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I have the following data frame:

> str(df)
 'data.frame':  52 obs. of  3 variables:
  $ n    : int  10 20 64 108 128 144 256 320 404 512 ...
  $ step : Factor w/ 4 levels "Step1","Step2",..: 1 1 1 1 1 1 1 1 1 1 ...
  $ value: num  0.00178 0.000956 0.001613 0.001998 0.002975 ...

Now I would like to normalize/divide the df$value by the sum of values that belong to the same n i.e. so I can get the percentages. This doesn't work but shows what I would like to achieve. Here I precompute into dfa the sums of the values that belong to the same n and try to divide on the original df$value by the aggregated total dfa$value with matching n:

dfa <- aggregate(x=df$value, by=list(df$n), FUN=sum)
names(dfa)[names(dfa)=="Group.1"] <- "n"           
names(dfa)[names(dfa)=="x"] <- "value"
df$value <- df$value / dfa[dfa$n==df$n,][[1]]
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3 Answers 3

up vote 4 down vote accepted

I think the following works, using package data.table.

df <- data.table(df)
df[,value2 := value/sum(value),by=n]
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is it really necessary to convert to table? or otherwise can I get it back as data frame? I need it for plotting with ggplot2 ... –  Giovanni Azua Aug 27 '12 at 16:13
data.table extends data.frame, so anything you can do to a data frame you can do to a data table. You could even convert it back to a data frame after doing this operation. –  Blue Magister Aug 27 '12 at 16:15

The problem with the code you have is this line:

df$value <- df$value / dfa[dfa$n==df$n,][[1]]

The line dfa$n==df$n returns a logical vector of length max(length(df),length(dfa) which tells you for each index if the n matches. I don't think you can use that to match dfa$n to df$n.

Using base functions, you can use aggregate and merge:

dfa <- aggregate(x=df$value, by=list(df$n), FUN=sum)
names(dfa) <- c("n","sum.value") 
df2 <- merge(df,dfa,by="n",all = TRUE)
df2$value2 <- df2$value/df2$sum.value
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If the data is large, the merge step will be very slow. The data.table solution you provided first is much preferable. And to answer the OP's concern, you can always coerce back to "only" a data.frame for ggplot with as.data.frame –  Justin Aug 27 '12 at 16:32
Understood about efficiency. I suppose this answer was self-indulgent, though seeing multiple ways to do things might not be bad. It looks like OP's dataset is 52 rows, so speed doesn't seem to be a huge concern. –  Blue Magister Aug 27 '12 at 16:36
fwiw, plyr is also an elegant solution for smaller data sizes. library(plyr); ddply(df, .(n), transform, value2 = value / sum(value)) –  Justin Aug 27 '12 at 16:44
I unfortunately have little knowledge of plyr, but it does look elegant. I shall have to look into it. –  Blue Magister Aug 27 '12 at 16:49

I would use ave:

df <- data.frame(n=rep(c(2,3,6,8), each=5), value = sample(5:60, 20))
df$value_2 <- ave(df$value, list(df$n), FUN=function(L) L/sum(L))
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