2

This question already has an answer here:

I'm trying to convert a table like this:

# A tibble: 10 x 2
   user_id        pred
     <int>      <fctr>
1       27 electronics
2       27        home
3       38      health
4       60 electronics
5       60      beauty
6       92        home
7       92 electronics
8      106      health
9      117        home
10     117       women

to one that looks like this:

# A tibble: 6 x 3
  user_id      pred_1      pred_2
    <dbl>       <chr>       <chr>
1      27 electronics        home
2      38      health          NA
3      60 electronics      beauty
4      92        home electronics
5     106      health          NA
6     117        home       women

i.e. a row per user_id and an expansion of the pred column into pred_1, pred_2, etc. Any ideas?

UPDATE

Initial question was solved. Follow up:

Using the tidyr::spread method, is there a way to cap the group_size to N so that, when spreading, it takes at most N values from each group?

marked as duplicate by David Arenburg r Aug 1 '16 at 18:56

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • 3
    Or using the devel version of data.table library(data.table) ; dcast(setDT(df), user_id ~ rowid(user_id)) – David Arenburg Aug 1 '16 at 18:52
  • Thanks everyone, but I don't really see how this is a duplicate of the other question. If anything, this is a much more succinct way of exposing tidyr::spread's functionality – Nick Resnick Aug 1 '16 at 19:19
  • The solution there is identical. And there are dozens of similar solutions all over SO while many of them posted by same user. You can check some of them here and here – David Arenburg Aug 1 '16 at 19:20
  • ok. I have an updated question (as well as a separate issue with the answer commented below). – Nick Resnick Aug 1 '16 at 20:47
2

We create a sequence column after grouping by 'user_id' and then spread from 'long' to 'wide'.

library(dplyr)
library(tidyr)
df1 %>%
     group_by(user_id) %>%
     mutate(id = paste0("pred_", row_number()), 
             id = factor(id, levels = unique(id))) %>%
     spread(id, pred)
#    user_id      pred_1      pred_2
#     <int>       <chr>       <chr>
#1      27 electronics        home
#2      38      health        <NA>
#3      60 electronics      beauty
#4      92        home electronics
#5     106      health        <NA>
#6     117        home       women

Or we can use dcast from data.table

library(data.table)#1.9.7+
dcast(setDT(df1), user_id~paste0("pred_", rowid(user_id)), value.var = "pred")
  • I'm running into (what I deem to be) an error where the pred_ values aren't in order. for example: the order of my columns goes pred_1, pred_10, pred_11, ... and so on. pred_2 is in column 48 – Nick Resnick Aug 1 '16 at 20:32
  • @NickResnick I updated the post for dplyr/tidyr. Please check if it helps. – akrun Aug 2 '16 at 2:28
  • thanks! can you also answer the updated question? Specifically, can you choose the number of columns it creates to be a number less than max_grouping? – Nick Resnick Aug 2 '16 at 18:27
  • @NickResnick Can you post that as a new question as this got dupe tagged and it seems like an interesting question. – akrun Aug 2 '16 at 18:28
  • I just did. Also, I'm getting another error here where the same user_id is appearing in multiple rows, with only a partial amount of their preds in each row? – Nick Resnick Aug 2 '16 at 18:39

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