Biomedical Engineering Reference
In-Depth Information
Cluster analysis has no method to distinguish between relevant and irrelevant
variables. Therefore, the choice of variables included in a cluster analysis must be
underpinned by theoretical considerations. This is very important because the
clusters formed can be dependent on the variables included.
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