a matrix of clusterings with number of rows equal to the number of
cases to be clustered, number of columns equal to the clustering obtained
by different resampling of the data, and the third dimension are the
different algorithms. Matrix may already be two-dimensional.
is.relabelled
logical; if FALSE the data will be relabelled using
the first clustering as the reference.
seed
random seed for reproducibility
Author
Aline Talhouk
Details
Combine clustering results generated using different algorithms and different
data perturbations by k-modes. This method is the categorical data analog of
k-means clustering. Complete cases are needed: i.e. no NAs. If the matrix
contains NAs those are imputed by majority voting (after class relabeling).
References
Luo, H., Kong, F., & Li, Y. (2006, August). Combining multiple
clusterings via k-modes algorithm. In International Conference on Advanced
Data Mining and Applications (pp. 308-315). Springer, Berlin, Heidelberg.
See Also
Other consensus functions:
CSPA(),
LCA(),
LCE(),
majority_voting()