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I would like to make a data.frame in R with some columns having multiple values (same number of variables for all rows). For example, here is a data frame with two columns (cars and price), note that column price has three values for each row.

cars price

F    1000,2000,3000

GM   2000, 500, 1000

The second question:

Now I want to apply the same function to each value in the price column, how can I do that? Let's say I want to create another column with doubled values of price column.

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1 Answer 1

data.frames are simply lists, and as such, they can also be lists of lists.

cars <- c("FORD", "GM")
price  <- list( c(1000, 2000, 3000),  c(2000, 500, 1000))
myDF <- data.frame(cars=cars, price=cbind(price))

myDF
#    cars            price
#  1 FORD 1000, 2000, 3000
#  2   GM  2000, 500, 1000

then to execute a function on all values of price in a given row:

# execute on ALL PRICES at once
mean(unlist(myDF$price))
#  [1] 1583.333

# execute on each set of PRICES per row: 
lapply(myDF$price, mean)
#  [[1]]
#  [1] 2000 
#    
#  [[2]]
#  [1] 1166.667

That being said, I would recomend against this approach.

It gets cummbersome and there are usually better ways to accomplish the same goal.

One alternate method is to simply use the price list as your dataset and name the elemens according to the cars column:

names(price) <- cars
price
#  $FORD
#  [1] 1000 2000 3000
#    
#  $GM
#  [1] 2000  500 1000

In this case, your *ply statements would have the names of the cars already assigned to them and it would be slightly less typing:

lapply(price, mean)
#  $FORD
#  [1] 2000
#  
#  $GM
#  [1] 1166.667

Al alternate method is to use a long data.frame or data.table:

# transforming to long: 
myDF <- data.frame("cars"=rep(cars, times=lapply(price, length)), "price"=unlist(price, use.names=FALSE))
myDF

Then you can use the by argument to execute functions across all prices in a group:

by(data=myDF$price, INDICIES=myDF$cars, FUN=mean)

# or using with:
with(myDF, by(price, cars, mean))

Here is the same approach, but using data.table (which has by built in)

library(data.table)
myDT <- data.table(myDF, key="cars")
myDT[, mean(price), by=cars]

#     cars       V1
#  1: FORD 1501.250
#  2:   GM 1166.667
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thank you very much for your time, this works great for me! –  Sergey Apr 3 '13 at 15:02
    
@Sergey, no problem. Please see the updated answer as to alternate approaches. –  Ricardo Saporta Apr 3 '13 at 15:11
    
Thank you very much Ricardo. I slightly simplified the original problem, perhaps, you can suggest a better solution if I provide more details. In my case in addition to car names F and GM I also have other attributes (one per column). For example, "F, date_arrived, weight, price(3 values as before)". But I still want to apply function to price column. Do you think a long data.frame or data.table are still the best options? Thank you. –  Sergey Apr 3 '13 at 16:08

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