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I have a data frame like this:'A','A','A','B','B','B'),

For every 'site' I want to divide by 'energy' [numcol wise], so I would get:


This would be ideally suited for ddply from the package plyr in combination with numcolwise of that package. But somehow I can't get it right - the problem is to pick out the 'energy' component.

Anybody knows how to solve this? [thanks in advance...]

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3 Answers 3

up vote 4 down vote accepted

This will do the job in your example:

ddply(, .(site), transform, quote.2011 = year.2011/year.2011[var=="energy"],      
      quote.2012 = year.2012/year.2012[var=="energy"])

To do this more generally, I would first melt the data to turn year into a value not a column name.

Here's how it would work with a melt

mat.m <- melt(, id.vars=1:2,"year")
mat.m$year <- sub("year.", "", mat.m$year)
mat.out <- ddply(mat.m, .(site, year), transform, quote = value/value[var=="energy"])
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Thanks Sean, it works! I have tried it also with your melt suggestion, but get 'non-numeric argument to binary operator'. – Henk Aug 21 '12 at 9:33
Did you load reshape2? – seancarmody Aug 21 '12 at 10:16

Cool answer from @seancarmody.

Here is another way to do it using base functions:

# Select and join frames
mat.out<-merge([grep("product",$var),], mat2 <-[$var=="energy",], "site")
# Calculate the quot values

# And if needs be you can remove the energy columns

And here is a way to do it using sqldf:

           p.year_2011/e.year_2011 AS quot_2011,
           p.year_2012/e.year_2012 AS quot_2012'
tables<- '(SELECT *
           FROM    ``
           WHERE   var LIKE \"product%\"
           AS p,
           (SELECT *
           FROM    ``
           WHERE   var LIKE \"energy\"
           AS e'

fn$sqldf("SELECT $variable FROM $tables WHERE")

And here is a way using data.table:

dt <- data.table(, key="site")
# Join
mat.out <- dt[var %like% "product"][dt[var=="energy"]]
# Calculate
mat.out <- mat.out[,quot.2011:=year.2011/year.2011.1]
mat.out <- mat.out[,quot.2012:=year.2012/year.2012.1]

Edit from Matthew :

Building on that, a slightly more advanced (and faster) data.table way, using join inherited scope :

dt <- data.table(, key="site")

Notice the i. prefix which tells it to get that variable from i rather than x. Similar to SQL table name prefixes. This avoids the large merge step; the technique described in FAQ 1.12.

When multiple := in j is implemented, that'll become :

dt <- data.table(, key="site")
dt[dt[var=="energy"], { quot.2011:=year.2011/i.year.2011
                        quot.2012:=year.2012/i.year.2012 } ]
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Thanks Sean & ROLO. I can't get the melt version working [Error in var == "energy" : comparison (1) is possible only for atomic and list types" but the first option works. – Henk Aug 21 '12 at 9:57
Are you using reshape2? Which version of R? I just tried the code again and got no errors. – seancarmody Aug 21 '12 at 10:20
Indeed, I didn't get an error either. – ROLO Aug 21 '12 at 10:21
Hi Sean and ROLO - my fault; it works on the code on this page, but not on my [much larger] dataset. Can't find what it is. I followed the steps carefully, checked with str(mydata) etc. – Henk Aug 21 '12 at 11:53
Maybe wrong values in the var column? What do summary($var) and class($var)on the larger table tell you? – ROLO Aug 21 '12 at 11:58

Just using base functions:

mat.r <- reshape(, direction="long", varying=3:4)
 # Could not figure out how to get the divisor "lined up" unless db-normalized
matd <- split(mat.r, list(mat.r[,1], mat.r[,3]) ), 
                              FUN=function(x) x$year/x$year[x$var=="energy"]) )

  A.2011    B.2011    A.2012    B.2012
1   0.30 0.2333333 0.2888889 0.3846154
2   0.25 0.2000000 0.2444444 0.2000000
3   1.00 1.0000000 1.0000000 1.0000000

 reshape(matd, direction="long", varying=list(1:2, 3:4))[2:3]
       A.2011    A.2012
1.1 0.3000000 0.2888889
2.1 0.2500000 0.2444444
3.1 1.0000000 1.0000000
1.2 0.2333333 0.3846154
2.2 0.2000000 0.2000000
3.2 1.0000000 1.0000000

 mat.out <- cbind(, reshape(matd, direction="long", varying=list(1:2, 3:4))[2:3])
    site       var year.2011 year.2012    A.2011    A.2012
1.1    A product.A        12        13 0.3000000 0.2888889
2.1    A product.B        10        11 0.2500000 0.2444444
3.1    A    energy        40        45 1.0000000 1.0000000
1.2    B product.A        14        25 0.2333333 0.3846154
2.2    B product.B        12        13 0.2000000 0.2000000
3.2    B    energy        60        65 1.0000000 1.0000000
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Thanks DWin. The only solution missing is now via the [fast] data.table package. – Henk Aug 21 '12 at 9:59
Added data.table (though not necessarily the most optimal way of using it). – ROLO Aug 21 '12 at 11:13

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