# Efficient way to create a circulant matrix in R

I want to create a circulant matrix from a vector in R. A circulant matrix is a matrix with the following form.

``````1 2 3 4
4 1 2 3
3 4 1 2
2 3 4 1
``````

The second row is the same as the first row except the last element is at the beginning, and so on.

Now I have the vector, say, (1, 2, 3, 4) and I want to find a efficient (fast) way to create this matrix. In practice, the numbers are not integers and can be any numbers.

Here is what I am doing now.

``````x <- 1:4
n <- length(x)
mat <- matrix(NA, n, n)
for (i in 1:n) {
mat[i, ] <- c(x[-(1:(n+1-i))], x[1:(n+1-i)])
}
``````

I wonder if there is a faster way to do this? I need to generate this kind of matrices over and over. A small improvement for one step will make a big difference. Thank you.

-
If you put your code into a function, you can compile it to bytecode with the `compiler` library (shipped with R), and this should give you some speed gain. for more details: dirk.eddelbuettel.com/blog/2011/04/12 –  Matthew Plourde Apr 3 '13 at 19:05
@MatthewPlourde Thank you. I will take a look at it. –  Patrick Li Apr 3 '13 at 19:09
And if this is going to be used repeatedly, using package Rcpp would greatly improve performance. –  BondedDust Apr 3 '13 at 20:25

Here are some benchmarks of suggested solutions.

Benchmark

``````x <- 1:100
microbenchmark(
OP.Circulant(x),
Josh.Circulant(x),
Dwin.Circulant(x) ,
Matt.Circulant(x),
Matt.Circulant2(x),
Ndoogan.Circulant(x),

times=100
)
# Unit: microseconds
#                   expr       min         lq    median          uq        max
# 1    Dwin.Circulant(x)  1232.775  1288.1590  1358.999   1504.4490   2900.430
# 2    Josh.Circulant(x)  1081.080  1086.3470  1097.863   1125.8745   2526.237
# 3    Matt.Circulant(x) 61924.920 64579.3735 65948.152 129359.7895 137371.570
# 4   Matt.Circulant2(x) 12746.096 13499.0580 13832.939  14346.8570  16308.040
# 5 Ndoogan.Circulant(x)   469.502   487.2285   528.591    585.8275   1522.363
# 6      OP.Circulant(x)  1291.352  1363.8395  1421.509   1513.4950   2714.707
``````

Code used for benchmark

``````OP.Circulant <- function(x) {
n <- length(x)
mat <- matrix(NA, n, n)

for (i in 1:n) {
mat[i, ] <- c(x[-(1:(n + 1 - i))], x[1:(n + 1 - i)])
}
return(mat)

}

rotn <- function(x, n) rep(x, 2)[n:(n + length(x) - 1)]

Dwin.Circulant <- function(x) {
n <- length(x)
return(t(sapply(x[c(1L, n:2)], rotn, x = x)))
}

Josh.Circulant <- function(x, nrow = length(x)) {
m <- length(x)
return(matrix(x[(1:m - rep(1:nrow, each = m))%%m + 1L],
ncol = m, byrow = TRUE))
}

Matt.Circulant <- function(x) {
n <- length(x)
mat <- matrix(, n, n)
for (i in seq(-n + 1, n - 1)) {
mat[row(mat) == col(mat) - i] = x[i%%n + 1]
}
return(mat)
}

Matt.Circulant2 <- function(x) {
n <- length(x)
return(rbind(x[], do.call(rbind, lapply(seq(n - 1),
}

Ndoogan.Circulant <-function(x) {
n <- length(x)
suppressWarnings(
matrix(x[matrix(1:n,n+1,n+1,byrow=T)[c(1,n:2),1:n]],n,n))
}

# check for identical results (all TRUE)
check <- OP.Circulant(x)
identical(check, OP.Circulant(x))
identical(check, Dwin.Circulant(x))
identical(check, Josh.Circulant(x))
identical(check, Matt.Circulant(x))
identical(check, Matt.Circulant2(x))
identical(check, Ndoogan.Circulant(x))
``````
-
That's very useful. Thanks. –  Patrick Li Apr 4 '13 at 5:24
``````rotn <- function(x,n) rep(x,2)[n:(n+length(x)-1)]
sapply(c(1,4:2), rotn, x=1:4)
[,1] [,2] [,3] [,4]
[1,]    1    4    3    2
[2,]    2    1    4    3
[3,]    3    2    1    4
[4,]    4    3    2    1
``````

Might be faster inside a function if you constructed the double-length vector outside the sapply loop.

-

This makes use of vector recycling (it throws a warning):

``````circ<-function(x) {
n<-length(x)
matrix(x[matrix(1:n,n+1,n+1,byrow=T)[c(1,n:2),1:n]],n,n)
}
circ(letters[1:4])
#     [,1] [,2] [,3] [,4]
#[1,] "a"  "b"  "c"  "d"
#[2,] "d"  "a"  "b"  "c"
#[3,] "c"  "d"  "a"  "b"
#[4,] "b"  "c"  "d"  "a"
``````
-
Many times slower than the OP's solution on my machine. –  BondedDust Apr 3 '13 at 20:02
@DWin As others are seeing differences, I observe that mine is only second to yours. Thanks again. –  ndoogan Apr 3 '13 at 20:08
I thought I was out of the running. The OP's solution beats mine on my machine (with my version) –  BondedDust Apr 3 '13 at 20:11
Very nice. This is what I originally tried for, but couldn't figure it out. Adding a sacrificial column to the matrix is the key insight. Thanks! –  Josh O'Brien Apr 4 '13 at 5:47
``````circulant <- function(x, nrow = length(x)) {
n <- length(x)
matrix(x[(1:n - rep(1:nrow, each=n)) %% n + 1L], ncol=n, byrow=TRUE)
}

circulant(1:4)
#      [,1] [,2] [,3] [,4]
# [1,]    1    2    3    4
# [2,]    4    1    2    3
# [3,]    3    4    1    2
# [4,]    2    3    4    1

circulant(7:9, nrow=5)
#      [,1] [,2] [,3]
# [1,]    7    8    9
# [2,]    9    7    8
# [3,]    8    9    7
# [4,]    7    8    9
# [5,]    9    7    8

circulant(10:1, nrow=2)
#      [,1] [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10]
# [1,]   10    9    8    7    6    5    4    3    2     1
# [2,]    1   10    9    8    7    6    5    4    3     2
``````
-
My money is on this one. –  BondedDust Apr 3 '13 at 19:21
@DWin -- Thanks. It could be made faster by avoiding constructing the matrix `byrow`, but would be at the expense of a little clarity. (Not that this isn't plenty obfuscated already!) –  Josh O'Brien Apr 3 '13 at 19:23
Clarity occurred when I looked at these separately: `(1:4 - rep(1:4, each=4))` and `rep(1:4, each=4)` –  BondedDust Apr 3 '13 at 19:25
It can be made (much?) faster by working with integers, not numerics. Try replacing `n + 1` with `n + 1L`. –  flodel Apr 3 '13 at 19:53
@flodel -- Thanks for suggesting that one-letter edit. Nice catch! (Makes it about 15% faster in my timings.) –  Josh O'Brien Apr 3 '13 at 19:56