TITLE

Detecting Local Variations in Spatial Interaction Models by Means of Geographically Weighted Regression

AUTHOR(S)
Nissi, E.; Sarra, A.
PUB. DATE
February 2011
SOURCE
Journal of Applied Sciences;2011, Vol. 11 Issue 4, p630
SOURCE TYPE
Academic Journal
DOC. TYPE
Article
ABSTRACT
No abstract available.
ACCESSION #
59342240

 

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