Some notes on the k-means clustering for missing data
Abstract
The classical k-means clustering requires a complete data matrix without missing entries. As a natural extension of the k-means clustering for missing data, the k-POD clustering has been proposed, which ignores the missing entries in the k-means clustering. This paper shows the inconsistency of the k-POD clustering even under the missing completely at random mechanism. More specifically, the expected loss of the k-POD clustering can be represented as the weighted sum of the expected k-means losses with parts of variables. Thus, the k-POD clustering converges to the different clustering from the k-means clustering as the sample size goes to infinity. This result indicates that although the k-means clustering works well, the k-POD clustering may fail to capture the hidden cluster structure. On the other hand, for high-dimensional data, the k-POD clustering could be a suitable choice when the missing rate in each variable is low.
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