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How do I summarize a data.table with unreliable data across multiple columns?

Specifically, given

> fields <- c("country","language")
> dt <- data.table(user=c(rep(3, 5), rep(4, 5)),
                   behavior=c(rep(FALSE,5),rep(TRUE,5)),
                   country=c(rep(1,4),rep(2,6)),
                   language=c(rep(6,6),rep(5,4)),
                   event=1:10, key=c("user",fields))
> dt
    user behavior country language event
 1:    3    FALSE       1        6     1
 2:    3    FALSE       1        6     2
 3:    3    FALSE       1        6     3
 4:    3    FALSE       1        6     4
 5:    3    FALSE       2        6     5
 6:    4     TRUE       2        5     7
 7:    4     TRUE       2        5     8
 8:    4     TRUE       2        5     9
 9:    4     TRUE       2        5    10
10:    4     TRUE       2        6     6

I want to get

   user behavior country.name country.support language.name language.support
1:    3    FALSE            1             0.8             6              1.0
2:    4     TRUE            2             1.0             5              0.8

(here the x.name is the most common x for the user and x.support is the share events where this top x was observed)

without having to go through both fields by hand like this:

> users <- dt[, sum(behavior) > 0, by=user] # have behavior at least once
> setnames(users, "V1", "behavior")
> dt.out <- dt[, .N, by=list(user,country)][, list(country[which.max(N)],max(N)/sum(N)), by=user]
> setnames(dt.out, c("V1", "V2"),  paste0("country",c(".name", ".support")))
> users <- users[dt.out]
> dt.out <- dt[, .N, by=list(user,language)][, list(language[which.max(N)], max(N)/sum(N)), by=user]
> setnames(dt.out, c("V1", "V2"),  paste0("language",c(".name", ".support")))
> users <- users[dt.out]
> users
   user behavior country.name country.support language.name language.support
1:    3    FALSE            1             0.8             6              1.0
2:    4     TRUE            2             1.0             5              0.8

The actual number of fields is 5 and I want to avoid having to repeat the same code for each field separately, and have to edit this function if I ever modify fields. Please note that this is the substance of this question, the support computation was kindly explained to me elsewhere.

As in the referenced question, my data set has about 10^7 rows, so I really need a solution that scales; it would also be nice if I could avoid unnecessary copying like in users <- users[dt.out].

Thank you.

share|improve this question
    
could you explain the caluclation of x.support –  Ricardo Saporta Apr 26 '13 at 17:24
4  
Sam, you are here asking for help and you are being obnoxious and rude. I wonder if that's the best way to elicit others to spend their time on your troubles. –  Ricardo Saporta Apr 26 '13 at 19:27
1  
@RicardoSaporta, you're not the first to notice. I've chosen not to reply. –  Arun Apr 27 '13 at 13:06
1  
@sds, since we aren't communicating face-to-face, written text can be often easily misinterpreted to be rude. For example, your comment to Ricardo's (now deleted) post: first, your support numbers are wrong. second, the whole point of my question is .... Is this how you address someone who tries to help you out? Because it just sounds rude to me. You can start with a Thank you, but... or I think you may have misinterpreted the question, what I'm hoping for is.... I assume you're a native English speaker? This is basic etiquette (not just online). It's much easier to be nice and polite. –  Arun May 3 '13 at 10:32
2  
@Arun: no, English is not my native tongue. I guess you are right, those words were rude. Sorry. –  sds May 3 '13 at 12:49

2 Answers 2

up vote 4 down vote accepted

Does this solve your problem?

fields <- c("country","language")
dt <- data.table(user=c(rep(3, 5), rep(4, 5)),
           behavior=c(rep(FALSE,5),rep(TRUE,5)),
           country=c(rep(1,4),rep(2,6)),
           language=c(rep(6,6),rep(5,4)),
           event=1:10, key=c("user",fields))

CalculateSupport <- function(dt, name) {
  x <- dt[, .N, by = eval(paste0('user,', name))]
  setnames(x, name, 'name')
  x <- x[, list(name[which.max(N)], max(N)/sum(N)), by = user]
  setnames(x, c('V1', 'V2'), paste0(name, c(".name", ".support")))
  x
}

users <- dt[, sum(behavior) > 0, by=user] 
setnames(users, "V1", "behavior")

Reduce(function(x, name) x[CalculateSupport(dt, name)], fields, users)

results in

   user behavior country.name country.support language.name language.support
1:    3    FALSE            1             0.8             6              1.0
2:    4     TRUE            2             1.0             5              0.8

P.S. Please please take Ricardo's comment to your question seriously. SO is full of wonderful people who are willing to help but you have to treat them nicely and with respect.

share|improve this answer
    
thanks for the answer. I never intend to be rude and I don't see anything rude in my questions –  sds Apr 28 '13 at 2:25

I can't do it in one expression, since I am not sure how to reuse a created field in a data.table expression. It's also probably not the most efficient way. Maybe this will make a good starting point, though.

#Find most common country and language for each user
summ.dt<-dt[,list(behavior.summ=sum(behavior)>0,
     country.name=dt[user==.BY[[1]],.N,by=country][N==max(N),country],
     language.name=dt[user==.BY[[1]],.N,by=language][N==max(N),language]),
by=user]

#Get support for each country and language for each user
summ.dt[,c("country.support","language.support"):=list(
     nrow(dt[user==.BY[[1]] & country==country.name])/nrow(dt[user==.BY[[1]]]),
     nrow(dt[user==.BY[[1]] & language==language.name])/nrow(dt[user==.BY[[1]]])
),by=user]

    user behavior.summ country.name language.name country.support language.support
1:    3         FALSE            1             6             0.8              1.0
2:    4          TRUE            2             5             1.0              0.8
share|improve this answer
    
the whole point of my question is to avoid a separate expression for each element of the fields vector –  sds Apr 26 '13 at 18:21

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