JUCS - Journal of Universal Computer Science 18(4): 507-531, doi: 10.3217/jucs-018-04-0507
The Unification and Assessment of Multi-Objective Clustering Results of Categorical Datasets with H-Confidence Metric
expand article infoOnur Can Sert, Kayhan Dursun, Tansel Özyer, Jamal Jida§, Reda Alhajj|
‡ TOBB Economics and Technology University, Ankara, Turkey§ Lebanese University, Tripoli, Lebanon| University of Calgary, Calgary, Canada
Open Access
Abstract
Multi objective clustering is one focused area of multi objective optimization. Multi objective optimization attracted many researchers in several areas over a decade. Utilizing multi objective clustering mainly considers multiple objectives simultaneously and results with several natural clustering solutions. Obtained result set suggests different point of views for solving the clustering problem. This paper assumes all potential solutions belong to different experts and in overall; ensemble of solutions finally has been utilized for finding the final natural clustering. We have tested on categorical datasets and compared them against single objective clustering result in terms of purity and distance measure of k-modes clustering. Our clustering results have been assessed to find the most natural clustering. Our results get hold of existing classes decided by human experts.
Keywords
multi-objective clustering, NSGA-II, h-confidence