Methods for identifying clusters of cells in sparse data cubes of multidimensional information systems

The data model in information system based on the multi-dimensional approach is a multidimensional data cube. Systems with a multi-Aspect description of the subject area are characterized by large data cubes with sparseness. It complicates the data storage organization and creates difficulties in the process of data analysis. Possible cube cells can be represented as possible member combinations. The analysis of semantically related members belonging to different dimensions allows identifying clusters - sets of cells that have similar properties. Clusters are constructed from groups of values of dimensions, which are semantically related to groups of values of other dimensions. Logical methods of intellectual analysis can be used to construct clusters of cells. In the framework of a logical approach, a member combination is represented as a conjunction of the pairs "Measurement" - "Measurement value". The identified clusters can be used as the elements in the data model of the information system. © 2017 CEUR-WS. All rights reserved.

Authors
Conference proceedings
Publisher
CEUR-WS
Language
Russian
Pages
187-194
Status
Published
Volume
2064
Year
2017
Organizations
  • 1 Peoples' Friendship University of Russia, Moscow, Russian Federation
  • 2 Federal Research Center Computer Science and Control of the Russian Academy of Sciences, Moscow, Russian Federation
Keywords
Cluster of member combinations; Data mining; Inductive inference.; Multidimensional data model; Set of possible member combinations; Sparse cube
Date of creation
19.07.2019
Date of change
19.07.2019
Short link
https://repository.rudn.ru/en/records/article/record/39094/
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