R newbie here I have data that looks something like this:

{'id': 19847005, 'profile_sidebar_fill_color': u'http://pbs.foo.com/profile_background', 'profile_text_color': u'333333', 'followers_count': 1105, 'location': u'San Diego, CA', 'profile_background_color': u'9AE4E8', 'listed_count': 43, '009', 'time_zone': u'Pacific Time (US & Canada)', 'protected': False}

I want to extract the location data from this text: San Diego, CA.

I have been trying to use this stringr package to accomplish this, but can't quite get the regex right to capture the city and state. Sometimes state will be present, other times not present.

location_pattern <- "'location':\su'(\w+)'"
rawdata$location <- str_extract(rawdata$user, location_pattern)
  • This looks like a JSON string. Why don't you use fromJSON(...) in package rjson for this?? – jlhoward Dec 30 '14 at 20:08
  • @jlhoward. why you always using (somewhat dramatically) double question marks? – David Arenburg Dec 30 '14 at 20:10
  • Force of habit. – jlhoward Dec 30 '14 at 20:15
  • Just wondering, is this an actual example? The clause: 'listed_count': 43, '009', ... isn't valid json. – jlhoward Dec 30 '14 at 20:19
  • @jlhoward this is abbreviated json for simplicity. – lmcshane Dec 30 '14 at 20:41

You could try

str_extract_all(str1, perl("(?<=location.: u.)[^']+(?=')"))[[1]]
#[1] "San Diego, CA"
  • That's a nice look-behind/ahead combination there – David Arenburg Dec 30 '14 at 20:17
  • @DavidArenburg Thanks, but it is not clear whether the pattern is similar or not in the original dataset. – akrun Dec 30 '14 at 20:18
  • @akrun, if I wanted to extract the output as a dataframe, how would I do this? – lmcshane Dec 30 '14 at 20:40
  • @user3813578 But that was not the original question. I was away, but I guess you already got another answer regarding extracting as a data.frame. When you post a question, please be clear. – akrun Dec 31 '14 at 3:39

Others have given possible solutions, but not explained what likely went wrong with your attempt.

The str_extract function uses POSIX extended regular expressions that do not understand \w and \s, those are specific to Perl regular expressions. You can use the perl function in the stringr package instead and it will then recognize the shortcuts, or you can use [[:space:]] in place of \s and [[:alnum:]_] in place of \w though more likely you will want something like [[:alpha], ] or [^'].

Also, R's string parser gets a shot at the string before it is passed to the matching function, therefore you will need \\s and \\w if you use the perl function (or other regular expressions function in R). the first \ escapes the second so that a single \ remains in the string to be interpreted as part of the regular expression.

  • thank you! I've been confused about perl functioning for quite a while! – lmcshane Dec 30 '14 at 23:10
  • There were also some encoding issues that I'm not real strong at explaining. u' and '009' for example. I believe '009' is unicode for a line break? I tried enc2utf8 but it made no difference. – Rich Scriven Dec 30 '14 at 23:17

It looks like a json string, but if you're not too concerned about that, then perhaps this would help.


ss <- stri_split_regex(x, "[{}]|u?'|(, '(009')?)|: ", omit=TRUE)[[1]]
(m <- matrix(ss, ncol = 2, byrow = TRUE))
#      [,1]                         [,2]                                   
# [1,] "id"                         "19847005"                             
# [2,] "profile_sidebar_fill_color" "http://pbs.foo.com/profile_background"
# [3,] "profile_text_color"         "333333"                               
# [4,] "followers_count"            "1105"                                 
# [5,] "location"                   "San Diego, CA"                        
# [6,] "profile_background_color"   "9AE4E8"                               
# [7,] "listed_count"               "43"                                   
# [8,] "time_zone"                  "Pacific Time (US & Canada)"           
# [9,] "protected"                  "False"                            

So now you have the ID names in the left column and the values on the right. It would probably be simple to reassemble the json from this point if need be.

Also, regarding the json-ness, we can coerce m to a data.frame (or leave it as a matrix), and then use jsonlite::toJSON

json <- toJSON(setNames(as.data.frame(m), c("ID", "Value")))
#                           ID                                 Value
# 1                         id                              19847005
# 2 profile_sidebar_fill_color http://pbs.foo.com/profile_background
# 3         profile_text_color                                333333
# 4            followers_count                                  1105
# 5                   location                         San Diego, CA
# 6   profile_background_color                                9AE4E8
# 7               listed_count                                    43
# 8                  time_zone            Pacific Time (US & Canada)
# 9                  protected                                 False

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