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Feedforward Neural Network Models for Spatial Data Classification and Rule Learning

Yee Leung
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Yee Leung: The Chinese University of Hong Kong

Chapter 17 in Recent Developments in Spatial Analysis, 1997, pp 336-359 from Springer

Abstract: Abstract Spatial data classification has long been a major field of research in geographical analysis. Regardless of whether we are classifying statistical data into socioeconomic patterns or remotely sensed data into land covers, our classification task is to group high dimensional data into separate clusters which represent distinguishable spatial features or patterns.

Keywords: Neural Network; Hide Layer; Radial Basis Function; Fuzzy Number; Neural Network Model (search for similar items in EconPapers)
Date: 1997
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DOI: 10.1007/978-3-662-03499-6_17

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