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I am looking for methods to test the similarity of two(or more) matrices.

set.seed(1) 
m1 <- cbind(c(rep(0,2),runif(8,0,1)),
            c(runif(8,1,2),0,0),runif(10,5,10),
            c(runif(2,1,9),runif(8,10,15)),
            c(0,0,0,runif(7,1,15)))

m2 <- cbind(c(rep(0,2),runif(8,0,1)),
            c(runif(8,1,2),0,0),runif(10,5,10),
            c(runif(2,1,9),runif(8,10,15)),
            c(0,0,0,runif(7,1,15)))

0.00000000 values always occur in the same positions, while some numbers might be similar others can vary. The threshold value for when the variations are considered insignificant and significant can vary and is defined according to the quality of the data. As example I can consider that values bellow 1 insignificant and above as significant.

Besides the difference between the matrices, what more can I do to test their similarity?

I want to check:

  • how similar m1 and m2 are (for now I am using just the cor() function)
  • if the element m1(x,y) isn't similar to m2(x,y), how close is m1(x,y) to neighbor positions of m2(x,y)
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1  
Are you by chance comparing (square) dissimilarity matrices? If so, then Mantel statistic could be useful to you. It is implemented in many R packages. It is used to compare two dissimilarity matrices by computing the correlation of elements and then obtaining significance by randomly permutating the rows and columns: en.wikipedia.org/wiki/Mantel_test –  Teemu Daniel Laajala Sep 9 '13 at 17:24

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