Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

This is my first post, both as an R and StackOverflow newbie. Please be gentle :).

I am looking for the R-"way" of doing the following.

I use rmongodb to read this data structure from Mongo:

items : {
      itemId : "some_unique_one"
    , interactions : [ {
          {
                type : "purchase"
              , additional-data : {
                  amount : XYZ
                 < MORE PROPERTIES HERE, SOME NESTED >
              }
          }
      } ]
}

Using this snippet to compose my list of items in R:

cur <- mongo.find(m, ns=where, query=q)
  items <- list()
  while(mongo.cursor.next(cur)) {
    b <- mongo.cursor.value(cur)
    itemId <- mongo.bson.value(b, "itemId")
    interactions <- mongo.bson.value(b, "interactions")

    items <- c(items, list(list(itemId=itemId, interactions=interactions)))
  }

I get a character-indexed list that matches my structure. I can't seem to navigate easily using the $ operator (the string-based '0' indices can be used for a list?):

[[105]]
[[105]]$itemId
[1] "bruno_487"

[[105]]$interactions
[[105]]$interactions$`0`
[[105]]$interactions$`0`$type
[1] "email"

[[105]]$interactions$`0`$timestamp
[1] "2012-09-07 18:38:19 EDT"

[[105]]$interactions$`0`$`additional-data`
email-id email-action 
     "3"   "received"
......
[[105]]$interactions$`9`
[[105]]$interactions$`9`$type
[1] "purchase"

[[105]]$interactions$`9`$timestamp
[1] "2012-04-10 18:38:19 EDT"

[[105]]$interactions$`9`$`additional-data`
[[105]]$interactions$`9`$`additional-data`$amount
[1] 241.8

[[105]]$interactions$`9`$`additional-data`$`line-items`
[[105]]$interactions$`9`$`additional-data`$`line-items`$`0`
[[105]]$interactions$`9`$`additional-data`$`line-items`$`0`$name
[1] "Product C"

For example, I want to get the mean purchases per item. To that end, I need to unroll this complicated structure into a single list of amounts, and only for "purchase" type actions. Interactions with other type attributes should be ignored. I'd then feed that list to mean() and get my result.

There has to be a better, more idiomatic solution than the one I produced below, and that's the part I need help/suggestions with. Using unlist() feels particularly clunky.

meanValue = function(items) {
  meanVal<-lapply(items, 
      function(item) {
        amts <- lapply(item$interactions, function(interactions){
             if(interactions['type']=='purchase') {
                interactions$`additional-data`$amount
              } 
            })
        m<-mean(unlist(amts, use.names=F))
        list(itemId=item$itemId, meanValue=m)
      })

  return(meanVal)
}

Thanks in advance for your help and suggestions!

EDIT:

The output of dput(head()) is:

list(structure(list(customerId = "paul_7", meanValue = 134.4), .Names = c("customerId", 
"meanValue")), structure(list(customerId = "charles_8", meanValue = 163.15), .Names = c("customerId", "meanValue")), structure(list(customerId = "esteban_10", meanValue = 100.283333333333), .Names = c("customerId", "meanValue")), structure(list(customerId = "kirsty_12", meanValue = 105.4), .Names = c("customerId", "meanValue")), structure(list(customerId = "emilia_14", meanValue = 107.075), .Names = c("customerId", "meanValue")), structure(list(customerId = "kyle_21", meanValue = 150.85), .Names = c("customerId", "meanValue")))
share|improve this question
1  
That's currently working for you? (I suspect not, but even if I'm wrong you should post the results of dput(head(cur)) ). –  BondedDust Feb 13 '13 at 18:45
    
It is. Updated with the output. The trick is that unlist strips away the names of the columns, but the whole algorithm feels awkward. –  Robert Cameron Feb 14 '13 at 0:02

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Browse other questions tagged or ask your own question.