# Calculating subtotals (sum, stdev, average etc)

I have been searching for this for a while, but haven't been able to find a clear answer so far. Probably have been looking for the wrong terms, but maybe somebody here can quickly help me. The question is kind of basic.

Sample data set:

``````set <- structure(list(VarName = structure(c(1L, 5L, 4L, 2L, 3L),
.Label = c("Apple/Blue/Nice",
"Apple/Blue/Ugly", "Apple/Pink/Ugly", "Kiwi/Blue/Ugly", "Pear/Blue/Ugly"
), class = "factor"), Color = structure(c(1L, 1L, 1L, 1L, 2L), .Label = c("Blue",
"Pink"), class = "factor"), Qty = c(45L, 34L, 46L, 21L, 38L)), .Names = c("VarName",
"Color", "Qty"), class = "data.frame", row.names = c(NA, -5L))
``````

This gives a data set like:

``````set

VarName      Color Qty
1 Apple/Blue/Nice  Blue  45
2  Pear/Blue/Ugly  Blue  34
3  Kiwi/Blue/Ugly  Blue  46
4 Apple/Blue/Ugly  Blue  21
5 Apple/Pink/Ugly  Pink  38
``````

What I would like to do is fairly straight forward. I would like to sum (or averages or stdev) the Qty column. But, also I would like to do the same operation under the following conditions:

1. VarName includes "Apple"
2. VarName includes "Ugly"
3. Color equals "Blue"

Anybody that can give me a quick introduction on how to perform this kind of calculations?

I am aware that some of it can be done by the aggregate() function, e.g.:

``````aggregate(set[3], FUN=sum, by=set[2])[1,2]
``````

However, I believe that there is a more straight forward way of doing this then this. Are there some filters that can be added to functions like `sum()`?

-

Is this what you're looking for?

`````` # sum for those including 'Apple'
apple <- set[grep('Apple', set[, 'VarName']), ]
aggregate(apple[3], FUN=sum, by=apple[2])
Color Qty
1  Blue  66
2  Pink  38

# sum for those including 'Ugly'
ugly <- set[grep('Ugly', set[, 'VarName']), ]
aggregate(ugly[3], FUN=sum, by=ugly[2])
Color Qty
1  Blue 101
2  Pink  38

# sum for Color==Blue
sum(set[set[, 'Color']=='Blue', 3])
[1] 146
``````

The last sum could be done by using `subset`

``````sum(subset(set, Color=='Blue')[,3])
``````
-

The easiest way to to split up your `VarName` column, then subsetting becomes very easy. So, lets create an object were `varName` has been separated:

``````##There must(?) be a better way than this. Anyone?
new_set =  t(as.data.frame(sapply(as.character(set\$VarName), strsplit, "/")))
``````

Brief explanation:

• We use `as.character` because `set\$VarName` is a factor
• `sapply` takes each value in turn and applies `strplit`
• The `strsplit` function splits up the elements
• We convert to a data frame
• Transpose to get the correct rotation

Next,

``````##Convert to a data frame
new_set = as.data.frame(new_set)
##Make nice rownames - not actually needed
rownames(new_set) = 1:nrow(new_set)
new_set\$Qty = set\$Qty
``````

This gives

``````R> new_set
V1   V2   V3 Qty
1 Apple Blue Nice  45
2  Pear Blue Ugly  34
3  Kiwi Blue Ugly  46
4 Apple Blue Ugly  21
5 Apple Pink Ugly  38
``````

Now all the operations are as standard. For example,

``````##Add up all blue Qtys
sum(new_set[new_set\$V2 == "Blue",]\$Qty)
[1] 146

##Average of Blue and Ugly Qtys
mean(new_set[new_set\$V2 == "Blue" & new_set\$V3 == "Ugly",]\$Qty)
[1] 33.67
``````

Once it's in the correct form, you can use `ddply` which does every you want (and more)

``````library(plyr)
##Split the data frame up by V1 and take the mean of Qty
ddply(new_set, .(V1), summarise, m = mean(Qty))

##Split the data frame up by V1 & V2 and take the mean of Qty
ddply(new_set, .(V1, V2), summarise, m = mean(Qty))
``````
-
Very good explanation +1. – Jilber Sep 27 '12 at 10:24
Thank you for the explaination. While studying I discovered a few things. This seems to give a NaN answer: " mean(new_set[new_set\$V2 == "Blue" && new_set\$V3 == "Ugly",]\$Qty)". Unsure why this is happening. – Jochem Sep 27 '12 at 11:33
@Jochem Opps, I had `&&` instead of `&`. `&&` doesn't play nice with vectors. – csgillespie Sep 27 '12 at 13:39