Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am looking for a faster way to achieve the operation below. The dataset contains > 1M rows but I have provided a simplified example to illustrate the task --

To create the data table --

dt <- data.table(name=c("john","jill"), a1=c(1,4), a2=c(2,5), a3=c(3,6), 
      b1=c(10,40), b2=c(20,50), b3=c(30,60))

colGroups <- c("a","b")   # Columns starting in "a", and in "b"

Original Dataset
-----------------------------------
name    a1   a2   a3   b1   b2   b3
john    1    2    3    10   20   30
jill    4    5    6    40   50   60

The above dataset is transformed such that 2 new rows are added for each unique name and in each row, the values are left shifted for each group of columns independently (in this example I have used a columns and b columns but there are many more)

Transformed Dataset
-----------------------------------
name    a1   a2   a3   b1   b2   b3
john    1    2    3    10   20   30  # First Row for John
john    2    3    0    20   30    0  # "a" values left shifted, "b" values left shifted
john    3    0    0    30   0     0  # Same as above, left-shifted again

jill    4    5    6    40   50   60  # Repeated for Jill
jill    5    6    0    50   60    0 
jill    6    0    0    60    0    0

And so on. My dataset is extremely large, which is why I am trying to see if there is an efficient way to implement this.

Thanks in advance.

share|improve this question
3  
What have you tried so far? –  Metrics Oct 3 '13 at 21:55
    
Is there a fixed number of columns per columnGroup? Or does that value vary by column group? –  Ricardo Saporta Oct 3 '13 at 22:08
    
@Ricardo Saporta - Fixed number of columns per column group –  xbsd Oct 3 '13 at 22:46
5  
Hey Look!! It's @Arun! Welcome back bud! –  Ricardo Saporta Oct 3 '13 at 23:07
1  
@RicardoSaporta, on vacation.. managed to sneak in for a while.. :) –  Arun Oct 3 '13 at 23:11
show 4 more comments

3 Answers

up vote 5 down vote accepted

Update: A (much) faster solution would be to play with the indices as follows (takes about 4 seconds on 1e6*7):

ll <- vector("list", 3)
ll[[1]] <- copy(dt[, -1, with=FALSE])
d_idx <- seq(2, ncol(dt), by=3)
for (j in 1:2) {
    tmp <- vector("list", 2)
    for (i in seq_along(colGroups)) {
        idx <- ((i-1)*3+2):((i*3)+1)
        tmp[[i]] <- cbind(dt[, setdiff(idx, d_idx[i]:(d_idx[i]+j-1)), 
                        with=FALSE], data.table(matrix(0, ncol=j)))
    }
    ll[[j+1]] <- do.call(cbind, tmp)
}
ans <- cbind(data.table(name=dt$name), rbindlist(ll))
setkey(ans, name)

First attempt (old): Very interesting problem. I'd approach it using melt.data.table and dcast.data.table (from 1.8.11) as follows:

require(data.table)
require(reshape2)
# melt is S3 generic, calls melt.data.table, returns a data.table (very fast)
ans <- melt(dt, id=1, measure=2:7, variable.factor=FALSE)[, 
                    grp := rep(colGroups, each=nrow(dt)*3)]
setkey(ans, name, grp)
ans <- ans[, list(variable=c(variable, variable[1:(.N-1)], 
          variable[1:(.N-2)]), value=c(value, value[-1],
     value[-(1:2)]), id2=rep.int(1:3, 3:1)), list(name, grp)]
# dcast in reshape2 is not yet a S3 generic, have to call by full name
ans <- dcast.data.table(ans, name+id2~variable, fill=0L)[, id2 := NULL]

Benchmarking on 1e6 rows with same number of columns:

require(data.table)
require(reshape2)
set.seed(45)
N <- 1e6
dt <- cbind(data.table(name=paste("x", 1:N, sep="")), 
               matrix(sample(10, 6*N, TRUE), nrow=N))
setnames(dt, c("name", "a1", "a2", "a3", "b1", "b2", "b3"))
colGroups = c("a", "b")

system.time({
ans <- melt(dt, id=1, measure=2:7, variable.factor=FALSE)[, 
                    grp := rep(colGroups, each=nrow(dt)*3)]
setkey(ans, name, grp)
ans <- ans[, list(variable=c(variable, variable[1:(.N-1)], 
          variable[1:(.N-2)]), value=c(value, value[-1],
     value[-(1:2)]), id2=rep.int(1:3, 3:1)), list(name, grp)]
ans <- dcast.data.table(ans, name+id2~variable, fill=0L)[, id2 := NULL]

