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Evaluation of geographically weighted multivariate negative Binomial method using multivariate spatial infant mortality data

机译:使用多变量空间婴儿死亡率评估地理加权多变量负二元方法的评价

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Global regression assumes that the relationships being measured are stationary over space or the model is applied equally over the whole region. If there is spatial heterogeneity on the data, then the global model is not suitable to the reality. To overcome multivariate spatial over dispersed negative binomial data, we evaluate geographically weighted multivariate negative binomial (local method) and compare it to the global method (multivariate negative binomial). The results show that the geographically weighted negative binomial performs better than the global method. The log likelihood of the local method is higher than the global method. The deviance and mean square prediction error of the local method are smaller than the global method. Moreover, the prediction of dependent variables of the local method are closer to the observed data than the global method. The estimated coefficients of the local method vary, depending on where the data are observed.
机译:全局回归假设正在衡量的关系在空间上是静止的,或者模型在整个区域上同等地应用。 如果数据上存在空间异质性,则全局模型不适合现实。 为了克服分散的负二进制数据的多变量空间,我们评估地理加权多变量负二项式(本地方法)并将其与全局方法(多变量负二缩版)进行比较。 结果表明,地理加权负二项式比全球方法更好。 本地方法的日志可能性高于全局方法。 本地方法的偏差和均线预测误差小于全局方法。 此外,本地方法的依赖变量的预测比全局方法更接近观察到的数据。 本地方法的估计系数随着观察到数据的位置而变化。

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