APPLYING OF CLUSTERING METHODS IN THE INFORMATION-ANALYTICAL SYSTEM

Е. С. Яшина, М. А. Щербак

Abstract


The article is dedicated to the applying of data clustering methods in the development of information-analytical systems. Review of the existing clustering methods is executed. The algorithms that are based on the modified statistical (k-means) and hierarchical clustering methods are offered. The architecture of information-analytical system as a web-application that uses the proposed methods and algorithms for processing data received from various sources is developed. On the basis of these algorithms is made development of applications for sets of objects clustering.

Keywords


analysis, clustering, cluster analysis, hierarchical clustering, k-means.

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DOI: https://doi.org/10.32620/reks.2016.2.09

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