How to avoid loop when doing addition of row(n) to row(n-1) for random walk

I am simulating a random walk starting from coordinates(0,0). When I do it with a loop it works well:

``````require(ggplot2)
n <- 1000   #number of walks

# first solution, w/ loop... works but is SLOOOW
coord <- data.frame (x=0, y=0, step=0) #origin
for (i in 1:n){
dir <- sample(c("w", "e", "n", "s"), 1) #random direction
step <- sample(1:4, 1) #how far to go in each walk
startx <- coord[nrow(coord), 1]
starty <- coord[nrow(coord), 2]
endx <- ifelse (dir=="w", startx-step, ifelse(dir=="e", startx+step, startx))
endy <- ifelse (dir=="n", starty+step, ifelse(dir=="s", starty-step, starty))
newcoord <- data.frame (x=endx, y=endy, step=step)
coord <- rbind(coord, newcoord)
}
rw <- ggplot(coord, aes(x=x, y=y))
rw + geom_path() +
ggtitle(paste(n, "walks")) +
geom_point(aes(x=0, y =0), color="green", size=I(5)) +
geom_point(aes(x=endx, y =endy), color="red", size=I(5))
``````

However, with n>10,000 it gets very slow, so would like to to avoid the loop and use some form of 'apply', but can't figure out how to add the values of coordinates from rows n and n-1. Please help, thank you.

``````# second solution
d <- data.frame(dir=sample(c("w", "e", "n", "s"), n, replace=T), step=sample(1:4, n, replace=T))
xy <- data.frame(x=0, y=0)
x. <- data.frame(x=with(d, ifelse (dir=="w", -step, ifelse(dir=="e", step, 0))))
y. <- data.frame(y=with(d, ifelse (dir=="s", -step, ifelse(dir=="n", step, 0))))
x.y. <- cbind(x.,y.)
xy <- rbind(xy, x.y.)
# ... stuck here
``````
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You tried cumsum(xy)? –  Rcoster Feb 14 '13 at 18:54
If possible, don't replace the loop with an 'apply' method, since the 'apply' family of functions are actually loop wrappers. It's more important to move to a vectorized approach and restructure your problem as a total vector. If no one else pops up a solution shortly, I'll write one for you. –  Dinre Feb 14 '13 at 19:08
You should also avoid the growth method you are using with rbind, since that requires constant reallocation of memory and can add quite a bit of time to late-run passes as n starts becoming large. Instead, define the whole data frame at the beginning. –  Dinre Feb 14 '13 at 19:11

I think you are getting close. If you read the comments already posted you can make it much faster. So I recommend not looking at this:

``````n=10000
x.=sample(-4:4,n,rep=T)
y.=sample(-4:4,n,rep=T)
x=cumsum(x.)
y=cumsum(y.)

coord=data.frame(x,y)
``````

Then plot exactly how you did:

``````rw <- ggplot(coord, aes(x=x, y=y))
rw + geom_path() +
ggtitle(paste(n, "walks")) +
geom_point(aes(x=0, y =0), color="green", size=I(5)) +
geom_point(aes(x=startx, y =starty), color="red", size=I(5))
``````

update: the plotting is quite slow for n bigger than 10^5. Maybe base graphics would be faster.

update2: this is almost exactly as slow/fast as joran's response.

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The code in the question walks only on horizontal or vertical, but this code walks on any of the possible 16 directions. –  utkuerd Feb 14 '13 at 19:22
utkuerd is totally right. Nice catch. –  Seth Feb 14 '13 at 19:30

