Calculate “group characteristics” without ddply and merge

I wonder whether there is a more straighforward way to calculate a certain type of variables than the approach i normally take....

The example below probably explains it best. I have a dataframe with 2 columns (fruit and whether the fruit is rotten or not). I would like to, for each row, add e.g. the percentage of fruit of the same category that is rotten. For example, there are 4 entries for apples, 2 of them are rotten, so each row for apple should read 0.5. The target values (purely as illustration) are included in the "desired outcome" column.

I have previously approached this problem by * using the "ddply" command on the fruit variable (with sum/lenght as function), creating a new 3*2 dataframe * use the "merge" command to link these values back into the old dataframe.

This feels like a roundabout way, and I was wondering whether there are better/faster way of doing this! ideallly a generic approach, that is easily adjusted if one instead of the percentage needs to determine whether e.g. all fruits are rotten, any fruits are rotten, etc. etc. etc....

W

``````    Fruit Rotten Desired_Outcome_PercRotten
1   Apple      1                        0.5
2   Apple      1                        0.5
3   Apple      0                        0.5
4   Apple      0                        0.5
5    Pear      1                       0.75
6    Pear      1                       0.75
7    Pear      1                       0.75
8    Pear      0                       0.75
9  Cherry      0                          0
10 Cherry      0                          0
11 Cherry      0                          0

#create example datagram; desired outcome columns are purely inserted as illustrative of target outcomes
Fruit=c(rep("Apple",4),rep("Pear",4),rep("Cherry",3))
Rotten=c(1,1,0,0,1,1,1,0,0,0,0)
Desired_Outcome_PercRotten=c(0.5,0.5,0.5,0.5,0.75,0.75,0.75,0.75,0,0,0)
df=as.data.frame(cbind(Fruit,Rotten,Desired_Outcome_PercRotten))
df
``````
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Related discussion on the first part of your question: stackoverflow.com/q/11562656/636656 . Answers below are nicer because they combine the split-apply-combine operation with the merging in a single step. –  Ari B. Friedman Mar 18 '13 at 0:59
user1885116, use `df <- data.frame(Fruit, Rotten, Desired_Outcome_PercRotten)` to create a `data.frame` from scratch instead of `as.data.frame` with `cbind`. It gets the column `Rotten` as factor, which is undesirable. –  Arun Mar 18 '13 at 13:06

You can do this with just `ddply` and `mutate`:

``````# changed summarise to transform on joran's suggestion
# changed transform to mutate on mnel's suggestion :)
ddply(df, .(Fruit), mutate, Perc = sum(Rotten)/length(Rotten))

#     Fruit Rotten Perc
# 1   Apple      1 0.50
# 2   Apple      1 0.50
# 3   Apple      0 0.50
# 4   Apple      0 0.50
# 5  Cherry      0 0.00
# 6  Cherry      0 0.00
# 7  Cherry      0 0.00
# 8    Pear      1 0.75
# 9    Pear      1 0.75
# 10   Pear      1 0.75
# 11   Pear      0 0.75
``````
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I would also suggest `mutate` (the `plyr` implementation of `transform` which allows you to refer to created columns eg `ddply(df ,.(Fruit), mutate, percR = sum(Rotten) / length(Rotten), pp = Rotten *percR)` compared to `ddply(dd ,.(Fruit), transform, percR = sum(Rotten) / length(Rotten), pp = Rotten *percR)` –  mnel Mar 18 '13 at 0:45
@mnel (+1) for the nice and handy usage of `mutate`. I've resorted to `function(x) { . }` form because I had to use the previously calculated values within `plyr` before. –  Arun Mar 18 '13 at 13:07

`data.table` is super fast as it updates by reference. What about using it?

``````library(data.table)

dt=data.table(Fruit,Rotten,Desired_Outcome_PercRotten)

dt[,test:=sum(Rotten)/.N,by="Fruit"]
#dt
#     Fruit Rotten Desired_Outcome_PercRotten test
# 1:  Apple      1                       0.50 0.50
# 2:  Apple      1                       0.50 0.50
# 3:  Apple      0                       0.50 0.50
# 4:  Apple      0                       0.50 0.50
# 5:   Pear      1                       0.75 0.75
# 6:   Pear      1                       0.75 0.75
# 7:   Pear      1                       0.75 0.75
# 8:   Pear      0                       0.75 0.75
# 9: Cherry      0                       0.00 0.00
#10: Cherry      0                       0.00 0.00
#11: Cherry      0                       0.00 0.00
``````
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One solution in base R is to use `ave`.

``````within(df, {
## Because of how you've created your data.frame
##   Rotten is actually a factor. So, we need to
##   convert it to numeric before we can use mean
Rotten <- as.numeric(as.character(Rotten))
NewCol <- ave(Rotten, Fruit)
})
Fruit Rotten Desired_Outcome_PercRotten NewCol
1   Apple      1                        0.5   0.50
2   Apple      1                        0.5   0.50
3   Apple      0                        0.5   0.50
4   Apple      0                        0.5   0.50
5    Pear      1                       0.75   0.75
6    Pear      1                       0.75   0.75
7    Pear      1                       0.75   0.75
8    Pear      0                       0.75   0.75
9  Cherry      0                          0   0.00
10 Cherry      0                          0   0.00
``````

or shorter:

``````transform(df, desired = ave(Rotten == 1, Fruit))
``````

The default function applied with `ave` is `mean`, hence I have not included it here. However, you could specify a different function by appending `FUN = some-function-here` if you wanted to do something different.

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As `ave` is already out, let me add one solution using my base R function of choice: `aggregate`.

You can get the desired data simply with:

``````aggregate(as.numeric(as.character(Rotten)) ~ Fruit, df, mean)
``````

However, you will need to still `merge` it afterwards (or in one piece):

``````merge(df, aggregate(as.numeric(as.character(Rotten)) ~ Fruit, df, mean))
``````
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