一种新的基于Shapley值回归的两阶段最小二乘

Sudhanshu K. Mishra
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引用次数: 1

摘要

用于获得联立线性方程模型估计结构系数的两阶段最小二乘法是一种著名的方法,它在第一阶段使用OLS来估计约简形式系数并获得当前外生变量数组中的期望值。在第二阶段,它使用OLS,一个方程接一个方程,其中解释预期的当前内生变量被用作代表其观察对应物的工具。已经指出,由于解释的预期当前内生变量是模型中预定变量的线性函数,因此将这些预期当前内生变量与一组预定变量作为回归量包含在一起,使估计过程容易受到共线性的有害影响,这可能使一些估计的结构系数具有膨胀的方差和错误的符号。为了解决这个问题,在第二阶段提出了使用Shapley值回归。为了说明,已经构建了一个模型,其中全球化不同方面的措施是内生变量,而民主不同方面的措施是预定变量。研究发现,传统的(基于ols的)两阶段最小二乘法(2-SLS)给出了一些带有意外符号的估计结构系数。相反,用所提出的2-SLS(其中Shapley值回归已在第二阶段使用)估计的所有结构系数都有期望符号。这些实证研究结果表明,全球化的措施本身是共形的,而且它们受到民主制度的积极影响。
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A New Kind of Two-Stage Least Squares Based on Shapley Value Regression
The Two-Stage Least squares method for obtaining the estimated structural coefficients of a simultaneous linear equations model is a celebrated method that uses OLS at the first stage for estimating the reduced form coefficients and obtaining the expected values in the arrays of current exogenous variables. At the second stage it uses OLS, equation by equation, in which the explanatory expected current endogenous variables are used as instruments representing their observed counterpart. It has been pointed out that since the explanatory expected current endogenous variables are linear functions of the predetermined variables in the model, inclusion of such expected current endogenous variables together with a subset of predetermined variables as regressors make the estimation procedure susceptible to the deleterious effects of collinearity, which may render some of the estimated structural coefficients with inflated variance as well as wrong sign. As a remedy to this problem, the use of Shapley value regression at the second stage has been proposed. For illustration a model has been constructed in which the measures of the different aspects of globalization are the endogenous variables while the measures of the different aspects of democracy are the predetermined variables. It has been found that the conventional (OLS-based) Two-Stage Least Squares (2-SLS) gives some of the estimated structural coefficients with an unexpected sign. In contrast, all structural coefficients estimated with the proposed 2-SLS (in which Shapley value regression has been used at the second stage) have an expected sign. These empirical findings suggest that the measures of globalization are conformal among themselves as well as they are positively affected by democratic regimes.
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