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i have a data frame, which looks like this, but huge so I can't do anything manually:

   Bank  Country  KeyItem    Year    Value 
    A      AU     Income     2010     1000
    A      AU     Income     2011     1130
    A      AU     Income     2012     1160
    B      USA    Depth      2010     10000

What I want to do is create a function where I can select the Bank, the Keyitem and from which year onwards and it returns a dataframe with the values as percentage of the first value . Like this:

   Bank  Country  KeyItem    Year    Value
    A      AU     Income     2010     100
    A      AU     Income     2011     113
    A      AU     Income     2012     116

Thank you in advance!

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So what hasn't worked for you? Post the problematic code. –  AGS Nov 5 '12 at 18:10
    
when you say "from which year onwards" do you mean if you specify 2010, you want values from 2010, 2011, 2012, or just 2010? –  GSee Nov 5 '12 at 18:34
    
when i say 2010 i want 2010, 2011 and 2012. –  MarMarko Nov 5 '12 at 18:49

3 Answers 3

up vote 2 down vote accepted

Try the following approach: (df is your data frame)

Choose the criteria:

bank <- "A"
keyItem <- "Income"
year <- 2011

Create a subset:

dat <- subset(df, Bank == bank & KeyItem == keyItem & Year >= year)

Calculate percentages:

dat$Value <- dat$Value / dat$Value[1] * 100

As a function:

myfun <- function(df, bank, keyItem, year) {
   dat <- df[df$Bank == bank & df$KeyItem == keyItem & df$Year >= year, ]
   "[[<-"(dat, "Value", value = dat$Value / dat$Value[1] * 100)
}

myfun(df, "A", "Income", 2011)
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1  
ahhh. don't use subset inside a function. See stackoverflow.com/questions/9860090/… –  GSee Nov 5 '12 at 18:26
    
+1 Good point, @GSee I changed the function. –  Sven Hohenstein Nov 5 '12 at 18:28
    
I just realized. This function uses last year as the 100%. I actually want the first year. Thank you anyway. –  MarMarko Nov 5 '12 at 18:46
    
but that's an easy fix –  MarMarko Nov 5 '12 at 18:52
    
@MarMarko This function does use the first year as reference. –  Sven Hohenstein Nov 5 '12 at 19:13

I turned to use the plyr package solely for such tasks:

library( "plyr" )

ddply( df, c("Bank", "KeyItem"), function(x) {
  base <- x[ min( x$Year ) == x$Year, "Value" ]
  x$Value <- 100 * x$Value / base
  return( x[ , c("Country", "Year", "Value") ] )
})
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+1, but, the OP said the data.frame is "huge", so plyr may be unacceptably slow. –  GSee Nov 5 '12 at 18:13
    
Happend now one or two more times to me that I posted a straight-forward solution involving plyr and being corrected, that plyr is so slow. Well, if it really tends to be too slow, the OP may use any solution offered here. But from my experience, most of these solutions are less intuitive to use, involving pitfalls, which to fix a beginner will spend a multiple amount of time, than just waiting until ddplywill have done the job. –  Beasterfield Nov 5 '12 at 18:25
    
Thank you, the function is really slow. Someone might come up with a faster way, but it was very helpful. –  MarMarko Nov 5 '12 at 18:25

Here's a data.table solution which should be fast and memory efficient.

DF <- read.table(text="Bank  Country  KeyItem    Year    Value 
A      AU     Income     2010     1000
A      AU     Income     2011     1130
A      AU     Income     2012     1160
B      USA    Depth      2010     10000", header=TRUE, stringsAsFactors=FALSE)

library(data.table)
DT <- as.data.table(DF)
setkey(DT, Bank, KeyItem, Year)

DT[J("A", "Income")] #all entries where Bank is "A", and KeyItem is "Income"
DT[J("A", "Income")][Year >= 2010] #only those with year >= your year

DT[J("A", "Income")][Year >= 2010, Value/Value[1]] # result as vector
DT[J("A", "Income")][Year >= 2010, list(Value/Value[1])] # result as data.table

> DT[J("A", "Income")][Year >= 2010, pct:=list(Value/Value[1])] #result as data.table with all columns
   Bank KeyItem Country Year Value  pct
1:    A  Income      AU 2010  1000 1.00
2:    A  Income      AU 2011  1130 1.13
3:    A  Income      AU 2012  1160 1.16
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