The situation: I have a dataset containing transactions (transData). Each transactions has its line, which has relevant columns: transactionID, customerID, Date and moneySpend.

Simplified example:

1; 101; 1/1/18; 42
2; 101; 1/1/18; 13
3; 102; 1/1/18; 32
4; 103; 1/1/18; 56
5; 103; 1/1/18; 85
6; 103; 2/1/18; 8
7; 101; 2/1/18; 23
8; 103; 2/1/18; 14
9; 103; 2/1/18; 35
10; 104; 2/1/18; 48

What I need: A single customer can buy multiple items per day, however each item has its own line in the transactions dataset. However, I need these transactions combined into a single one, where the moneySpend is the sum of the individual items.

Simplified example:

1; 101; 1/1/18; 55
2; 102; 1/1/18; 32
3; 103; 1/1/18; 141
4; 103; 2/1/18; 77
5; 101; 2/1/18; 23
6; 104; 2/1/18; 48

(Note: the transactionID is not important, aslong as it is unique.)

What I have done: With the ddply from the plyr package I create a table that sorts out the unqiue combination of customerId and day:

newTable <- ddply(transData, .(transData$customerID, transData$Date), nrow)

Next I sum up the transaction in a for loop:

for (i in 1:dim(newTable)[1]){ 
  trans = which(transData$customerID==newTable[i,1] & transData$Date==newTable[i,2])
  totalSpend[i]=sum(transData[trans,32:35])
}

The problem: This is way too slow for the amount of transactions needed to be processed.

Is there a way to do this (way) more efficiently?

  • 1
    In order to help us help you, please provide a reproducible example. And mesure your time using microbenchmarkpackage. Also you should try to vectorize your for loop – Emmanuel-Lin Feb 9 at 13:10
  • 1
    Could you use dput to provide reproducible example – Emmanuel-Lin Feb 9 at 13:12
  • So you want to sum your moneyspend by custumer_id? Check this stackoverflow.com/questions/1660124/… – Koot6133 Feb 9 at 13:13

In data.table, simply:

transData[, newVar := sum(moneySpend), by = c("customerID", "Date")]
up vote 0 down vote accepted

I found a solution based on some comments here using the dplyr package.

transactions = transData %>% 
   group_by(customerID,Date) %>% 
   summarise(moneySpend = sum(moneySpend))

Thanks for thinking along.

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.