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Basically what I need to perform is to transform my country variables into per capita terms, i.e. divide all values by the country's population.

So I have df:

country <- c("A","B","C","D")
income <- c(10,20,30,40)
cars <- c(100,200,300,400)
df <- data.frame(country,income,cars)

And I want to divide all columns by dfpop$pop

pop <- c(1,2,3,4)

dfpop <- data.frame(country,pop)

any ideas?

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2  
Without some reproducible data and code, its hard to say how best to do this. Please edit your question accordingly using something like dput(head(Y)). However, my guess would be you should add the column of population to data.frame y and proceed from there – Justin Aug 23 '12 at 14:44
3  
Look at merge – Luciano Selzer Aug 23 '12 at 14:48
up vote 1 down vote accepted

Since you only have one observation per country there's not need of aggregating data, just a division using df/variable

Taking into account merge pointed out above by @lselzer you can try:

 DF <- merge(df, dfpop)
 DF[,-c(1,4)]/DF[,4]
  income cars
1     10  100
2     10  100
3     10  100
4     10  100

But also without using merge:

df[,-1]/pop
  income cars
1     10  100
2     10  100
3     10  100
4     10  100

The advantage of using merge is the matching of country names, this will ensure that you're dividing each variable of country A by the population of country A. The second approach does not ensures the matching of country variables, so you have to take care using this approach.

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