USE OF LENGTH-BASED SIMILARITY MEASURE IN CLUSTERING PROBLEMS

Authors

  • N. E. Kondruk Uzhgorod National University, Uzhgorod, Ukraine., Ukraine

DOI:

https://doi.org/10.15588/1607-3274-2018-3-11

Keywords:

fuzzy clustering, cluster, measure of similarity, automatic grouping of objects, clustering.

Abstract

Context. The study is devoted to the development of a flexible mathematical apparatus, which should have a sufficiently wide range of
means for grouping objects into different types of similarity measures. This makes it possible, within the framework of the developed approach, to efficiently solve sufficiently broad classes of applied problems from different subject areas and to partition objects with clusters of different geometric forms.
Objective. The aim of the study is improvement of the efficiency of solving cluster problems by applying a similar measure of the vector
characteristics of objects.
Method. A fuzzy binary relation and its membership function describing the similarity of objects according to the level of similarity of
their vector attributes are described. The method of single-level clustering, based on fuzzy binary relations for the use of a similarity measure, is modified. In this case, certain values are set – the thresholds of clusterization that characterize the similarity degree of objects within the cluster. By changing the thresholds of clusterization, one can analyze the dynamics of cluster formation, investigate their structure and interrelationships between objects, determine the ultimate objects, and make a thorough analysis of the obtained results. The proposed approach does not require a preliminary determination of the number of clusters and allows clustering of data in concentric spheres in the absence of additional a priori information, so it can be used at the stage of preliminary data analysis.
Results. The developed approach is implemented in the form of a software system on the basis of which the actual applied problem of
investigating the intensity of population migration by regions of Ukraine is solved.
Conclusions. The conducted experimental researches show the convenience and efficiency of using the similarity measure for solving
applied problems requiring clustering in the form of concentric spheres. The presented approach provides an opportunity to conduct new
meaningful studies of input data. Prospects for further research are development of a decision support system, to solve the problems of
grouping objects into clusters by concentric spheres, cones, ellipses and their intersections; implementation of parallel multi-level clustering
carried out simultaneously by several criteria of similarity of objects and their application; study of the partitioning of objects by different
geometric forms of clusters for a single sample of input data and carrying out a meaningful interpretation of the obtained results

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How to Cite

Kondruk, N. E. (2018). USE OF LENGTH-BASED SIMILARITY MEASURE IN CLUSTERING PROBLEMS. Radio Electronics, Computer Science, Control, (3). https://doi.org/10.15588/1607-3274-2018-3-11

Issue

Section

Neuroinformatics and intelligent systems