Using Feasible Graphical Lasso Regression Method to Estimate the Parameters of General Linear Regression Model Under High Dimensional Data with Application

Mohammed Farhan, Ahmed Salih
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Abstract

The high dimensions problem is one of the important problems that affect the data, and with company of high dimensional data in the general linear regression model, it becomes very difficult to use classical estimation methods such as maximum likelihood method and moments method because these methods lead to biased and inefficient estimates for parameters of the model. The necessity to use new methods to estimate the parameters of the general linear regression model. In this research, two methods were used, the Smooth Integration of Counting Absolute Deviation SICA method, as well as the Feasible Graphical Lasso method FGLasso. Simulation data were used, as well as real data representing the level of pollution in the Tigris River. The results compared using the Mean Square Error MSE and the results showed that the FGLasso estimator is the best
用可行图拉索回归法估计高维数据下一般线性回归模型的参数及其应用
高维问题是影响数据的重要问题之一,当一般线性回归模型中存在高维数据时,由于极大似然法和矩量法等经典估计方法对模型参数的估计存在偏倚和低效率,使其难以应用。用新方法估计一般线性回归模型参数的必要性。本研究采用了计数绝对偏差平滑积分法(SICA)和可行图形套索法(FGLasso)两种方法。模拟数据和代表底格里斯河污染水平的真实数据被使用。用均方误差MSE和FGLasso估计器进行了比较,结果表明FGLasso估计器是最好的
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