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Parameter estimation of geographically weighted regression (GWR) model using weighted least square and its application

机译:使用加权最小二乘及其应用的地理加权回归(GWR)模型的参数估计

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Linear regression is a method that can be used to model the relationship between a dependent variable to one or more independent variables. There are some assumptions that must be fulfilled in the linear regression model, such as the error term is normally distributed with mean zero, constant error variance (homoscedasticity), and the error between observations are independent. When analyzing spatial data using a linear regression model, sometimes the homoscedastic assumption cannot be fulfilled because data condition on one location can be different with data condition in other location. Geographically Weighted Regression (GWR) model can be used to overcome the spatial heterogeneity problem. Parameters of GWR model can be estimated using Weighted Least Squares (WLS) method as basic of estimating parameters. As the weight is kernel weighting function. Kernel weighting function used in this paper is Gaussian kernel weighting function. There is an example of the GWR model application by using inpatient claims data of PT. XYZ members to see the relationship between the total inpatient cost to the hospitalization duration and hospital's room type for Typhoid Fever. Based on the map of parameter estimation on GWR model, it can be seen that there is a variation of the total inpatient cost in every subjects location. If only the linear regression model is used to analyze this data, there will be a misleading interpretation so that it is suitable to model the data with GWR model.
机译:线性回归是一种方法,可用于将相关变量与一个或多个自变量之间的关系模拟。在线性回归模型中必须满足一些假设,例如误差项通常以平均零,恒定的误差方差(同性恋度)分布,并且观测之间的误差是独立的。当使用线性回归模型分析空间数据时,有时不能满足同性恋的假设,因为一个位置上的数据条件可以与其他位置中的数据条件不同。地理加权回归(GWR)模型可用于克服空间异质性问题。可以使用加权最小二乘(WLS)方法来估计GWR模型的参数,作为估计参数的基本。随着重量是内核加权函数。本文中使用的内核加权函数是高斯内核加权功能。通过使用PT的Inpatient索赔数据存在GWR模型应用程序的示例。 XYZ成员可以看到住院时间和医院房间类型的住院成本与伤寒症的关系。基于GWR模型的参数估计的地图,可以看出,每个受试者位置的总存放成本都有变化。如果仅使用线性回归模型来分析此数据,则会有误导性解释,以便与GWR模型建模数据是适合模拟数据。

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