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I have a data set with dozens of columns and thousands of rows. Here I present just a toy example:

trN <- c(0,0,0,0,1,1,1,1)
tt <- c(1,2,3,4,1,2,3,4)
varX <- c(1,5,NA,9,2,NA,8,4)
d <- as.data.frame(cbind(trN, tt, varX))

The first thing that I do is to spline interpolate column varX as a function of column tt for each trN. An operation that is easily done with ddply from the plyr package.

ddply(d, .(trN), mutate, varXint = spline(tt, varX, xout = tt)$y)

But suppose that I would like to also change the dimension (number of rows) of the new data frame. For instance, I would like to have a set of values specifying where interpolation is to take place (xout) that has a different length then tt. Obviously, the approach here below doesn't work, because with mutate the new column needs to have the same length as the columns of the original data frame:

ddply(d, .(trN), mutate, varXint = spline(tt, varX, xout = seq(1, 4, by = 1.5))$y)

Does anyone have a suitable solution or any kind of suggestion? I would prefer to have a solution based on the plyr package, because I can take advantage of the implemented parallelization.

share|improve this question
up vote 1 down vote accepted

Try a simple data.table first:

library(data.table)
dt = data.table(d)

# I added xout since I assumed you want that
dt[, list(varXint = spline(tt, varX, xout = seq(1, 4, by = .5))$y,
          xout = seq(1, 4, 0.5)),
     by = trN]
#    trN  varXint xout
# 1:   0 1.000000  1.0
# 2:   0 3.166667  1.5
# 3:   0 5.000000  2.0
# 4:   0 6.500000  2.5
# 5:   0 7.666667  3.0
# 6:   0 8.500000  3.5
# 7:   0 9.000000  4.0
# 8:   1 2.000000  1.0
# 9:   1 5.250000  1.5
#10:   1 7.333333  2.0
#11:   1 8.250000  2.5
#12:   1 8.000000  3.0
#13:   1 6.583333  3.5
#14:   1 4.000000  4.0

And if your bottleneck is indeed the inside computation vs just the grouping issue, then check out e.g. multicore and data.table in R or data.table and parallel computing

share|improve this answer
    
Thanks. Since I never used data.table before I was wondering if it is possible to define xout before varXint and then use it inside the spline function. I'm asking because my xout variable will be used in a dozen of spline interpolations and it doesn't make much sense to recompute it over and over again. – VLC Oct 9 '13 at 16:10
1  
@VLC you can use full expressions in the second argument of [.data.table, so you can do smth like this: dt[, {tmp = seq(1, 4, 0.5); some_computation(tmp); list(varXint = spline(..., xout = tmp), xout = tmp)}, by = trN] – eddi Oct 9 '13 at 16:13
    
Perfect. Thanks again. – VLC Oct 9 '13 at 16:41

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