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I was surprised to find out that clara from library(cluster) allows NAs. But function documentation says nothing about how it handles these values.

So my questions are:

  1. How clara handles NAs?
  2. Can this be somehow used for kmeans (Nas not allowed)?

[Update] So I did found lines of code in clara function:

inax <- is.na(x)
valmisdat <- 1.1 * max(abs(range(x, na.rm = TRUE)))
x[inax] <- valmisdat

which do missing value replacement by valmisdat. Not sure I understand the reason to use such formula. Any ideas? Would it be more "natural" to treat NAs by each column separately, maybe replacing with mean/median?

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up vote 7 down vote accepted

Although not stated explicitly, I believe that NA are handled in the manner described in the ?daisy help page. The Details section has:

In the daisy algorithm, missing values in a row of x are not included in the dissimilarities involving that row.

Given internally the same code will be being used by clara() that is how I understand that NAs in the data can be handled - they just don't take part in the computation. This is a reasonably standard way of proceeding in such cases and is for example used in the definition of Gower's generalised similarity coefficient.

Update The C sources for clara.c clearly indicate that this (the above) is how NAs are handled by clara() (lines 350-356 in ./src/clara.c):

    if (has_NA && jtmd[j] < 0) { /* x[,j] has some Missing (NA) */
        /* in the following line (Fortran!), x[-2] ==> seg.fault
           {BDR to R-core, Sat, 3 Aug 2002} */
        if (x[lj] == valmd[j] || x[kj] == valmd[j]) {
        continue /* next j */;
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Same code lines to treat missing values in daisy as in clara function (see my question update). – danas.zuokas May 24 '12 at 7:14
@danas.zuokas I'm not sure how helpful it is to just pull arbitrary lines of code from the sources that you think a related to the question. You need to study both the R code and the C code. valmisdat is the value used to indicate missing data (NA) in the C code rather than have it use NA directly. If you look at the C code you will see that it clearly just ignores comparisons where a variable has a missing value for one or the other or both of the samples for which the dissimilarity is being computed. See the updated answer for the pointer to the code. – Gavin Simpson May 24 '12 at 8:36
Thanks you, Gavin! – danas.zuokas May 24 '12 at 8:54
Can you think of ways to employ same NA handling in kmeans? – danas.zuokas May 24 '12 at 9:23
Possibly but not without writing your own k-means algorithm. Essentially k-means works on the within-group sums of squares so distances to the centroid. clara is doing the same thing so the idea is feasible (you just ignore those comparisons when computing the Euclidean distance to the centroid and of the centroid itself I guess). Are you fixed on using k-means? If k-mediods is OK (and I don't see why it won't be as it is more robust than k-means), use the pam() function in the cluster package, which handles NAs like clara() and daisy(). – Gavin Simpson May 24 '12 at 11:12

Not sure if kmeans can handle missing data by ignoring the missing values in a row.

There are two steps in kmeans;

  1. calculating the distance between an observation and original cluster mean.
  2. updating the new cluster mean based on the newly calculated distances.

When we have missing data in our observations: Step 1 can be handled by adjusting the distance metric appropriately as in the clara/pam/daisy package. But Step 2 can only be performed if we have some value for each column of an observation. Therefore imputing might be the next best option for kmeans to deal missing data.

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By looking at the Clara c code, I noticed that in clara algorithm, when there are missing values in the observations, the sum of squares is "reduced" proportional to the number of missing values, which I think is wrong! line 646 of clara.c is like " dsum *= (nobs / pp) " which shows it counts the number of non-missing values in each pair of observations (nobs), divides it by the number of variables (pp) and multiplies this by the sum of squares. I think it must be done in other way, i.e. " dsum *= (pp / nobs) ".

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You can use an edit link to edit your previous answer. – zero323 Mar 10 at 19:50

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