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Visual tracking of the Millennium Development Goals with a Self-organizing neural network

机译:用自组织神经网络视觉跟踪千年发展目标

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The Millennium Development Goals (MDGs) represent commitments to reduce poverty and hunger, and to tackle ill-health, gender inequality, lack of education, lack of access to clean water and environmental degradation by 2015. The eight goals of the Millennium Declaration are tracked using 21 benchmark targets, measured by 60 indicators. This paper explores whether the application of the Self-organizing map (SOM), a neural network-based projection and clustering technique, facilitates monitoring of the multidimensional MDGs. First, this paper presents a SOM model for visual benchmarking of countries and for visual analysis of the evolution of MDG indicators. Second, the SOM is paired with a geospatial dimension by mapping the clustering results on a geographic map. The results of this paper indicate that the SOM is a feasible tool for visual monitoring of MDG indicators.
机译:千年发展目标(MDGs)代表了到2015年减少贫困和饥饿,解决健康不良,性别不平等,缺乏教育,缺乏清洁水源和环境退化的承诺。实现了《千年宣言》的八个目标使用由60项指标衡量的21个基准目标。本文探讨了基于神经网络的投影和聚类技术自组织图(SOM)的应用是否有助于监测多维MDG。首先,本文介绍了一个SOM模型,用于对国家进行视觉基准化和对MDG指标的演变进行视觉分析。其次,通过将聚类结果映射到地理地图上,将SOM与地理空间维度配对。本文的结果表明,SOM是一种可视化的MDG指标监视工具。

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