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I have data like that:

object category country
495647 1        RUS  
477462 2        GER  
431567 3        USA  
449136 1        RUS  
367260 1        USA  
495649 1        RUS  
477461 2        GER  
431562 3        USA  
449133 2        RUS  
367264 2        USA  
...

where one object appears in various (category, country) pairs and countries share a single list of categories.

I'd like to add another column to that, which would be a category weight per country - the number of objects appearing in a category for a category, normalized to sum up to 1 within a country (summation only over unique (category, country) pairs).

I could do something like:

aggregate(df$object, list(df$category, df$country), length)

and then calculate the weight from there, but what's a more efficient and elegant way of doing that directly on the original data.

Desired example output:

object category country weight
495647 1        RUS     .75
477462 2        GER     .5 
431567 3        USA     .5 
449136 1        RUS     .75
367260 1        USA     .25
495649 1        RUS     .75
477461 3        GER     .5
431562 3        USA     .5
449133 2        RUS     .25
367264 2        USA     .25
...

The above would sum up to one within country for unique (category, country) pairs.

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2  
probably belongs on stackoverflow –  Peter Ellis Jun 18 '12 at 10:30
1  
Some expected output data would be nice; e.g., to clarify whether the result for rows 1 and 4 should both be 50% or both be 100%. You ask for the category weight by country, directly on the original data, so that seems to imply the latter? But then it won't sum to 1 within country, iiuc. –  Matt Dowle Jun 18 '12 at 11:53
    
thanks Matthew, you are quite right - it should be 100% ( or 1 ) for rows 1 and 4. the weight should sum up to 1 within a country only accounting for unique (category, country) pairs - i'm editing the question. –  nikola Jun 18 '12 at 12:09

3 Answers 3

up vote 2 down vote accepted

Responding specifically with the final sentence in mind: "What's a more efficient and elegant way of doing that directly on the original data.", it just so happens that data.table has a new feature for this.

install.packages("data.table", repos="http://R-Forge.R-project.org")
# Needs version 1.8.1 from R-Forge.  Soon to be released to CRAN.

With your data in DT :

> DT[, countcat:=.N, by=list(country,category)]     # add 'countcat' column
    category country countcat
 1:        1     RUS        3
 2:        2     GER        1
 3:        3     USA        2
 4:        1     RUS        3
 5:        1     USA        1
 6:        1     RUS        3
 7:        3     GER        1
 8:        3     USA        2
 9:        2     RUS        1
10:        2     USA        1

> DT[, weight:=countcat/.N, by=country]     # add 'weight' column
    category country countcat weight
 1:        1     RUS        3   0.75
 2:        2     GER        1   0.50
 3:        3     USA        2   0.50
 4:        1     RUS        3   0.75
 5:        1     USA        1   0.25
 6:        1     RUS        3   0.75
 7:        3     GER        1   0.50
 8:        3     USA        2   0.50
 9:        2     RUS        1   0.25
10:        2     USA        1   0.25

:= adds a column by reference to the data and is an 'old' feature. The new feature is that it now works by group. .N is a symbol that holds the number of rows in each group.

These operations are memory efficient and should scale to large data; e.g., 1e8, 1e9 rows.

If you don't wish to include the intermediate column countcat, just remove it afterwards. Again, this is an efficient operation which works instantly regardless of the size of the table (by moving pointers internally).

> DT[,countcat:=NULL]     # remove 'countcat' column
    category country weight
 1:        1     RUS   0.75
 2:        2     GER   0.50
 3:        3     USA   0.50
 4:        1     RUS   0.75
 5:        1     USA   0.25
 6:        1     RUS   0.75
 7:        3     GER   0.50
 8:        3     USA   0.50
 9:        2     RUS   0.25
10:        2     USA   0.25
> 
share|improve this answer
    
it is indeed elegant and efficient solution, thank you! One note: I wasn't familiar with data.table package and found that 1./ the R-project.org repository requires R > 2.15 and 2./ DT must be a data.table - so I had to do DT = data.table(DT) on my original data frame. –  nikola Jun 18 '12 at 15:05
    
As an infrequent user of data.table, I am sometimes confused by the different ways to accomplish things and I often have to look up things. Are there any plans to build a more comprehensive documentation that will replace the FAQ that constitutes the vignette at the moment? –  ilprincipe Jun 18 '12 at 15:11
    
@ilprincipe I know what you mean and fully agree. There are no plans though because we don't know what it should look like! What would you like? Would a wiki with common use cases be good? Any help you can provide what is needed and how would be really appreciated. If you could sketch out or start the format that you'd like I'll gladly fill it in. A new page on the existing data.table wiki? Somewhere else? Wiki format or something that is reproducible? We need help and guidance on this please. Even a list of the common idioms as you see them would be a great start. –  Matt Dowle Jun 18 '12 at 16:26
    
@nikola Apologies, I should have mentioned that to you. Well done for working it out. Btw, as.data.table is usually faster than data.table to convert, but we'll change it so you don't need to know that for convenience. Or just start with data.table in the first place. –  Matt Dowle Jun 18 '12 at 16:30
    
I guess an extension of the Wiki format would be desirable. As a first step, it could be a unique address that lists all idioms and a more or less complete list of common usage cases. A proper vignette/intro should imho focus more on introducing data.table and its usage by itself, and to a lesser degree on its comparison with data frames and computational speed. I know speed is a selling point, but it should be separated more. Most users figure this out pretty quickly anyways. I feel I am not familiar enough with data.table yet to contribute much, but I will think about this a bit more. –  ilprincipe Jun 18 '12 at 17:11

I actually asked a similar question some time ago. data.table is really nice for this, especially now that := by group is implemented, and a self join is not necessary anymore - as illustrated above. the best solution from base R is ave(). tapply() can also be used.

This is similar to the solution above, using ave(). However, I highly recommend you look at data.table.

df$count <- ave(x = df$object, df$country, df$category, FUN = length)
df$weight <- ave(x = df$count, df$country, FUN = function(x) x/length(x))
share|improve this answer

I don't see a readable way to do it in one line. But it can be quite compact.

# Use table to get the counts.
counts <- table(df[,2:3])
# Normalize the table
weights <- t(t(counts)/colSums(counts))
# Use 'matrix' selection by names.
df$weight <- weights[as.matrix(df[,2:3])]
share|improve this answer
    
thanks for the vanilla solution –  nikola Jun 19 '12 at 15:28

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