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.

I have a data frame like so

product_id view_count purchase_count
1           11         1   
2           20         3
3           5          2

I would like to transform this into a table that groups by view_count and sums the purchase_count for an interval for instance.

view_count_range total_purchase_count
0-10                 45
10-20                65

These view_count_ranges will be of fixed size. I would appreciate any suggestions on how to group ranges like this.

share|improve this question

2 Answers 2

up vote 4 down vote accepted

cut is a handy tool for this sort of thing. here's one way:

#First make some data to work with 
#I suggest you do this in the future as it makes it 
#easier to provide you with assistance.
dat <- data.frame(product_id=1:15, view_count=sample(1:20, 15, replace=T), 
    purchase_count=sample(1:8, 15, replace=T))
dat   #look at the data

#now we can use cut and aggregate by this new variable we just created
dat$view_count_range <- with(dat, cut(view_count, c(0, 10, 20)))
aggregate(purchase_count~view_count_range, dat, sum)

Which yields:

  view_count_range purchase_count
1           (0,10]             39
2          (10,20]             31
share|improve this answer

Expanding on Tyler's answer and starting with his example dat, you might find it easier and quicker to write queries like this in data.table :

> require(data.table)
> DT = as.data.table(dat)

> DT[, sum(purchase_count), by=cut(view_count,c(0,10,20))]
         cut V1
[1,] (10,20] 31
[2,]  (0,10] 39

That's it. Just one line. Easy to write, easy to read.

Notice it put the (10,20] group first. That's because by default it retains the order that each group first appears in the data (the first view_count is 11 in this data set). To sort the groups instead, change by to keyby :

> DT[, sum(purchase_count), keyby=cut(view_count,c(0,10,20))]
         cut V1
[1,]  (0,10] 39
[2,] (10,20] 31

And to name the result columns :

> DT[,list( purchase_count = sum(purchase_count) ),
     keyby=list( view_count_range = cut(view_count,c(0,10,20) ))]
     view_count_range purchase_count
[1,]           (0,10]             39
[2,]          (10,20]             31
share|improve this answer

Your Answer


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

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