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分解汇总数据:估算普查区的社会构成

Unmixing aggregate data: estimating the social composition of enumeration districts.

作者信息

Mitchell R, Martin D, Foody G M

出版信息

Environ Plan A. 1998 Nov;30(11):1,929-41.

Abstract

"In this paper the authors address the problem of interpreting and classifying aggregate data sources and draw parallels between tasks commonly encountered in image processing and census analysis. Both of these fields already have a range of standard classification tools which are applied in such situations, but these are hindered by the aggregate nature of the input data. An approach to ¿unmixing' aggregate data, and thus revealing the nature of the subunit variation masked by aggregation, is introduced. This approach has already shown considerable success in Earth Observation applications, and in this paper the authors present the adaptation and application of the approach to Census small area statistics data for Southampton, Hants, [in England] revealing something of the social composition of Southampton's enumeration districts. The unmixing technique utilises an artificial neural network."

摘要

在本文中,作者探讨了解释和分类汇总数据源的问题,并在图像处理和人口普查分析中常见的任务之间作了比较。这两个领域都已有一系列标准分类工具应用于此类情况,但这些工具受到输入数据汇总性质的阻碍。本文介绍了一种“分解”汇总数据从而揭示被汇总掩盖的子单元变化性质的方法。这种方法在地球观测应用中已取得显著成功,作者在本文中展示了该方法对英国汉普郡南安普敦市人口普查小区域统计数据的改编和应用,揭示了南安普敦枚举区的一些社会构成情况。分解技术利用了人工神经网络。

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