`data.table` is fast for this kind of problem...

``````walk.dt.f<-function(n=10000L, stepsize=1L:4L) {
# lookup table with direction vector info
dir.dt<-data.table(dir=c("w", "e", "n", "s"), xdir=c(-1L,1L,0L,0L), ydir=c(0L,0L,1L,-1L), key="dir")

# initial position for random walk table
walk.ini.dt<-data.table(rowid=0L,dir="n",step=0L)

# generate table with random walk info
walk.dt<-rbindlist(list(data.table(rowid=1L:n, dir=sample(dir.dt[,dir],n,replace=T), step=sample(stepsize,n,replace=T)), walk.ini.dt))

# join the two tables, and multiply the step info by the direction vectors
setkey(walk.dt,dir)
walk.dt[dir.dt,c("xstep","ystep"):=list(step*xdir,step*ydir)]

# update the key and reorder the rows
setkey(walk.dt,rowid)

# update the walk info table with the cumulative position
walk.dt[,c("x","y"):=list(cumsum(xstep),cumsum(ystep))]

}

system.time(walk.dt.f(10000L))
## user  system elapsed
## 0       0       0

system.time(walk.dt.f(1e6L))
## user  system elapsed
## 0.25    0.00    0.25
``````

Edit: Set the starting position at (0,0)

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Gah! In the hopes that this will further my goal of squashing out the stupid "for loops are inherently slow" canard for R, here is a re-working of your first version, still using a for loop that is more than 40x times faster.

I haven't even considered whether your implementation of a random walk makes sense at all. My point here is simply to point out how you could achieve the results of your original code, much much faster, while still using a "slow" for loop.

``````#My version
foo <- function(n){
coord <- matrix(NA,nrow = n,ncol = 3) #origin
coord[1,] <- c(0,0,0)
dir <- sample(c("w", "e", "n", "s"), n,replace = TRUE) #random direction
step <- sample(1:4, n,replace = TRUE) #how far to go in each walk
for (i in 2:n){
startx <- coord[i-1, 1]
starty <- coord[i-1, 2]
endx <- ifelse (dir[i]=="w", startx-step[i], ifelse(dir[i]=="e", startx+step[i], startx))
endy <- ifelse (dir[i]=="n", starty+step[i], ifelse(dir[i]=="s", starty-step[i], starty))
coord[i,] <- c(endx,endy,step[i])
}
}

foo2 <- function(n){
coord <- data.frame (x=0, y=0, step=0) #origin
for (i in 1:n){
dir <- sample(c("w", "e", "n", "s"), 1) #random direction
step <- sample(1:4, 1) #how far to go in each walk
startx <- coord[nrow(coord), 1]
starty <- coord[nrow(coord), 2]
endx <- ifelse (dir=="w", startx-step, ifelse(dir=="e", startx+step, startx))
endy <- ifelse (dir=="n", starty+step, ifelse(dir=="s", starty-step, starty))
newcoord <- data.frame (x=endx, y=endy, step=step)
coord <- rbind(coord, newcoord)
}
}

system.time(foo(10000))
user  system elapsed
0.353   0.001   0.353
> system.time(foo2(10000))
user  system elapsed
11.374   2.061  13.308
``````

All I've done here is:

1. STOP. USING. RBIND. And pre-allocate.
2. Switch to matrices.
3. Move `sample` calls outside of loop.
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Great points, good advice, @joran. –  koenbro Feb 14 '13 at 21:39

Since you are trying a 2-D random walk, there are 4x4 possible displacements. You can encode them with numbers from 1 to 16. However in order to reduce the computation and map these encoded numbers into direction and displacement amount I played a little trick, I did not encoded the steps with 1:16, but with `c(-7:0,4:11)`

``````d <- sample(c(-7:0,4:11),n,replace=T)
delta <- d%%4+1
dir <- d%/%4
xd <- dir
xd[xd%%2 ==0]=0
yd <- dir
yd[xd%%2 ==1]=0
yd <- yd/2
x=c(0,xd*delta)
y=c(0,yd*delta)
x=cumsum(x)
y=cumsum(y)

coords<-data.frame(x,y)
``````

This version only uses vectorized operations, has only a little overhead. I think it performs close to the `data.table` based solution given before.

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