# how can I normalize data frame values by the sum (get percents)

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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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`:

``````set.seed(123)
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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