# Calculate row means based on (partial) matching column names

I am starting with 3 large data tables (named A1,A2,A3). Each table has 4 data columns (V1-V4), 1 "Date" column that is constant across all three tables, and thousands of rows.

Here is some dummy data that approximates my tables.

A1.V1<-c(1,2,3,4)
A1.V2<-c(2,4,6,8)
A1.V3<-c(1,3,5,7)
A1.V4<-c(1,2,3,4)

A2.V1<-c(1,2,3,4)
A2.V2<-c(2,4,6,8)
A2.V3<-c(1,3,5,7)
A2.V4<-c(1,2,3,4)

A3.V1<-c(1,2,3,4)
A3.V2<-c(2,4,6,8)
A3.V3<-c(1,3,5,7)
A3.V4<-c(1,2,3,4)

Date<-c(2001,2002,2003,2004)

DF<-data.frame(Date, A1.V1,A1.V2,A1.V3,A1.V4,A2.V1,A2.V2,A2.V3,A2.V4,A3.V1,A3.V2,A3.V3,A3.V4)


So this is what my data frame ends up looking like:

  Date A1.V1 A1.V2 A1.V3 A1.V4 A2.V1 A2.V2 A2.V3 A2.V4 A3.V1 A3.V2 A3.V3 A3.V4
1 2001     1     2     1     1     1     2     1     1     1     2     1     1
2 2002     2     4     3     2     2     4     3     2     2     4     3     2
3 2003     3     6     5     3     3     6     5     3     3     6     5     3
4 2004     4     8     7     4     4     8     7     4     4     8     7     4


My goal is to calculate the row mean for each of the matching columns from each data table. So in this instance, I would want row means for all columns ending in V1, all columns ending in V2, all columns ending in V3 and all columns ending in V4.

The end result would look like this

      V1  V2  V3  V4
2001   1   2   1   1
2002   2   4   3   2
2003   3   6   5   3
2004   4   8   7   4


So my question is, how to I go about calculating row means based on a partial match in the column name?

Thanks

-
Can we assume that we cannot rely on the positional ordering of the columns? i.e. the "matching" columns may be irregularly spaced? –  joran Sep 12 '12 at 23:04
No, we can not rely on the positional ordering. And the actual data set I am working with has many more columns, so specifying column positioning would be a hassle –  Vinterwoo Sep 12 '12 at 23:07

I'm sure it can be done more elegantly, but this is one possibility that seems to work.

# declare the column names
colnames = c("V1", "V2", "V3", "V4")

# calculate the means
means = lapply(colnames, function(name) { apply(DF[,grep(name, names(DF))], 1, mean) })

# build the result
result = do.call(cbind, means)
result = as.data.frame(t(result))
rownames(result) = DF$Date  I should also describe, what I did. First, I declared the column names to be partially matched. Then, using the grep command to partially select the columns in your data frame (that matched the particular substring). The apply command calculates the means and lapply does it for all columns partially matched by the substring. Using do.call and cbind (as suggested by DWin), we concatenate individual columns. Finally, we set the column names from the Date column of the original data frame. The problem can be solved more elgantly and efficiently, see solutions by DWin and Maiasaura. - That is rather a tortuous path to completion, especially the for-loop that could be replaced by just : do.call(cbind, means) – IShouldBuyABoat Sep 13 '12 at 0:37 Reasonable suggestion, updated the post accordingly. I have used R seldom for some time now, but I still do things the hard way :). Love the solution by you and @Maiasaura, by the way. – Timo Sep 13 '12 at 2:40 add comment colnames = c("V1", "V2", "V3", "V4") sapply(colnames, function(x) rowMeans(DF [, grep(x, names(DF))] ) ) rownames(res) <- DF$Date
res
V1 V2 V3 V4
2001  1  2  1  1
2002  2  4  3  2
2003  3  6  5  3
2004  4  8  7  4


If you needed to generate the names automagically:

> unique(sapply(strsplit(names(DF)[-1], ".", fixed=TRUE), "[", 2) )
[1] "V1" "V2" "V3" "V4"

-
library(plyr)
ddply(DF, .(Date), function(x) {
foo <- melt(x, id.vars = 1)
foo$variable <- substr(foo$variable, 4, 6)
return(dcast(foo, Date ~ variable, mean))
})
Date V1 V2 V3 V4
1 2001  1  2  1  1
2 2002  2  4  3  2
3 2003  3  6  5  3
4 2004  4  8  7  4

-

You can use grep with value = T to get the appropriate names and then create call to eval within the j component of a data.table

library(data.table)
# convert to a data.table
DT <- data.table(DF)
# the indices we wish to group
.index <- paste0('V',1:3)
# a list containing the names
name_list <- mapply(grep, pattern = as.list(.index ),
MoreArgs = list(x= names(DT),value=T ), SIMPLIFY=F)
# create the expression
.e <- parse(text=sprintf('list( %s)', paste(mapply(sprintf, .index, lapply(name_list, paste, collapse = ', '),
MoreArgs = list(fmt = '%s = mean(c(%s), na.rm = T)')), collapse = ',')))

DT[, eval(.e),by=Date]

##    Date V1 V2 V3
## 1: 2001  1  2  1
## 2: 2002  2  4  3
## 3: 2003  3  6  5
## 4: 2004  4  8  7

# what .e looks like
.e
## expression(list( V1 = mean(c(A1.V1, A2.V1, A3.V1), na.rm = T),V2 = mean(c(A1.V2, A2.V2, A3.V2), na.rm = T),V3 = mean(c(A1.V3, A2.V3, A3.V3), na.rm = T)))

-
This torture seems to be induced by @Vinterwoo conflating two categorical types into one column names vector. In data.table we'd keep it in long format and then simply do: DT[,mean(var),by="A,V"]. Some of these questions I'd be tempted to answer "Why?" DWin's approach but on a data.table with with=FALSE is probably simpler. –  Matt Dowle Sep 13 '12 at 10:33
I agree completely! –  mnel Sep 13 '12 at 10:37
Great. I'd give +1 for effort and testing but, oh gosh, it's ugly! :) –  Matt Dowle Sep 13 '12 at 10:40