})

#   user  system elapsed 
# 45.627   2.197  52.051 
share|improve this answer
    
Works fine here, just tried ... did you load dt and colGroups –  xbsd Oct 4 '13 at 0:52
    
@Arun - thanks, it is very fast indeed. My actual table has ~ 40 groups and 9 columns per group, will try it out on the same. –  xbsd Oct 4 '13 at 0:55
    
I was testing on 1.8.10, so I was getting ans as a d.f instead of d.t –  Ricardo Saporta Oct 4 '13 at 0:56
    
ah i c. Just to add some more context (lest this seems like an odd exercise), the operation above is required to prepare a time-series table with lagged predictors to measure seasonal variations using ML algorithms (the colGroups are time intervals). Thanks for the help. –  xbsd Oct 4 '13 at 1:04
    
@xbsd, you may want to check the update. –  Arun Oct 4 '13 at 9:37
show 3 more comments

Just an edit of @Arun (s) code for the chosen answer. Providing here as I cannot post in the comments section.

#Parameterized version of @Arun (author) code (in the selected answer)

#Shifting Columns in R
#--------------------------------------------
N = 5  # SET - Number of unique names
set.seed(5)
colGroups <- c("a","b") # ... (i) # SET colGroups
totalColsPerGroup <- 10 # SET Cols Per Group
numColsToLeftShift <- 8 # SET Cols to Shift

lenColGroups <- length(colGroups) # ... (ii)

# From (i) and (ii)
totalCols = lenColGroups * totalColsPerGroup


dt <- cbind(data.table(name=paste("x", 1:N, sep="")), 
            matrix(sample(5, totalCols*N, TRUE), nrow=N)) # Change 5 if needed

ll <- vector("list", numColsToLeftShift)
ll[[1]] <- copy(dt[, -1, with=FALSE])
d_idx <- seq(2, ncol(dt), by=totalColsPerGroup)
for (j in 1:(numColsToLeftShift)) {
  tmp <- vector("list", 2)
  for (i in seq_along(colGroups)) {
    idx <- ((i-1)*totalColsPerGroup+2):((i*totalColsPerGroup)+1) #OK
    tmp[[i]] <- cbind(dt[, setdiff(idx, d_idx[i]:(d_idx[i]+j-1)), 
                         with=FALSE], data.table(matrix(0, ncol=j)))

  }      
  ll[[j+1]] <- do.call(cbind, tmp)

}
ans <- cbind(data.table(name=dt$name), rbindlist(ll))
setkey(ans, name)

--

share|improve this answer
add comment

You can append the rows and then shift up the columns in groups. Since the total number of columns per group is fixed, you iterate over each group number.

## Add in the extra rows
dt <- dt[, rbindlist(rep(list(.SD), 3)), by=name]


### ASSUMING A FIXED NUMBER PER COLGROUP
N <- 3

colsShifting <- as.vector(sapply(colGroups, paste0, 2:N))

for (i in (2:N)-1 ) {
  current <- colsShifting[ (i) +  ( (N-1) * (seq_along(colGroups)-1) )]
  dt[, c(current) := {
              .NN <- .N; 
              .CROP <- .SD[1:(.NN-i)]  ## These lines are only for clean code. You can put it all into the `rbindlist` line
              rbindlist(list(.CROP, as.data.table(replicate(ncol(.SD), rep(0, i),simplify=FALSE ))))
            } 
      , .SDcols=current
      , by=name]
  }

which gives:

dt
#     name a1 a2 a3 b1 b2 b3
#  1: john  1  2  3 10 20 30
#  2: john  1  2  0 10 20  0
#  3: john  1  0  0 10  0  0
#  4: jill  4  5  6 40 50 60
#  5: jill  4  5  0 40 50  0
#  6: jill  4  0  0 40  0  0
share|improve this answer
add comment

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.