MODELING THE LEVEL OF OPEN UNEMPLOYMENT IN CENTRAL JAVA WITH MULTIVARIATE ADAPTIVE REGRESSION SPLINES (MARS) APPROACH

E. Permatasari, Firda Nasuha, C. L. Prawirosastro
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Abstract

The level open unemployment is a value that shows the number of working-age population who looking for work, is preparing a business, feels impossible to get a job or already have a job but have not started working and often used for measured employment. Like at Central Java has increasing the total population at 2014 and have high total investation whereas should be can getting more employment, but actually still give high unemployment about 996.344 population at 2014. So that, in this research used nonparametric regression approach which multivariate adaptive regression splines (MARS) for modeling the level open unemployment in Central Java at 2014 because the level open unemployment in Central Java predicted influence by some factors. This research resulted in the best modeling for level of open unemployment in Central Java Province with value of GCV minimum that obtained at 0,396 with R-square at 86,5 percent as well as the predictor variables were entered into the model as much as three, namely the total population with interest rate of 100 percent, the minimum wage with interest rate of 41,955 percent, and the total working population with interest rate of 39,547 percent.   Keywords: MARS, Nonparametric regression, Level of open unemployment
用多变量自适应样条回归(mars)方法对爪哇中部开放失业水平进行建模
公开失业水平是一个值,显示正在寻找工作、正在准备创业、感觉不可能找到工作或已经有工作但尚未开始工作的工作年龄人口的数量,通常用于衡量就业。比如在中爪哇,2014年的总人口在增加,总投资也很高,而应该可以获得更多的就业,但实际上2014年的失业率仍然很高,约为996.344人。因此,由于2014年中爪哇的水平开放失业率预测了一些因素的影响,因此本研究采用多变量自适应样条回归(MARS)的非参数回归方法对中爪哇的水平开放失业率进行建模。本研究得出了中爪哇省公开失业水平的最佳模型,GCV最小值为0.396,r平方为86.5%,并且预测变量被输入到模型中多达三个,即利率为100%的总人口,利率为41,955%的最低工资和利率为39,547%的总工作人口。关键词:MARS,非参数回归,开放性失业水平
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