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Multivariate Adaptive Generalized Poisson Regression Spline (MAGPRS) on the number of acute respiratory infection infants

机译:多变量自适应通用泊松回归花键(Magprs)急性呼吸道感染婴儿的数量

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Acute Respiratory Infection (ARI) is an infectious disease of the respiratory tract that affects the structure of the respiratory tract. The ARI is a health problem that should not be ignored because it causes high infant mortality. Therefore, it is important to know the factors that influence the ARI. Generalized Poisson Regression (GPR) is one of method that can handle cases of overdispersion (variance is greater than the mean) or underdispersion (variance is less than the mean). Multivariate Adaptive Regression Spline as a statistical method for fitting the relationship between a set of input variables and dependent variables. This research is the development of the MARS method and GPR namely MAGPRS. The application of the MAGPRS model was carried out in the case of the number of ARI in infants from surabaya health departement 2017. The results showed that the importance of predictor variables in MAGPRS, the variables affecting the number of ARI patients in infants are the percentage of low birth weight (X_2), the percentage of unhealthy houses (X_5), and the percentage given nonexclusive breastfeeding to infants (X_1).
机译:急性呼吸道感染(ARI)是一种感染性疾病的呼吸道,影响呼吸道的结构。 ARI是一个不容忽视的健康问题,因为它会导致高婴儿死亡率。因此,了解影响ARI的因素非常重要。广义泊松回归(GPR)是可以处理过度分散的情况的方法之一(方差大于平均值)或未分散的(方差小于平均值)。多变量自适应回归样条作为拟合一组输入变量与依赖变量之间的关系的统计方法。这项研究是MARS方法和GPR的发展,即磁场。在2017年Surabaya健康部门的婴儿的ARI数量的情况下,在苏比亚疾病部门的次数的情况下进行了应用。结果表明,磁铁中预测器变量的重要性,影响婴儿患者患者数量的变量是百分比低出生体重(X_2),不健康的房屋(X_5)的百分比,以及给予婴儿(X_1)的非引入母乳喂养的百分比。

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