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I am trying to "unshuffle" the rows of a matrix containing the centroids of some clusters which are not in the same order as the order in which the samples were assigned to the clusters. Initially I was comparing the absolute value of the distance between the data points of the mean and the cluster centers and assign the index of the row which had the smallest distance. Of course, I am not allowed to have duplicate indexes. It worked pretty good but the symmetric values raise a problem (i.e., due to the absolute value for the distance, mirror clusters were not ordered properly). Also I tried to order them based on the variance, did not work as expected. I have been looking at the order() and sort() function and found an example which did not work.


I also tried the


but of course that just returns FALSE everywhere.

A sample of the matrices:

means <- c(0.055190097, 0.032412395,    0.015372307,    -0.008012372,
-0.018736792,   -0.078138715, -0.058707713,   -0.044020629,
-0.023750329,   -0.014402083, -0.069920581,   -0.064429216,
-0.059913345,   -0.052302253,   -0.047874074,  0.050557395,
0.047246979,    0.044577065,    0.040384336,    0.038140009,
0.114954601,    0.108110051,    0.102531680,    0.093341425,    0.088140310)
dim(means) <- c(5,5)
means <- t(means)

centers <- c(-0.038754, -0.021588,-0.008851,    0.008579,   0.016579,
 0.018371,   0.006095,   -0.003026,  -0.015537, -0.021286,
-0.078143,  -0.069267,  -0.062197,   -0.051295,  -0.045521,
 0.033145,   0.033348,   0.033354,   0.032947,   0.032511,
 0.115464,   0.105248,   0.097172,   0.084732,   0.078162)
dim(centers) <- c(5,5)
centers <- t(centers)

For instance (with the above example), line 2 from the means matrix corresponds to line 3 from the centers matrix as it is the closest in distance (data point wise). So, I have to find which line from the means corresponds to which line in centers (no duplicates). My matrices are bigger, but this should be enough as example Do you have any suggestions? Thank you

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A bit of sample data would help. See also stackoverflow.com/questions/5963269/… – Joris Meys Jan 23 '12 at 13:11
I edited your sample code so it could be copy-pasted more easily, and I also corrected your use of mat.or.vec(). You simply overwrite the matrix you made with a vector, so that didn't really help. Check if the output is what you thought. – Joris Meys Jan 23 '12 at 14:09
I'm still trying to understand what you try to do. You'll have to clarify, or nobody will be able to help you. It would be interesting to check which outcome you expect given the input, and what the reasoning behind that output is. That would give us something to work with. – Joris Meys Jan 23 '12 at 14:13
@JorisMeys Hi, Well the main idea is that I have the output of a K-means algorithm which was implemented in C and I wanted to compare it with the output of the K-means function in R. In the output of the C algorithm, the samples are assigned to the clusters, but in the file containing the cluster centroids, the order is not the same as the order in which the samples were assigned to clusters. So, by taking the mean of the samples assigned to cluster 1 (for ex.), it's plotted line should overlap the plot line of the 1st row in the cluster centroid matrix (i.e., the output of the algorithm in C) – Marius Jan 23 '12 at 14:23
I meant more like: which rows (or columns???) do you want to match between both matrices. For example: row 1 in means to row 3 in centers, and then explain why. I have a vague idea of where you're coming from, but this is just impossible to answer as I can interprete both your question and your data in many ways. – Joris Meys Jan 23 '12 at 14:32
up vote 0 down vote accepted

Well, I did not find any built-in function to do the job, so I just implemented a recursive algorithm which takes care of the job..even if it is not the way of R programming, at least it solves the problem. A pretty nasty problem in this particular case, I might add, but now it's working. Thanks to all who showed interest in this question.

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