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Linear programming-based estimators in simple linear regression

机译:简单线性回归中基于线性规划的估计量

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摘要

In this paper we introduce a linear programming estimator (LPE) for the slope parameter in a constrained linear regression model with a single regressor. The LPE is interesting because it can be superconsistent in the presence of an endogenous regressor and, hence, preferable to the ordinary least squares estimator (LSE). Two different cases are considered as we investigate the statistical properties of the LPE. In the first case, the regressor is assumed to be fixed in repeated samples. In the second, the regressor is stochastic and potentially endogenous. For both cases the strong consistency and exact finite-sample distribution of the LPE is established. Conditions under which the LPE is consistent in the presence of serially correlated, heteroskedastic errors are also given. Finally, we describe how the LPE can be extended to the case with multiple regressors and conjecture that the extended estimator is consistent under conditions analogous to the ones given herein. Finite-sample properties ofthe LPE and extended LPE in comparison to the LSE and instrumental variable estimator (IVE) are investigated in a simulation study. One advantage of the LPE is that it does not require an instrument.
机译:在本文中,我们为带有单个回归变量的约束线性回归模型中的斜率参数引入了线性规划估计器(LPE)。 LPE之所以令人感兴趣,是因为它在存在内生回归变量的情况下可能是超一致的,因此比普通最小二乘估计器(LSE)更可取。我们研究LPE的统计特性时,考虑了两种不同的情况。在第一种情况下,假定回归变量在重复样本中是固定的。第二,回归变量是随机的并且可能是内生的。对于这两种情况,都建立了LPE的强一致性和精确的有限样本分布。还给出了在存在序列相关的异方差时LPE保持一致的条件。最后,我们描述了如何将LPE扩展到具有多个回归变量的情况,并推测扩展的估计量在类似于此处给出的条件下是一致的。在模拟研究中,研究了LPE和扩展LPE与LSE和仪器变量估计器(IVE)的有限样本属性。 LPE的一个优点是它不需要仪器。

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