Journal of Software Engineering and Applications

Volume 7, Issue 1 (January 2014)

ISSN Print: 1945-3116   ISSN Online: 1945-3124

Google-based Impact Factor: 2  Citations  

Multidimensional Design Paradigms for Data Warehouses: A Systematic Mapping Study

HTML  Download Download as PDF (Size: 555KB)  PP. 53-61  
DOI: 10.4236/jsea.2014.71006    5,149 Downloads   8,064 Views  Citations

ABSTRACT

Data warehouses (DW) must integrate information from the different areas and sources of an organization in order to extract knowledge relevant to decision-making. The DW development is not an easy task, which is why various design approaches have been put forward. These approaches can be classified in three different paradigms according to the origin of the information requirements: supply-driven, demand-driven, and hybrids of these. This article compares the methodologies for the multidimensional design of DW through a systematic mapping as research methodology. The study is presented for each paradigm, the main characteristics of the methodologies, their notations and problem areas exhibited in each one of them. The results indicate that there is no follow-up to the complete process of implementing a DW in either an academic or industrial environment; however, there is also no evidence that the attempt is made to address the design and development of a DW by applying and comparing different methodologies existing in the field.

Share and Cite:

Cravero, A. and Sepúlveda, S. (2014) Multidimensional Design Paradigms for Data Warehouses: A Systematic Mapping Study. Journal of Software Engineering and Applications, 7, 53-61. doi: 10.4236/jsea.2014.71006.

Cited by

[1] Multidimensional Integration of RDF Datasets
2019
[2] Volunteered multidimensional design to the test: The Farmland Biodiversity VGI4Bio project's experiment
2019
[3] Volunteered multidimensional design to the test: the farmland biodiversity VGI4Bio Project's experiment.
2019
[4] Modelo para la generación de datamarts en microempresas
III Congreso Internacional de Ciencias de la Computación y Sistemas de Información, 2019
[5] Une Méthodologie Collaborative de Conception d'Entrepôt de Données
2018
[6] DEVELOPMENT OF BUSINESS INFORMATION SYSTEMS AND CHANGE MANAGEMENT
2018
[7] Résolution des conflits lors de la conception collaborative de cubes OLAP pour des observatoires citoyens
2018
[8] Résolution collaborative des conflits des besoins d'analyse OLAP Spatial des données issues des observatoires citoyens
2018
[9] A Volunteer Design Methodology of Data Warehouses
Conceptual Modeling, 2018
[10] Multidimensional Model Design using Data Mining: A Rapid Prototyping Methodology
International Journal of Data Warehousing and Mining (IJDWM), 2017
[11] Building an Effective Data Warehousing for Financial Sector
2017
[12] Razvoj i primena OLAP tehnologije za poslovno odlučivanje
2017
[13] Data Warehouse Conceptual Design-A Literature Survey
2017
[14] A hybrid approach to building a multi-dimensional business intelligence system for electricity grid operators
Utilities Policy, 2016
[15] Design of a data warehouse model for decision support at higher education: A case study
Information Development, 2016
[16] Data Warehouse Design Methods Review for the Healthcare Domain
2015
[17] Data Warehouse Design Methods Review: Trends, Challenges and Future Directions for the Healthcare Domain
New Trends in Databases and Information Systems, 2015
[18] Образование инженерии программного обеспечения: систематический обзор литературы
2015
[19] Design Research: How to Find Unexpected Connections Between Analyzed Objects for Sustainable Development with the Support of Information Technology?
Recent Advances in Electrical Engineering and Computer Science, 2015
[20] Design of a data warehouse model for decision support at higher education A case study
Information Development, 2015
[21] GORE in the IT aligment to business strategy: A Systematic Mapping Study
IEEE Latin America Transactions, 2015
[22] Conceptual design of an automatic monitoring and reporting tool for adherence to tuberculosis therapy in Kigali area
2015
[23] Big Data in Changes: Is big data bigger then sustainable development and research design?
WSEAS TRANSACTIONS on COMPUTERS, 2015
[24] Data Warehousing and Activity Based Costing Model for Effective Decision Making
2014
[25] The Hierarchical Agglomerative Clustering with Gower index: a methodology for automatic design of OLAP cube in ecological data processing context
Ecological Informatics, 2014
[26] TOWARD AN ONTOLOGY BASED APPROACH FOR DATA WAREHOUSING
2014
[27] REQUIREMENT MODELING FOR DATA WAREHOUSE USING GOAL-UML APPROACH: THE CASE OF HEALTH CARE

Copyright © 2025 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.