Spatial Autoregressive Quantile Regression with Application on Open Unemployment Data

Q2 Pharmacology, Toxicology and Pharmaceutics
F. Yanuar, Tasya Abrari, Izzati Rahmi HG, A. Zetra
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引用次数: 2

Abstract

The Open Unemployment Level (OUL) is the percentage of the unemployed to the total labor force. One of the provinces with the highest OUL score in Indonesia is West Java Province. If an object of observation is affected by spatial effects, namely spatial dependence and spatial diversity, then the regression model used is the Spatial Autoregressive (SAR) model. Quantile regression minimizes absolute weighted residuals that are not symmetrical. It is perfect for use on data distribution that is not normally distributed, dense at the ends of the data distribution, or there are outliers. The Spatial Autoregressive Quantile Regression (SARQR) is a model that combines spatial autoregressive models with quantile regression. This research used the data regarding OUR in West Java in 2020 from the Central Bureau of Statistics. This study develops to modeling the Open Unemployment Level in all province in Indonesia using modified spatial autoregressive model with the quantile regression approach. This study compares the estimation results based on SAR and SARQR models to obtain an acceptable model. In this study, it was found that the SARQR model is better than SAR at dealing with the problems of dependency and diversity in spatial data modeling and is not easily affected by the presence of outlier data.
空间自回归分位数回归及其在公开失业数据中的应用
公开失业水平(OUL)是失业人口占总劳动力的百分比。印尼OUL得分最高的省份之一是西爪哇省。如果观测对象受空间效应(即空间依赖性和空间多样性)的影响,则采用空间自回归(spatial Autoregressive, SAR)模型。分位数回归使不对称的绝对加权残差最小化。它非常适合用于非正态分布的数据分布,数据分布的末端密集或有异常值的数据分布。空间自回归分位数回归(SARQR)是空间自回归模型与分位数回归相结合的模型。本研究使用了中央统计局关于西爪哇2020年OUR的数据。本文采用改进的空间自回归模型和分位数回归方法对印度尼西亚各省的开放失业水平进行了建模。本研究比较了基于SAR和SARQR模型的估计结果,以获得一个可接受的模型。本研究发现,SARQR模型在处理空间数据建模中的依赖性和多样性问题上优于SAR模型,且不容易受到离群数据存在的影响。
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来源期刊
Science and Technology Indonesia
Science and Technology Indonesia Pharmacology, Toxicology and Pharmaceutics-Pharmacology, Toxicology and Pharmaceutics (miscellaneous)
CiteScore
1.80
自引率
0.00%
发文量
72
审稿时长
8 weeks
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