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 am trying to find an easy way to the last paid price for a product-customer combination.

customers <-  c("cust_a","cust_b","cust_a","cust_b")
products <- c("prod_a","prod_b","prod_a","prod_b")
dates <- c("2011/10/25","2011/09/14","2011/03/12","2011/05/06")
prices <-c("10","12","15","18")
df <- cbind(customers,products)
df <- cbind(df, dates)
df <- as.data.frame(cbind(df,prices))

Next I would like to create a new data.frame with for every customer - product combination of the price with the highest date. In this example data.frame the cust_a and prod_1 combination will give 10 and the cust_b and prod_2 will give 12.

I know how to do this in SQL, but in this case a SQL solution is not an option for me.

share|improve this question
1  
The package sqldf allows you to use SQL queries on data.frames –  James Nov 18 '11 at 12:43

3 Answers 3

up vote 6 down vote accepted

You can use the plyr package for this type of problem:

library(plyr)

dat = data.frame(
  customers =  c("cust_a","cust_b","cust_a","cust_b"),
  products = c("prod_a","prod_b","prod_a","prod_b"),
  dates = c("2011/10/25","2011/09/14","2011/03/12","2011/05/06"),
  prices =c("10","12","15","18")
)

First convert the dates column to class Date using as.Date. This allows easy operation, including finding the maximum:

dat$dates <- as.Date(dat$dates)

Next, use ddply. This splits a data.frame into chunks, applies a function to each chunk and then returns a data.frame after combining all of the pieces. The function you want to apply to each chunk is subset, specifically that subset where dates==max(dates):

ddply(dat, .(customers, products), subset, dates==max(dates))

  customers products      dates prices
1    cust_a   prod_a 2011-10-25     10
2    cust_b   prod_b 2011-09-14     12
share|improve this answer
1  
Thanks all, the plyr package works perfect and fast. –  jeroen81 Nov 18 '11 at 12:37
1  
@user1053718 Glad to be of help. When you have decided which answer is most helpful, remember to accept it by clicking on the tick-mark symbol. –  Andrie Nov 18 '11 at 12:41

You can do it using the plyr package. Here is the solution

# CONVERT DATES TO DATE FORMAT
df <- transform(df, dates = as.Date(dates, "%Y/%m/%d"))

# FOR CUSTOMER-PRODUCT COMBINATION, EXTRACT PRICE OF MAX(DATES)
plyr::ddply(df, .(customers, products), summarize, 
  last_price = prices[which.max(dates)])

  customers products last_price
1    cust_a   prod_a         10
2    cust_b   prod_b         12
share|improve this answer

If your df is ordered by date (as I can see), than a simple split and lapply would do the job:

lapply(split(df, df$customers), function(x) x$prices[1])

If not, than order your df before the above line, or implement it in the inner function :)


Results:

> lapply(split(df, df$customers), function(x) x$prices[1])
$cust_a
[1] 10
Levels: 10 12 15 18

$cust_b
[1] 12
Levels: 10 12 15 18

> sapply(split(df, df$customers), function(x) x$prices[1])
cust_a cust_b 
    10     12 
Levels: 10 12 15 18

Update: the above example was run against only customers as in the example products has no role. But for combinations use a list as f parameter of split, eg.:

> lapply(split(df, list(df$customers, df$products)), function(x) x$prices[1])
$cust_a.prod_a
[1] 10
Levels: 10 12 15 18

$cust_b.prod_a
[1] <NA>
Levels: 10 12 15 18

$cust_a.prod_b
[1] <NA>
Levels: 10 12 15 18

$cust_b.prod_b
[1] 12
Levels: 10 12 15 18
share|improve this answer

Your Answer

 
discard

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.