巴厘岛非参数花键截断回归模型

Nadiya Yuvita Rizki, Gusti Ayu Made Srinadi, I. Komang, Gde Sukarsa
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引用次数: 0

摘要

非参数回归是一种灵活的方法,用于确定预测变量与未知响应变量之间的关系。截断样条曲线是用于估计非参数回归模型的一种方法。截尾样条线是估计非参数回归模型的一种有效方法,因为它能够通过结点来适应数据的特征。截断样条线使用最大似然估计法(MLE)估计参数,并以最小广义交叉验证(GCV)值找到最佳结点。本研究使用截断样条曲线对巴厘省的腹泻病例进行建模,研究了可能影响发病率的五个变量。最佳结点为 2-1-3-3-2,最小 GCV 值为 67572,38。研究发现,清洁饮用水设施的数量、符合卫生要求的食品经营场所、符合卫生要求的公共场所、人口密度和获得适当卫生设施的机会对腹泻发病率有显著影响。该模型的决定系数为 98.87%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PEMODELAN REGRESI NONPARAMETRIK SPLINE TRUNCATED KASUS KEJADIAN DIARE DI PROVINSI BALI
Nonparametric regression is a flexible approach used to determine the relationship between the predictor variable and the response variable is unknown. One method that can be used to estimate nonparametric regression models is the truncated spline. The truncated spline is an effective method to estimate nonparametric regression models due to its ability to adapt to the data's characteristics through knots. Truncated spline estimates its parameters with the maximum likelihood estimator (MLE) method and finds the optimal knot points with the minimum generalized cross validation (GCV) value. This study used the truncated spline to model diarrhea cases in Bali Province, examining five variables that could affect incidence. The optimal knot points were 2-1-3-3-2 with a minimum GCV value of  67572,38. The study found that the number of clean drinking water facilities, food management places that meet health requirements, public places that meet health requirements, population density, and access to proper sanitation facilities had a significant effect on diarrhea incidence. The coefficient of determination for this model is 98,87%.
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