TY - JOUR
T1 - A New Semi-Fuzzy Algorithm for Cluster Detection and Characterization
AU - Benrachid, Hanane AU - Bouroumi, Abdelaziz AU - Fajr, Rkia
JO - International Journal of Soft Computing
VL - 7
IS - 4
SP - 191
EP - 198
PY - 2012
DA - 2001/08/19
SN - 1816-9503
DO - ijscomp.2012.191.198
UR - https://makhillpublications.co/view-article.php?doi=ijscomp.2012.191.198
KW - pattern classification
KW -fuzzy clustering
KW -Cluster analysis
KW -unsupervised learning
KW -Morocco
AB - Researchers propose a new algorithm for detecting homogeneous clusters within
sets of unlabeled objects represented by numerical data of the form X = {x1,
x2,..., xn}
.
By quickly exploring the available data using an inter-objects similarity measure
plus an ambiguity measure of individual objects, this algorithm provides the number
of clusters present in X, plus a set of optimized prototypes V = {v1,
v2,..., vn}
where each prototype characterizes one of the c detected clusters. The performance
of the algorithm is illustrated by typical examples of simulation results obtained
for different real test data.
ER -