Stupid average dissimilarity random clustering
Picks k random starting points from given dataset to initialise k clusters. Then, one by one, the point not yet assigned to any cluster with smallest average dissimilarity to the points of any already existing cluster is assigned to that cluster, until all points are assigned. This is a random versione of average linkage clustering, see Akhanli and Hennig (2020).
stupidkaven(d,k)
d |
|
k |
integer. Number of clusters. |
The clustering vector (values 1 to k
, length number of objects
behind d
),
Akhanli, S. and Hennig, C. (2020) Calibrating and aggregating cluster validity indexes for context-adapted comparison of clusterings. Statistics and Computing, 30, 1523-1544, https://link.springer.com/article/10.1007/s11222-020-09958-2, https://arxiv.org/abs/2002.01822
set.seed(20000) options(digits=3) face <- rFace(200,dMoNo=2,dNoEy=0,p=2) stupidkaven(dist(face),3)
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