Title of article
A DC Optimization Algorithm for Clustering Problems with 𝑳𝟏-norm
Author/Authors
Bagirov, A.M Faculty of Science and Technology - Federation University, Ballarat, Australia , Taheri, S Faculty of Science and Technology - Federation University, Ballarat, Australia
Pages
23
From page
2
To page
24
Abstract
Clustering problems with the similarity measure defined by the 𝐿1-norm are studied.
Characterizations of different stationary points of these problems are given using their difference
of convex representations. An algorithm for finding the Clarke stationary points of the clustering
problems is designed and a clustering algorithm is developed based on it. The clustering algorithm
finds a center of a data set at the first iteration and gradually adds one cluster center at each
consecutive iteration. The proposed algorithm is tested using large real world data sets and
compared with other clustering algorithms.
Keywords
Incremental algorithm , Smoothing techniques , Nonsmooth optimization , Cluster analysis
Journal title
Astroparticle Physics
Serial Year
2017
Record number
2451751
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