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I have a data frame in R with three columns.

  1. lhs
  2. rhs
  3. conviction
example <- data.frame(lhs=c('phones', 'phones', 'phones',
                            'shoes', 'shoes', 'shoes'),
                      rhs=c('chargers', 'headphones', 'shoes',
                            'shirts', 'pants', 'socks'),
                      conviction=c(1.376, 1.259, 1.087,
                                   1.295, 1.083, 0.978))

Here's a look at the output.

output

What I want to be able to do is turn this into a data frame with one column per item in lhs and a list of lists as the second column with the format [[rhs, conviction],[rhs,conviction]]

Something like this:

enter image description here

The end goal of all of this is to have a nested JSON file.

Final JSON should resemble this:

enter image description here

Thanks for any help.

2
  • Would library(tidyr); example %>% nest(-lhs) be sufficient? Maybe more usefully, what should the resulting JSON look like? – alistaire Oct 2 '17 at 21:57
  • Thanks alistaire. I made an edit to include ideal JSON. Playing with the suggestion now. – nFrain Oct 2 '17 at 22:05
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You can use tidyverse to nest part of the data frame. This will still leave you with a nested tibble column. To convert this column to a list, you can use map and lapply like so

library(tidyverse)
ans <- example %>%
          nest(-lhs) %>%
          mutate(data = map(data, ~lapply(1:nrow(.x), function(i) .x[i,]))) %>%
          rename(rhs = data)

Here's what the rhs column looks like

ans$rhs
# [[1]]
# [[1]][[1]]
# # A tibble: 1 x 2
       # rhs conviction
    # <fctr>      <dbl>
# 1 chargers      1.376

# [[1]][[2]]
# # A tibble: 1 x 2
         # rhs conviction
      # <fctr>      <dbl>
# 1 headphones      1.259

# [[1]][[3]]
# # A tibble: 1 x 2
     # rhs conviction
  # <fctr>      <dbl>
# 1  shoes      1.087


# [[2]]
# [[2]][[1]]
# # A tibble: 1 x 2
     # rhs conviction
  # <fctr>      <dbl>
# 1 shirts      1.295

# [[2]][[2]]
# # A tibble: 1 x 2
     # rhs conviction
  # <fctr>      <dbl>
# 1  pants      1.083

# [[2]][[3]]
# # A tibble: 1 x 2
     # rhs conviction
  # <fctr>      <dbl>
# 1  socks      0.978

EDIT to return specific format of output

I realized you still get a list of tibbles with the above answer, to convert to a list of vectors, use the following (unlist added)

mutate(data = map(data, ~lapply(1:nrow(.x), function(i) unlist(.x[i,]))))
5
  • purrr::map and lapply do the same thing, so using both is confusing. Also, in R there's always a more direct route than iterating over indices. – alistaire Oct 2 '17 at 22:52
  • @alistaire I'm always confused about how to deal with the scoping of nested map statements. For instance, map(data, ~map(1:nrow(.x), ~function(i) unlist(.x[.x?,]))). How do I refer to both the outer-map .x and the inner-map .x? This is the only reason I used an inner-lapply. Thanks for any insight – CPak Oct 3 '17 at 13:40
  • @alistaire Since I am trying to iterate through a data.frame/tibble, is there a better way to iterate through the data? (I like iterators::iter but it can't be used with map). Thanks for any thoughts – CPak Oct 3 '17 at 13:41
  • If you use split, you don't need to iterate over rows: example %>% nest(-lhs, .key = 'rhs') %>% mutate(rhs = map(rhs, ~split(.x, seq(nrow(.x))))). More generally, if you're iterating over iterations, you should first consider if it's necessary (Is it vectorizable?). If so, consider modify_depth. Syntax-wise, you can do map(map, ~.x) or just use regular function notation in purrr to differentiate variables instead of the ~ style. – alistaire Oct 3 '17 at 14:20
  • @alistaire, thanks. 1: split is a better option. 2: Didn't realize I could use regular function notation. thanks for that as well. – CPak Oct 3 '17 at 14:45
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To get the requisite JSON structure, you really need a list, as a data.frame can't give you the nested structure you need. Using a bit of dplyr, you can summarise each set of grouped data into a data.frame, using the rhs as names for each value of conviction. Setting the names of the resulting list to the values of rhs and converting to JSON, you get

library(dplyr)

example <- data.frame(lhs=c('phones', 'phones', 'phones', 'shoes', 'shoes', 'shoes'),
                      rhs=c('chargers', 'headphones', 'shoes', 'shirts', 'pants', 'socks'),
                      conviction=c(1.376, 1.259, 1.087, 1.295, 1.083, 0.978))

example %>% 
    group_by(lhs) %>% 
    summarise(rest = list(as.data.frame(t(setNames(conviction, rhs))))) %>% 
    { setNames(.$rest, .$lhs) } %>% 
    jsonlite::toJSON(pretty = TRUE)
#> {
#>   "phones": [
#>     {
#>       "chargers": 1.376,
#>       "headphones": 1.259,
#>       "shoes": 1.087
#>     }
#>   ],
#>   "shoes": [
#>     {
#>       "shirts": 1.295,
#>       "pants": 1.083,
#>       "socks": 0.978
#>     }
#>   ]
#> }

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