Dissertação de Mestrado
Detecção de clusters irregulares para dados pontuais através danão-conectividade ponderada de grafos
Fecha
2011-02-28Autor
Angelica Ferreira Carvalho
Institución
Resumen
Strategies for detecting clusters for both spatial regions data and for point data are already quite widespread, it is understood by data point, situati- ons in which each element in the population is treated individually, knowing its location on the map under study. The problems with irregularly shaped clusters are not closed. The most likely cluster generally spreads in large por- tions of the map, impacting its geographic significance. Statistical methods that use the Kulldorffs Spatial Scan, combined with penalty functions were used to control the excessive freedom of clusters shapes. These methods have been not applied to point data. In this context, we will present a novel multi- objective algorithm using the Spatial Scan Statistic and penalty function forNon-connectivity Weighted to points data. The solution is a Pareto set, con- sisting of all clusters not less in both objectives than the others. The best solution is determined by evaluating the significance through Monte-Carlo simulations. We use a statistical theory to evaluate the statistical significance of the solutions obtained by multi-objective algorithm that employs the concept of attainment functions.