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Open AccessJournal ArticleDOI

A Data Cube Metamodel for Geographic Analysis Involving Heterogeneous Dimensions

TLDR
In this paper, the authors propose an original data cube metamodel defined in UML, based on concepts like common dimension levels and metadimensions, which can instantiate constellations of heterogeneous data cubes allowing SOLAP to perform multiscale, multi-territory and time analysis.
Abstract
Due to their multiple sources and structures, big spatial data require adapted tools to be efficiently collected, summarized and analyzed. For this purpose, data are archived in data warehouses and explored by spatial online analytical processing (SOLAP) through dynamic maps, charts and tables. Data are thus converted in data cubes characterized by a multidimensional structure on which exploration is based. However, multiple sources often lead to several data cubes defined by heterogeneous dimensions. In particular, dimensions definition can change depending on analyzed scale, territory and time. In order to consider these three issues specific to geographic analysis, this research proposes an original data cube metamodel defined in unified modeling language (UML). Based on concepts like common dimension levels and metadimensions, the metamodel can instantiate constellations of heterogeneous data cubes allowing SOLAP to perform multiscale, multi-territory and time analysis. Afterwards, the metamodel is implemented in a relational data warehouse and validated by an operational tool designed for a social economy case study. This tool, called “Racines”, gathers and compares multidimensional data about social economy business in Belgium and France through interactive cross-border maps, charts and reports. Thanks to the metamodel, users remain independent from IT specialists regarding data exploration and integration.

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Citations
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Journal ArticleDOI

A multi-source spatio-temporal data cube for large-scale geospatial analysis

TL;DR: The proposed infrastructure, GeoCube, extends the capacity of data cubes to multi-source big vector and raster data and improves EO data cube management and keeps connections with the business intelligence cube, which provides supplementary information for Eo data cube processing.
References
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Proceedings ArticleDOI

Big data: Issues, challenges, tools and Good practices

TL;DR: The various challenges and issues in adapting and accepting Big data technology, its tools (Hadoop) are discussed in detail along with the problems Hadoop is facing.
Journal ArticleDOI

Applying social network analysis in economic geography: framing some key analytic issues

TL;DR: In this article, the authors argue that network analysis has a huge potential to enrich the literature on clusters, regional innovation systems and knowledge spillovers, and describe how these challenges can be met through the application of network analysis techniques, using primary (survey) and secondary (patent) data.
Journal ArticleDOI

The dimensional fact model: a conceptual model for data warehouses

TL;DR: This paper formalizes a graphical conceptual model for data warehouses, called Dimensional Fact model, and proposes a semi-automated methodology to build it from the pre-existing schemes describing the enterprise relational database.
Journal ArticleDOI

A survey of logical models for OLAP databases

TL;DR: This paper presents different proposals for multidimensional data cubes, which are the basic logical model for OLAP applications, and divides the work in the field in two categories: commercial tools and academic efforts.
Journal ArticleDOI

A foundation for capturing and querying complex multidimensional data

TL;DR: The data model and query evaluation techniques discussed in this paper can be implemented using relational database technology and is also capable of exploiting multidimensional query processing techniques like pre-aggregation.