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1 Ordinary Least Squares2 Geographically Weighted Regression3. Total Nitrogen4. Kathmandu Valley5. Electrical Conductivity6. Land Use/Land Cover7. https://www.geodacenter.asu.edu8. Akaikae Information Criterion

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Yu, D.L., and Wu, C. 2005. Understanding population segregation from Landsat ETM+ imagery, a geographically weightregression approach. GIS and Remote Sensing. 41(3): pp. 187-206.

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