# R- producing a summary calculation for each column that is dependent on aggregations at a factor level

I have a data.frame with a quantity of predictors each of type factor and a response/outcome column. I need to produce an overall measure for each predictor that is a summary of a calculation at a factor aggregated level.

I am hoping that someone could provide a rough solution on how to tackle this calculation without resorting to loops as I have done in the past.

What I've tried so far

Previously I have not performed a subsequent aggregation, and I relied on some pretty terrible R code where I loop through, producing a frequency table of goods and bads for each column, add the goods & bads totals, work out the contributions, then calculate the WoE. This results in a table per column, so I'd then have to yet again loop through to sum up each WoE and store it in a table.

Since then I have started using plyr and can do basic summary and transform actions on data but this seems far outside of the basics.

Calculation

``````Weight of Evidence (WoE) = sum ( Factor-level WoEs )
``````

Where each factor level WoE is calculated as `log(goodContribution/badContribution)` and Contributions are defined as `Number of [goods] for factor / total number of [goods]`

Example of the step by step calculation for a single column

``````example<-data.frame(colA=factor(rep(letters[1:3],4)),
colB=factor(rep(letters[4:6],4)),
colC=factor(rep(letters[8:10],4)))

wip <- as.data.frame(xtabs(formula = ~example\$colA +  outcome))
wip <- dcast(wip, example.colA ~ outcome)
wip\$goodTotal<-sum(wip\$good)
wip\$goodContribution<-wip\$good/wip\$goodTotal

outputs<-data.frame(col=c("colA"),WoE=sum(wip\$WOE))
``````

The WoE calculation comes out at 0 in the example. In real life the calculation is more complex as add a small number (0.0001) to a good or bad total if it equals 0, so that we never pass a 0 or an Inf to the log.

I have included a single step of the calculation and added the results to output. Previously, I would have looped through all columns and added the results to the outputs table to get all WoE. For simplicity I did not want a loop structure interfering with the core code I had so previously written to calculate WoE.

-
Can you just tell us what the expected output for your sample data is? There's a lot going on in your code and I think it might be helpful to give us a formula and expected result. –  Thomas Jul 29 '13 at 16:05
outputs holds the values for one column - if I'd looped through the columns, or ran the code multiple times but with different columns I would append results after substituting colB for the current column name each time. –  Steph Locke Jul 30 '13 at 6:55

Here's an approach using `data.table`. Note that I use `keyby` to order results by `outcome`, which spares me some headache later on. Also note that your input data has the unfortunate property of resulting in zero `WOE` for all entries.

``````library(data.table)
dt = data.table(example)

totals = dt[, .N, keyby = outcome]
#   outcome N
#2:    good 6

result = dt[, .N, keyby = list(colB, outcome)][,
setNames(as.list(N/totals[,N]), totals[, outcome]), by = colB][,
result
#1:    d 0.3333333 0.3333333   0
#2:    e 0.3333333 0.3333333   0
#3:    f 0.3333333 0.3333333   0
``````

(edit by OP) To make the code work on all rows and return a data.frame of the results use `lapply`:

``````#produce a list of results
result <- lapply(names(dt), function(colname){dt[,.N,keyby=c(colname,"outcome")][
,setNames(as.list(N/totals[,N]),totals[,outcome]),by=colname][
@StephLocke just add a loop over the column names: `lapply(names(dt), function(colname) {dt[, .N, keyby = c(colname, "outcome")...})` –  eddi Jul 30 '13 at 14:20
@StephLocke thanks for the edit - I replaced the last `do.call(rbind` by a much better and faster `data.table` function. You can also avoid a couple of steps in the `results`, but this has more educational value. –  eddi Jul 30 '13 at 20:47