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时空地理加权回归模型及其拟合 被引量:13

Geographically and Temporally Weighted Regression Model and Its Fit Methods
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摘要 基于加权最小二乘原理,给出了时空地理加权回归模型的拟合方法,以及与之相关的权函数选取原则和确定窗宽参数的交叉确认法. The fit methods for geographicallly and temporally weighted regression is first given;the related select principle of weight function and the cross-validation of fixing bandwidth parameters are also provided by the principle of weighted least squares.
出处 《甘肃科学学报》 2011年第4期119-121,共3页 Journal of Gansu Sciences
关键词 时空地理加权回归模型 权函数 窗宽参数 交叉确认法 geographically and temporally weighted regression weight function bandwidth parameter cross-validation procedure
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参考文献8

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二级参考文献26

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