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  5. Unmixing Aggregate Data: Estimating the Social Composition of Enumeration Districts

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Article
English
1998

Unmixing Aggregate Data: Estimating the Social Composition of Enumeration Districts

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English
1998
Environment and Planning A Economy and Space
Vol 30 (11)
DOI: 10.1068/a301929

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Giles Foody
Giles Foody

University Of Nottingham

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Richard Mitchell
David Martín
Giles Foody

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 to 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, revealing something of the social composition of Southampton's enumeration districts. The unmixing technique utilises an artificial neural network.

How to cite this publication

Richard Mitchell, David Martín, Giles Foody (1998). Unmixing Aggregate Data: Estimating the Social Composition of Enumeration Districts. Environment and Planning A Economy and Space, 30(11), pp. 1929-1941, DOI: 10.1068/a301929.

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Publication Details

Type

Article

Year

1998

Authors

3

Datasets

0

Total Files

0

Language

English

Journal

Environment and Planning A Economy and Space

DOI

10.1068/a301929

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