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Comparing Least-Squares and Goal Programming Estimates of Linear Regression Parameter

机译:线性回归参数的最小二乘和目标规划估计的比较

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A regression model is a mathematical equation that describes the relationship between two or more variables. In regression analysis, the basic idea is to use past data to fit a prediction equation that relates a dependent variable to independent variable(s). This prediction equation is then used to estimate future values of the dependent variable. The least-squares method is the most frequently used procedure for estimating the regression model parameters. However, the method of least-squares is biased when outliers exist. This paper proposes goal programming as a method to estimate regression model parameters when outliers must be included in the analysis.Keywords: Method of least squares; outliers; goal programming.
机译:回归模型是描述两个或多个变量之间关系的数学方程式。在回归分析中,基本思想是使用过去的数据来拟合将因变量与自变量相关联的预测方程。然后,使用此预测方程式估算因变量的未来值。最小二乘法是估计回归模型参数的最常用方法。但是,当存在异常值时,最小二乘法会产生偏差。本文提出了目标规划方法,作为在分析中必须包含离群值时估计回归模型参数的一种方法。离群值目标编程。

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