Dimensional modeling of medical data warehouse based on ontology

The two driving forces for designing dimensional models of data warehouse are data sources and business requirements. Medical data sources are characterized by too many data types, large amount of data, lack of associations among data, mixed dictionary tables, etc., which result in lacking uniform representation and effective organization among a large number of concepts. These features may lead to serious semantic heterogeneity among different data sources. Medical data warehouse design involves a wide range of business requirements, while the users' perspectives are different and the expression of semantic heterogeneity is substantial. So how to obtain and integrate these business requirements is a challenge. Aiming at the characteristics of medical data sources and business requirements, this paper proposes an ontology-based medical data warehouse dimensional modeling method. Experiment shows that this method can not only optimize the data warehouse requirements analysis process, but also effectively eliminate the semantic heterogeneity in data sources and business requirements, thereby greatly improving the efficiency of medical data warehouse dimensional modeling.

[1]  Yu Ge Domain ontology-based multidimensional modeling of marine environmental data warehouse , 2009 .

[2]  Ritu Khare,et al.  SAMSTAR: a semi-automated lexical method for generating star schemas from an entity-relationship diagram , 2007, DOLAP '07.

[3]  Jingjing Wang,et al.  Progress and its enlightenments in application research on emergy theory , 2011, 2011 19th International Conference on Geoinformatics.

[4]  Alberto Abelló,et al.  Automating multidimensional design from ontologies , 2007, DOLAP '07.

[5]  Steffen Staab,et al.  Ontology Learning for the Semantic Web , 2002, IEEE Intell. Syst..

[6]  Isabelle Comyn-Wattiau,et al.  A UML-based data warehouse design method , 2006, Decis. Support Syst..

[7]  Paolo Giorgini,et al.  GRAnD: A goal-oriented approach to requirement analysis in data warehouses , 2008, Decis. Support Syst..

[8]  K. Vivekanandan,et al.  An Ontology based Hybrid Approach to Derive Multidimensional Schema for Data warehouse , 2012 .

[9]  Abderrahim Sekkaki,et al.  Automating Data warehouse design using ontology , 2016, 2016 International Conference on Electrical and Information Technologies (ICEIT).

[10]  Torben Bach Pedersen,et al.  Discovering Multidimensional Structure in Relational Data , 2004, DaWaK.

[11]  Alberto Abelló,et al.  GEM: Requirement-Driven Generation of ETL and Multidimensional Conceptual Designs , 2011, DaWaK.

[12]  Hongming Cai,et al.  Research and Application of Hybrid-Driven Data Warehouse Modeling Method , 2011 .

[13]  Alberto Abelló,et al.  Automatic validation of requirements to support multidimensional design , 2010, Data Knowl. Eng..