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The k-centroid clustering function takes in numeric data matrix as input. However, I have only distance matrix here, and I think k-centroid algorithm does work on distance matrix.

Exerpt from Official documentation


kcca(x, k, family=kccaFamily("kmeans"), weights=NULL, group=NULL,
     control=NULL, simple=FALSE)


x    A numeric matrix of data, or an object that can be coerced to such a matrix (such as a numeric vector or a data frame with all numeric columns).

Specificly, I need to send a distance matrix into this kcca() function. But by the book, it takes in data matrix.



To cluster the rows of a binary matrix. Each row stands for a user.


The raw data is a 10^5 * 10^5 binary matrix like this

   1  2  3  4  5  6  7  8 ... 10^5
1| 0  0  1  0  1  1  1  0
2| 0  1  1  0  1  1  1  0
3| 0  0  0  1  0  1  1  0
4| 0  1  1  1  0  1  1  0

It is too large for R to procss, and my interest lies in the row clustering, so I calculate the row distance in Java and generate a distance matrix for R to read.

   1  2  3  4 ...
2| 2  
3| 1  3
4| 3  2  5

Then the problem is, K-centroid function in R takes in raw data matrix rather than distance matrix.

I hope this update helps.

share|improve this question
Most distance matrices in R are not real matrices, so if you need a matrix you often need to coerce to one with as.matrix. – 42- Jul 29 '13 at 5:29
Yeah, that's a good point. But there is more than just problem of format. The function takes in raw data matrix and calculted the distance of rows. But my data is pre-calculated distance. – SolessChong Jul 29 '13 at 5:36
Be that as it may ... You offered no data, no code (only and extract from the help page) and no pointers to packages from which this help page extract was coming. If you know that calculating a distance matrix is the firsttask then you can probably figure out a way to insert a distance matrix in the right place. – 42- Jul 29 '13 at 5:40
@Dwin Please see the update. – SolessChong Jul 29 '13 at 6:45
I am a bit perplexed that you have problems to deal with a 1e5*1e5 binary matrix, but not with a 1e5*1e5 distance matrix (it only has half as many elements, but these are doubles). – Vincent Zoonekynd Jul 29 '13 at 8:17
up vote 2 down vote accepted

K-centroids needs to be able to compute centroids.

You probably wanted to use k-medoids aka PAM instead:

Here, clusters are represented by a central object of the original data vectors each ("medoid", similar to a median; but based on distances), instead of a mean vector ("centroid") as in k-means / k-centroids.

share|improve this answer
That's exacly what I need. And it seems that I confused K-medoids with k-centroids. – SolessChong Jul 29 '13 at 8:08

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