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I am running rolling regressions in R, using with the data stored in a data.table.

I have a working version, however it feels like a hack -- I am really using what i know from the zoo package, and none of the magic in data.table ... thus, it feels slower than it ought to be.

Incorporating Joshua's suggestion - below - there is a speedup of ~12x by using lm.fit rather than lm.

(revised) Example code:

require(zoo)
require(data.table)
require(rbenchmark)
set.seed(1)

tt <- seq(as.Date("2011-01-01"), as.Date("2012-01-01"), by="day")
px <- rnorm(366, 95, 1)

DT <- data.table(period=tt, pvec=px)

dtt <- DT[,tnum:=as.numeric(period)][, list(pvec, tnum)]
dtx <- as.matrix(DT[,tnum:=as.numeric(period)][, tnum2:= tnum^2][, int:=1][, list(pvec, int, tnum, tnum2)])

rollreg <- function(dd) coef(lm(pvec ~ tnum + I(tnum^2), data=as.data.frame(dd)))
rollreg.fit <- function(dd) coef(lm.fit(y=dd[,1], x=dd[,-1]))

rr <- function(dd) rollapplyr(dd, width=20, FUN = rollreg, by.column=FALSE)
rr.fit <- function(dd) rollapplyr(dd, width=20, FUN = rollreg.fit, by.column=FALSE)

bmk <- benchmark(rr(dtt), rr.fit(dtx), 
         columns = c('test', 'elapsed', 'relative'),
         replications = 10,
         order = 'elapsed'
       )

     test elapsed relative
2 rr.fit(dtx)    0.48   1.0000
1     rr(dtt)    5.85  12.1875

Trying to apply the knowledge displayed here and here, I cooked up the following simple rolling regression function that I think uses some of the speed of data.table operations.

Note that the problem is a little different (and more realistic): take a vector, add lags, and regress on itself. This class of AR-type problems is pretty broad.

I am sharing it here as it may be of use, and i'm sure that it can be improved (i'll update as I improve):

require(data.table)
set.seed(1)
x  <- rnorm(1000)
DT <- data.table(x)
DTin <- data.table(x)

lagDT <- function(DTin, varname, l=5)
{
    i = 0
    while ( i < l){
        expr <- parse(text = 
                  paste0(varname, '_L', (i+1), 
                     ':= c(rep(NA, (1+i)),', varname, '[-((length(',     varname, ') - i):length(', varname, '))])'
                 )
              )
    DTin[, eval(expr)]
    i <- i + 1
}
return(DTin)
}   

rollRegDT <- function(DTin, varname, k=20, l=5)
{
adj <- k + l - 1
.x <- 1:(nrow(DTin)-adj)
DTin[, int:=1]
dtReg <- function(dd) coef(lm.fit(y=dd[-c(1:l),1], x=dd[-c(1:l),-1]))
eleNum <- nrow(DTin)*(l+1)
outMatx <- matrix(rep(NA, eleNum), ncol = (l+1))
colnames(outMatx) <- c('intercept', 'L1', 'L2', 'L3', 'L4', 'L5')
for (i in .x){
    dt_m <- as.matrix(lagDT(DTin[i:(i+adj), ], varname, l))
    outMatx[(i+(adj)),] <- dtReg(dt_m)
}
return(outMatx)
}

rollCoef <- rollRegDT(DT, varname='x')
share|improve this question
1  
Is this question similar to stackoverflow.com/questions/11873123/… ? –  Sameer Aug 27 '12 at 12:57
4  
Use lm.fit directly and avoid the overhead of the lm function. –  Joshua Ulrich Aug 27 '12 at 14:08
    
Thanks Joshua. @Sameer, just had a look at your direct method, and will try it. I think there is similarity to the extent that your direct approach may suit both - differences being that i have the data in a data.table, and that my real worl problem is likely to be long rather than wide. –  ricardo Aug 27 '12 at 20:00
    
thanks Josh, speedup was ~11.5x (using the actual data and rbenchmark). –  ricardo Aug 27 '12 at 21:18

1 Answer 1

up vote 4 down vote accepted

Not as far as I know; data.table doesn't have any special features for rolling windows. Other packages already implement rolling functionality on vectors, so they can be used in the j of data.table. If they are not efficient enough, and no package has faster versions (?), then it's a case of writing faster versions yourself and (of course) contributing them: either to an existing package or creating your own.

Related questions (follow links in links) :

Using data.table to speed up rollapply
R data.table sliding window
Rolling regression over multiple columns in R

share|improve this answer
    
Thanks Matthew. For both the explanation and the links. –  ricardo Aug 28 '12 at 20:00
    
I'm going to try using := to add the lags onto the RHS of the data.table, and the indexing lapply approach suggested in mnel's answer to this question. Seems promising. I'm having trouble passing from spec to programmatically passing in the variable names in DTin[, paste0('pvL'+i):= c(rep(NA,(1+i)), pvec[-((length(pvec)-i):length(pvec))])]. I cannot figure out how to get the paste0 function to work for the names ... is this possible? –  ricardo Aug 28 '12 at 21:30
    
Try with=FALSE, and theres a few similar questions might be tricky to search for. –  Matt Dowle Aug 28 '12 at 21:34
    
great, thanks. There was a bug in the above: this works with a count starting at i=0: DTin[, paste0('pvL',(i+1)):= c(rep(NA,(1+i)), pvec[-((length(pvec)-i):length(pvec))]), with=FALSE] –  ricardo Aug 28 '12 at 22:35

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