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Methods, Models, and GIS

Spatial Random Slope Multilevel Modeling Using Multivariate Conditional Autoregressive Models: A Case Study of Subjective Travel Satisfaction in Beijing

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Pages 19-35 | Received 01 Jan 2015, Accepted 01 Sep 2015, Published online: 16 Nov 2015

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