TY - UNPB
T1 - A voting-merging clustering algorithm
AU - Dimitriadou, Evgenia
AU - Weingessel, Andreas
AU - Hornik, Kurt
PY - 1999
Y1 - 1999
N2 - In this paper we propose an unsupervised voting-merging scheme that is capable of clustering data sets, and also of finding the number of clusters existing in them. The voting part of the algorithm allows us to combine several runs of clustering algorithms resulting in a common partition. This helps us to overcome instabilities of the clustering algorithms and to improve the ability to find structures in a data set. Moreover, we develop a strategy to understand, analyze and interpret these results. In the second part of the scheme, a merging procedure starts on the clusters resulting by voting, in order to find the number of clusters in the data set.
AB - In this paper we propose an unsupervised voting-merging scheme that is capable of clustering data sets, and also of finding the number of clusters existing in them. The voting part of the algorithm allows us to combine several runs of clustering algorithms resulting in a common partition. This helps us to overcome instabilities of the clustering algorithms and to improve the ability to find structures in a data set. Moreover, we develop a strategy to understand, analyze and interpret these results. In the second part of the scheme, a merging procedure starts on the clusters resulting by voting, in order to find the number of clusters in the data set.
U2 - 10.57938/e0d5f933-2333-4c14-817f-c39f861c9c0a
DO - 10.57938/e0d5f933-2333-4c14-817f-c39f861c9c0a
M3 - WU Working Paper
T3 - Working Papers SFB "Adaptive Information Systems and Modelling in Economics and Management Science"
BT - A voting-merging clustering algorithm
PB - SFB Adaptive Information Systems and Modelling in Economics and Management Science, WU Vienna University of Economics and Business
CY - Vienna
ER -