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I'm having a little trouble creating a new variable using a command within the ineq() library, which calculates a Gini coefficient. The vector I give the ineq command is a list of the columns I'm interested in. I want to run this command for each individual row and then append the new variable.

When I attempt this as a loop or using a ddply (which I'm just learning now), the output is the same Gini score (for the entire data set) for each row.

How can I run this command for each individual row? Thanks in advance!

library(ineq)
df <- data.frame( user = 1:5, v1 = c(2,4,6,8,10), v2 = c(1,5,11,5,1), v3 = c(3,1,2,7,9))

for (i in nrow(df)) {
  df$gini <- ineq(c(df$v1, df$v2, df$v3))
}

myGini <- ddply(df, .(user), gini=ineq(c(v1, v2, v3)))
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2 Answers 2

up vote 0 down vote accepted

I am not familiar with this package or the function, but the function you are looking for is probably apply():

df <- data.frame( user = 1:5, v1 = c(2,4,6,8,10), v2 = c(1,5,11,5,1), v3 = c(3,1,2,7,9))
df$gini <- apply(df[,-1],1,ineq)

EDIT:

Also, the reason why your loop did not work was twofold, first you need to use indexing inside the loop, second you need to loop for a vector: 1:nrow(df) instead of just nrow(df):

df <- data.frame( user = 1:5, v1 = c(2,4,6,8,10), v2 = c(1,5,11,5,1), v3 = c(3,1,2,7,9))

for (i in 1:nrow(df)) {
  df$gini[i] <- ineq(c(df$v1[i], df$v2[i], df$v3[i]))
}
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the code above will include the user column in the ineq calculation, which isn't what the OP is after I don't think. You could modify your code to df$gini <- apply(df[, -1],1,ineq) to calculate ineq on v1 v2 and v3. –  Chase Feb 14 '11 at 22:15
    
I guess I edited this when you were typing the comment (or the other way around) :) –  Sacha Epskamp Feb 14 '11 at 22:17
    
Thanks for showing me a solution for both loops and apply()! –  david h Feb 15 '11 at 3:54

You were very close with what you had previously. You were missing the argument transform which adds columns to an existing data frame. summarise is another handy function to use with the plyr functions.

myGini <- ddply(df, .(user), transform, gini=ineq(c(v1, v2, v3)))

Alternatively, you can treat your data.frame as an array and operate on a row by row basis:

adply(df, 1, transform, gini = ineq(c(v1, v2, v3)))

or

adply(df, 1, function(x) gini = ineq(x[-1]))
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I am not that familiar with plyr, is adply the same as apply but for arrays? Or are there differences in speed as well? –  Sacha Epskamp Feb 14 '11 at 22:21
3  
@Sacha - I'm going to defer to the website and specifically the intro guide for the specifics, but in my opinion - the benefits of the plyr package are that you can explicitly define the input and output types. I often find myself futzing around with the base apply family trying to coerce to and from lists, etc. I'm not in the know about any performance benefits, but I don't recall anyone saying the plyr is SLOWER than the base apply functions, so I don't think you'd be losing any performance. –  Chase Feb 14 '11 at 22:33
    
Looks nice, thanks! –  Sacha Epskamp Feb 14 '11 at 22:41
    
Success! Thanks for showing me these variations. –  david h Feb 15 '11 at 3:52
    
Also, performance is the last thing you should be optimising, not the first. You code will double in speed in 18 months, but it won't get any easier to understand. –  hadley Feb 15 '11 at 21:57

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