GIS环境下一种新的特征排序模型:解决复杂性和成本问题

Alberto Gemelli, C. Diamantini, D. Potena
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引用次数: 1

摘要

目前,通过大规模的计算方法对地理空间数据进行决策和分析是一种趋势。由于信息系统之间的互操作性日益增强,可用的地理空间信息量呈指数级增长。在应用程序和服务的多样性中,空间决策是为了实现业务目标而进行的,通常不需要地理专家的参与。信息系统在信息选择和分析方面的自主决策能力日益增强。我们的需求是,系统只需要一个输入目标,并产生人类可以理解的决策,并将其与自己的决策相结合。本文提出了一种自动特征排序方法,该方法可以根据特征在完成分析目标中的重要性对异构特征集进行排序。这种方法产生一个等级模型,该模型有助于选择所需的最小特征集,以达到所需的准确性或资源投入。这种特征排序有望在详细阐述地理空间数据时支持基本决策。该方法基于数据挖掘算法;所得到的秩模型具有空间可扩展性,很好地适应人类的知识形式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel feature ranking modelling in GIS context: Addressing complexity and cost issues
nowadays, there is the trend to carry out decisions and analysis on geospatial data by a massive computational approach. The amount of geospatial information available is increasing exponentially as result of the increasing interoperability between informative systems. In a multiplicity of applications and services spatial decision is carried out to pursue business goals, often without involving experts in geography. The informative systems have an increasing autonomous decisional capability on information selection and analysis. The demand is to have systems that require only an input goal, and produces decisions that humans can understand and integrate with their own decisions. In this paper it is proposed an automatic method of feature ranking, which can sort a heterogeneous set of features by their importance in accomplishing an analytical goal. This method produces a rank model that helps to select the minimal set of features needed to pursue a goal with a wanted accuracy or resources involvement. This feature ranking is expected to supports fundamental decisional making in elaborating geospatial data. The method is based on data mining algorithms; the obtained rank model appears to be spatially scalable and fits well to human form of knowledge.
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