# Select max for each variable combination in data.frame

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.

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The package `sqldf` allows you to use SQL queries on data.frames –  James Nov 18 '11 at 12:43

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
``````
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Thanks all, the plyr package works perfect and fast. –  jeroen81 Nov 18 '11 at 12:37
@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
``````
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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
``````
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