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Attribute Space Visualization of Demographic Change

机译:人口变化的属性空间可视化

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This paper introduces an approach for closer integration of self-organizing maps into the visualization of spatio-temporal phenomena in G1S. It is proposed to provide a more explicit representation of changes occurring inside socio-economic units by representing their attribute space trajectories as line features traversing a two-dimensional display space. A self-organizing map consisting of several thousand neurons is first used to create a high-resolution representation of attribute space in two dimensions. Then, multi-year observations are mapped onto the neural network and linked to form trajectories. This method is implemented for a data set containing 254 counties and 34 demographic variables. Various visual results are presented and discussed in the paper, from the visualizations of individual component planes to the mapping of voting behavior onto temporal trajectories.
机译:本文介绍了一种将自组织图更紧密地集成到G1S中时空现象的可视化中的方法。提出通过将它们的属性空间轨迹表示为穿过二维显示空间的线特征来提供对社会经济单位内部发生的变化的更明确表示。首先使用由数千个神经元组成的自组织图在二维空间中创建属性空间的高分辨率表示。然后,将多年的观测值映射到神经网络并链接以形成轨迹。对包含254个县和34个人口统计学变量的数据集实施此方法。从单个组件平面的可视化到投票行为在时间轨迹上的映射,本文提出并讨论了各种视觉结果。

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