit characters: w3schools.com/jsref/jsref_regexp_digit_non.asp
Commented
Jan 12, 2023 at 19:38
Here's an alternative to Arun's first solution, with a simpler Perl-like regular expression:
as.numeric(gsub("[^\\d]+", "", years, perl=TRUE))
as.numeric(sub("\\D+","",years))
. If there were letters before and |or after, then gsub
We can also use str_extract
from stringr
years<-c("20 years old", "1 years old")
as.integer(stringr::str_extract(years, "\\d+"))
#[1] 20 1
If there are multiple numbers in the string and we want to extract all of them, we may use str_extract_all
which unlike str_extract
returns all the macthes.
years<-c("20 years old and 21", "1 years old")
stringr::str_extract(years, "\\d+")
#[1] "20" "1"
stringr::str_extract_all(years, "\\d+")
#[[1]]
#[1] "20" "21"
#[[2]]
#[1] "1"
A stringr
pipelined solution:
library(stringr)
years %>% str_match_all("[0-9]+") %>% unlist %>% as.numeric
You could get rid of all the letters too:
as.numeric(gsub("[[:alpha:]]", "", years))
Likely this is less generalizable though.
Extract numbers from any string at beginning position.
x <- gregexpr("^[0-9]+", years) # Numbers with any number of digits
x2 <- as.numeric(unlist(regmatches(years, x)))
Extract numbers from any string INDEPENDENT of position.
x <- gregexpr("[0-9]+", years) # Numbers with any number of digits
x2 <- as.numeric(unlist(regmatches(years, x)))
Using the package unglue we can do :
# install.packages("unglue")
library(unglue)
years<-c("20 years old", "1 years old")
unglue_vec(years, "{x} years old", convert = TRUE)
#> [1] 20 1
^{Created on 2019-11-06 by the reprex package (v0.3.0)}
More info: https://github.com/moodymudskipper/unglue/blob/master/README.md
After the post from Gabor Grothendieck post at the r-help mailing list
years<-c("20 years old", "1 years old")
library(gsubfn)
pat <- "[-+.e0-9]*\\d"
sapply(years, function(x) strapply(x, pat, as.numeric)[[1]])
I am interested in this question as it applies to extracting values from the base::summary()
function. Another option you might want to consider to extract values from a table is to build a function that takes any entry of your summary()
table and transforms it into a useful number. For example if you get:
(s <- summary(dataset))
sv_final_num_beneficiarios sv_pfam_rec sv_area_transf
Min. : 1.0 Min. :0.0000036 Min. :0.000004
1st Qu.: 67.5 1st Qu.:0.0286363 1st Qu.:0.010107
Median : 200.0 Median :0.0710803 Median :0.021865
Mean : 454.6 Mean :0.1140274 Mean :0.034802
3rd Qu.: 515.8 3rd Qu.:0.1527177 3rd Qu.:0.044234
Max. :17516.0 Max. :0.8217923 Max. :0.360924
you might want to extract that 1st Qu
for sv_pfam_rec
and for that read the 2nd row of the 2nd col. In order to get the formatted single value I made a function
s_extract <- function(summary_entry){
separate(as_tibble(summary_entry),
sep = ":",
col = value,
remove = FALSE,
into = c("bad", "good"))[[3]] %>%
as.numeric()
}
You just have to feed a summary entry, for example summary_entry = s[3,3]
to obtain the Median
of sv_area_transf
.
It is worth nothing that given that this function is based on separate()
it makes it easier to navigate certain cases in which the name of the variable also contains numbers
Slight variation on some other very good answers:
years <- c("20 years old", "1 years old")
as.numeric(gsub("[^0-9]", "", years))
#> [1] 20 1
^{Created on 2023-07-24 with reprex v2.0.2}
Here we use ^
at the beginning of the regex
to negate the pattern.