GEOGRAPHICALLY WEIGHTED RIDGE REGRESSION MODELING AT THE OPEN UNEMPLOYMENT RATE IN WEST KALIMANTAN

Ferry Adrian, Yundari Yundari, Siti Aprizkiyandari
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Abstract

Geographically Weighted Ridge Regression (GWRR) is a development of ridge regression by adding a weighting element as additional information. GWRR is used to overcome spatial data containing local multicollinearity by modifying the ridge regression and GWR. The purpose of this study was to construct the GWRR model and analyze the effectiveness of the GWRR model in overcoming multicollinearity problems in spatial data. The research data used consists of response variables, namely the value of the open unemployment rate $(Y)$ in districts/cities of West Kalimantan Province in 2021 and the explanatory variables used are district/city minimum wage $(X_1)$, population $(X_2)$, percentage of poor population $(X_3)$, labor force $(X_4)$, and average years of schooling $(X_5)$. The analysis process was first carried out by using multiple linear regression modeling and GWR modeling. After that, centering and scaling transformations were carried out on the data, followed by GWRR modeling to overcome the problem of multicollinearity in spatial data. After all the models were obtained, a model comparison was made in terms of the MSE value. Based on the results of the study, 14 GWRR models were obtained by dividing into three regional groups based on the factors that affect the open unemployment rate for each district/city in West Kalimantan Province. In the comparison of the models used, when viewed from the MSE value, the GWRR model has the highest MSE value compared to the linear regression model and the GWR model. Even though the MSE value in the GWRR model is the largest among the three models, in the GWRR model the problem of multicollinearity can be resolved.
西加里曼丹公开失业率的地理加权脊回归模型
地理加权脊回归(GWRR)是在脊回归的基础上发展而来的,增加了加权元素作为附加信息。GWRR通过对脊回归和GWR的修正来克服包含局部多重共线性的空间数据。本研究的目的是构建GWRR模型,并分析GWRR模型在克服空间数据多重共线性问题中的有效性。研究数据采用响应变量为西加里曼丹省各区/市2021年公开失业率$(Y)$值,解释变量为各区/市最低工资$(X_1)$、人口$(X_2)$、贫困人口百分比$(X_3)$、劳动力$(X_4)$、平均受教育年限$(X_5)$。分析过程首先采用多元线性回归模型和GWR模型。然后对数据进行定心和尺度变换,再进行GWRR建模,克服空间数据的多重共线性问题。得到所有模型后,根据MSE值对模型进行比较。根据研究结果,根据影响西加里曼丹省各区(市)公开失业率的因素,将GWRR划分为3个区域组,得到14个GWRR模型。在所用模型的比较中,从MSE值来看,GWRR模型相对于线性回归模型和GWR模型的MSE值最高。尽管GWRR模型的MSE值在三种模型中最大,但GWRR模型可以解决多重共线性问题。
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