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Polynomial tapered two-stage least squares method in nonlinear regression

机译:非线性回归中的多项式锥形两阶段最小二乘法

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Nonlinear models play an important role in various scientific disciplines and engineering. The parameter estimation of these models should be efficient to make better decisions. Ordinary least squares (OLS) method is used for estimating the parameters of nonlinearregression models when all regression assumptions are satisfied. If there is a problem with these assumptions, OLS fails to give efficient results. This paper examines the efficiency of parameter estimation under the problem of autocorrelated errors. Some methods have been proposed in order to overcome the problem and obtain efficient parameter estimates especially for autoregressive (AR) processes. One of the most commonly used method is two-stage least squares (2SLS). This method is based on generalized least squares. In this paper, a novel approach is proposed for 2SLS method by evaluating a polynomial tapering procedure on autocorrelated errors. This new method is called tapered two-stage least squares (T2SLS). The finite sample properties and improvements of T2SLS are explored by means of some real life examples and a Monte Carlo simulation study. Both numerical and experimental results reveal that T2SLS can give more efficient parameter estimates especially in small samples under the autocorrelation problem when compared to OLS and 2SLS.
机译:非线性模型在各种科学学科和工程中都发挥着重要作用。这些模型的参数估计应有效地做出更好的决策。当满足所有回归假设时,使用普通最小二乘法(OLS)估计非线性回归模型的参数。如果这些假设存在问题,则OLS无法给出有效的结果。本文研究了自相关误差问题下参数估计的效率。已经提出了一些方法来克服该问题并且获得有效的参数估计,尤其是对于自回归(AR)过程。最常用的方法之一是两阶段最小二乘(2SLS)。该方法基于广义最小二乘法。本文通过评估自相关误差的多项式渐缩程序,提出了一种用于2SLS方法的新方法。这种新方法称为锥形两阶段最小二乘(T2SLS)。通过一些实际示例和蒙特卡洛模拟研究,探索了T2SLS的有限样本属性和改进。数值和实验结果均表明,与OLS和2SLS相比,T2SLS可以提供​​更有效的参数估计,尤其是在自相关问题下的小样本中。

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