Data Mining v praxi: segmentace zákazníků dle nákupního chování

Show simple item record Poláčková, Julie 2012-02-29T13:24:46Z 2012-02-29T13:24:46Z 2011
dc.identifier Univerzitní knihovna (studovna) cze
dc.identifier.issn 1211-555X (Print)
dc.identifier.issn 1804-8048 (Online)
dc.description.abstract The paper focuses on the usage of data-mining techniques as a support tool for decision making. This paper describes the mining of hidden and potentially useful information from databases using data mining methods. These methods, sometimes called as techniques for knowledge discovering, help users, mostly managers, to make qualified decisions in the organization. The aim of the process of knowledge management is not only to collect information, but to transform it into knowledge and use it in a decision-making process. The purpose of this paper was to find and evaluate the different methodological approaches appropriate for customer segmentation. Various data mining techniques were used for demonstration of customer segmentation according to their purchasing behavior within a selected hypermarket. The following techniques were used for clustering: K-means clustering method, Two Step clustering method and Self Organizing Maps. The quality of final models was evaluated by Silhouette measure. It combines the principles of clusters separation and cohesion. Data mining model was constructed from approximately 60 thousand transaction records. Only the food records were selected for the analysis. The paper also examined the effect of the number of dimensions to the clustering. The original variables were reduced into a smaller number of uncorrelated principal components. These components were used for construction of a scatter plot to check the homogeneity of clusters. The results of this analysis confirmed that the reduction of dimensionality is an useful device for the evaluation of generated clusters. eng
dc.format p. 135-145
dc.language.iso cze
dc.publisher Univerzita Pardubice cze
dc.relation.ispartof Scientific papers of the Univerzity of Pardubice. Series D, Faculty of Economics and Administration. 20 (2/2011) eng
dc.subject data mining eng
dc.subject Cluster analysis eng
dc.subject principal component analysis eng
dc.subject customer segmentation eng
dc.subject knowledge discovering eng
dc.title Data Mining v praxi: segmentace zákazníků dle nákupního chování cze
dc.type Article eng
dc.identifier.signature 47940-20
dc.peerreviewed yes eng
dc.publicationstatus published eng

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