PENENTUAN MODEL KEMISKINAN DI JAWA TENGAH DENGAN MULTIVARIATE GEOGRAPHICALLY WEIGHTED REGRESSION (MGWR)
The problem of poverty is a fundamental problem faced in a number of regions in Indonesia, to determine significant indicators on poverty by taking into account the spatial variation in the province of Central Java can use multivariate models Geographically Weighted Regression (MGWR). In the model M...
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Main Author: | SAPUTRI, SINDY (Author) |
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Format: | Academic Paper |
Published: |
2015-04-30.
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Online Access: | http://eprints.undip.ac.id/47174/ |
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