# Combining transactions from the same people on the same day

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?

• In order to help us help you, please provide a reproducible example. And mesure your time using `microbenchmark`package. Also you should try to vectorize your for loop – Emmanuel-Lin Feb 9 at 13:10
• 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")]
``````

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.