# Sum of hybrid data frames depending on multiple conditions in R

This is a more complex follow-up to my previous question. The answer there was to use a matrix, but that doesn't work with data frames having values of different modes.

I want to combine data frames of different sizes, with character and integer columns, and calculate their sum depending on multiple conditions.

## Conditions

1. sums are only calculated for those rows that have a matching "Name"-value
2. sums are calculated for matching column names only
3. if a cell in `df4` is not 0 and not NA, the sum should be `df3 + df4`
4. else the sum should be `df1 + df2 + df3`

## Example

``````> df1 <- data.frame(Name=c("Joe","Ann","Lee","Dan"), "1"=c(0,1,5,2), "2"=c(3,1,0,0), "3"=c(2,0,2,2), "4"=c(2,1,3,4))
> df1
Name X1 X2 X3 X4
1  Joe  0  3  2  2
2  Ann  1  1  0  1
3  Lee  5  0  2  3
4  Dan  2  0  2  4

> df2 <- data.frame(Name=c("Joe","Ann","Ken"), "1"=c(3,4,1), "2"=c(2,3,0), "3"=c(2,4,3))
> df2
Name X1 X2 X3
1  Joe  3  2  2
2  Ann  4  3  4
3  Ken  1  0  3

> df3 <- data.frame(Name=c("Lee","Ben"), "1"=c(1,3), "2"=c(3,4), "3"=c(4,3))
> df3
Name X1 X2 X3
1  Lee  1  3  4
2  Ben  3  4  3
``````

The condition depends on this frame:

``````> df4 <- data.frame(Name=c("Lee","Ann","Dan"), "1"=c(6,0,NA), "2"=c(0,0,4), "3"=c(0,NA,0))
> df4
Name  X1  X2  X3
1   Lee   6   0   0
2   Ann   0   0  NA
3   Dan  NA   4   0
``````

With the above examples, this is the expected result (* values depend on df4):

``````> dfsum
Name  X1  X2  X3  X4
1  Joe   3   5   4   2
2  Ann   5   4   4   1
3  Lee   7*  3   6   3
4  Dan   2   4*  2   4
5  Ken   1   0   3  NA
6  Ben   3   4   3  NA
``````

## Possible steps?

First expand df1, df2, df3, df4 to 5 columns and 6 rows, fill missing data with NA.

Then for each data frame:

1. sort rows by "Name"
2. separate "Name" column from "X1"..."X4"
3. transform "X1"..."X4" columns to matrix
4. calculate sums of the matrices like in the answer to my other question but with the additional condition 1
5. transform result matrix to data frame
6. cbind the "Name" column with the result data frame

## How can this be done in R?

### Solution

@Ricardo Saporta's solution works with little changes:

Add `, padValue=NA)` in the four addCols().

As answered here, replace the definitions of sumD3D4 and dtsum with:

``````plus <- function(x) {
if(all(is.na(x))){
c(x[0],NA)} else {
sum(x,na.rm = TRUE)}
}

sumD3D4  <- setkey(rbind(dt3, dt4)[,lapply(.SD, plus), by = Name], "Name")
dtsum <- setkey(rbind(dt1, dt2, dt3)[, lapply(.SD, plus), by=Name], "Name")
``````
-
It appears that the only role of the `character`s are the names. Is that correct ? If so, you can still use the matrix method recommended and apply the strings to `rownames(mtrx)` – Ricardo Saporta Feb 23 '13 at 19:29
Also, regarding the different number of columns, would it be okay to add dummy columns to filled with 0's so that all df's are the same width? – Ricardo Saporta Feb 23 '13 at 19:46
They should be NA, but is it possible to treat NAs as 0's when calculating the sum of two matrices? – R-obert Feb 23 '13 at 20:14

If you use data.table instead of data.frame, you could use its `by=xxxx` feature, to add by name. The code below should give you your expected results.

Please note that I am padding the data.tables with extra empty columns. However, we compute `condTrue` prior to then.

``````library(data.table)
dt1 <- data.table(df1)
dt2 <- data.table(df2)
dt3 <- data.table(df3)
dt4 <- data.table(df4)

# make sure all dt's have the same columns
#-----------------------------------------#

# identify which dt4 satisfy the condition
condTrue <- as.data.table(which(!(is.na(dt4) | dt4==0), arr.ind=TRUE))

# ignore column "Name" from dt4
condTrue <- condTrue[col>1]

# convert from (row, col) index to ("Name", columnName)
condTrue <- data.table(Name=dt4[condTrue\$row, Name], colm=names(dt4)[condTrue\$col], key="Name")

# First make a list of all the unique column names
allColumnNames <- unique(c(names(dt1), names(dt2), names(dt3), names(dt4)))

sumD3D4  <- setkey(rbind(dt3, dt4)[, lapply(.SD, sum), by=Name], "Name")
dtsum    <- setkey(rbind(dt1, dt2, dt3)[, lapply(.SD, sum), by=Name], "Name")

for (Nam in condTrue\$Name) {
colsRepl <- condTrue[.(Nam)]\$colm
valsRepl <- unlist(sumD3D4[.(Nam), c(colsRepl), with=FALSE])
dtsum[.(Nam), c(colsRepl) :=  as.list(valsRepl)]
}

dtsum
#    Name 1 2 3 4
# 1:  Ann 5 4 4 1
# 2:  Ben 3 4 3 0
# 3:  Dan 2 4 2 4
# 4:  Joe 3 5 4 2
# 5:  Ken 1 0 3 0
# 6:  Lee 7 3 6 3
``````

``````addCols <- function(x, cols, padValue=0)  {
# adds to x any columns that are in cols but not in x
# Returns TRUE  if columns were added
#         FALSE if no columns added
colsMissing <- setdiff(cols, names(x))

# grab the actual DT name that was passed to function
dtName <- as.character(match.call()[2])

if (length(colsMissing)) {
@R-obert, your comment above said you wanted to treat the NA's as 0's. Note that the NA's you are looking for are present as 0's in column 4. If you would like to use NA's instead, simply add `, padValue=NA)` in the four `addCols()` statements. Note however, that it will then make all NA cols into NA's in the results. If you want the NA's to be passed only selectively, you need to add more conditional statements above. – Ricardo Saporta Feb 24 '13 at 2:39
My comment above was unclear. I would like to use NA's but it still doesn't work. Adding `, padValue=NA)` results in: `Error in [.data.table'(dtsum, .(Nam), ':='(c(colsRepl), as.list(valsRepl))): Type of RHS ('double') must match LHS ('integer'). To check and coerce would impact performance too much for the fastest cases. Either change the type of the target column, or coerce the RHS of := yourself (e.g. by using 1L instead of 1)` – R-obert Feb 24 '13 at 15:12