Geovisualization to support the exploration of large health and demographic survey data

被引:19
作者
Koua E.L. [1 ,2 ]
Kraak M.-J. [1 ,2 ]
机构
[1] Intl. Inst. Geoinform. Sci./Earth, Enschede 7500 AA
[2] Faculty of Geographical Sciences, Utrecht University, 3508 TC Utrecht
关键词
Knowledge Discovery; Knowledge Construction; Visual Exploration; Exploratory Task; Multivariate Attribute;
D O I
10.1186/1476-072X-3-12
中图分类号
学科分类号
摘要
Background. Survey data are increasingly abundant from many international projects and national statistics. They are generally comprehensive and cover local, regional as well as national levels census in many domains including health, demography, human development, and economy. These surveys result in several hundred indicators. Geographical analysis of such large amount of data is often a difficult task and searching for patterns is particularly a difficult challenge. Geovisualization research is increasingly dealing with the exploration of patterns and relationships in such large datasets for understanding underlying geographical processes. One of the attempts has been to use Artificial Neural Networks as a technology especially useful in situations where the numbers are vast and the relationships are often unclear or even hidden. Results. We investigate ways to integrate computational analysis based on a Self-Organizing Map neural network, with visual representations of derived structures and patterns in a framework for exploratory visualization to support visual data mining and knowledge discovery. The framework suggests ways to explore the general structure of the dataset in its multidimensional space in order to provide clues for further exploration of correlations and relationships. Conclusion. In this paper, the proposed framework is used to explore a demographic and health survey data. Several graphical representations (information spaces) are used to depict the general structure and clustering of the data and get insight about the relationships among the different variables. Detail exploration of correlations and relationships among the attributes is provided. Results of the analysis are also presented in maps and other graphics © 2004 Koua and Kraak, licensee BioMed Central Ltd.
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页数:19
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