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If I have a vector of possible hours and possible items:

possible.items = c(12,13,14,15,16)
possible.hours = 0:23

And some data on customers who purchased those items at the hour they purchased them in:

frame = data.frame(id=101:105, hour=c(0,0,0,1,1), item=c(12,14,12,12,15))

How would I create a summary data frame that has a row for every possible hour, item combination filled in with the relevant number of rows from my data set?

I know how to create a summary data frame, but not one that includes rows that aren't in my original data set, "frame":

summary = aggregate(id~hour+item, data=frame, FUN=length)

I also see a way to get all possible combinations:

poss = merge(data.frame(hour=possible.hours), data.frame(item=possible.items), all=TRUE)

I am not sure how to combine the two. I also don't know if the path I am going down is correct.

I would like to get a data frame that looks like this:

hour item count
   0   12     2
   0   13     0
   0   14     1
   0   15     0
   0   16     0
   1   12     1
  23   16     0
share|improve this question
The only thing I'm not clear on is how the "count" field is generated. – Brandon Bertelsen Dec 21 '12 at 21:26
@BrandonBertelsen looks like it is the number of items sold within that hour. Row 1 in the desired output represents id values of 101 and 103. – Matthew Lundberg Dec 21 '12 at 21:42
up vote 3 down vote accepted

You are almost there. Merging by hour and item gives what you want.

With poss and summary as you have defined them:

result <- merge(poss, summary, by=c('hour','item'),all=T)
names(result)[3] <- 'count'
result$count[$count)] <- 0

> head(result)
  hour item count
1    0   12     2
2    0   13     0
3    0   14     1
4    0   15     0
5    0   16     0
6    1   12     1

As in the comment (and suggested in Brandon's answer), expand.grid is the appropriate way to generate all combinations:

poss <- expand.grid(list(hour=0:23, item=12:16))
share|improve this answer
Ah, this works! Thank you! Do you think the way I started going about it is the correct way to think about it? It seems like maybe if I didn't generate poss and summary, I could do everything in less steps. It seems like maybe it could be done with only using one total merge operation. – dubois Dec 21 '12 at 21:45
You should use expand.grid to produce poss, which would be better than merge. – Matthew Lundberg Dec 21 '12 at 21:46

This is how I would go about it using plyr

purchases <- data.frame(id = 101:105, hour = c(0,0,0,1,1), item = c(12,14,12,12,15))
results.table <- merge(expand.grid(list(hour = 0:23, item = 12:16)), purchases, by = c('hour', 'item'), all = TRUE)
summary.table <- ddply(results.table, c("hour", "item"), summarise, count = length(na.omit(id)))

This way you don't need to create the possible.* and summary table first, saving a couple of steps.

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