向博士生介绍两阶段 M-估计器的渐近推理:通过使用数值导数降低分析和编码要求

IF 1.8 4区 经济学 Q2 ECONOMICS Southern Economic Journal Pub Date : 2024-05-31 DOI:10.1002/soej.12712
Joseph V. Terza
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引用次数: 0

摘要

两阶段 M-估计器(2SME)在实证经济学中的应用比比皆是。两阶段 M-估计器的渐近理论(渐近标准误差 [ASE] 的正确表述)已问世数十年。然而,由于所需的矩阵公式令人望而生畏,在进行基于两阶段估计的统计推断时,应用研究人员通常会采用自举方法,或忽略估计器的两阶段性质,并从打包的统计软件中报告未经修正的第二阶段输出结果。在本文中,我们为计量经济学教师提供了一种教学方法,向博士生介绍 2SME 的渐近推断,以便于软件实施和经验应用。我们试图向学生(及其教师)证明,计算 2SME 正确 ASE 的分析和编码要求不一定是沉重的负担(或令人望而却步的要求)。我们在这方面的主要教学(和实践)创新是建议使用数值导数(ND)软件来计算 ASE 公式中最具挑战性的部分。一个练习向学生证明,通过使用 ND 软件,可以克服基于 2SMEs 进行推理的分析和编码障碍,而不会放弃严谨性。
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Introducing Ph.D. students to asymptotic inference for two‐stage M‐estimators: Easing analytic and coding demands via the use of numerical derivatives
Applications of two‐stage M‐estimators (2SMEs) abound in empirical economics. Asymptotic theory for 2SMEs (correct formulation of the asymptotic standard errors [ASE]) has been available for decades. Nevertheless, due to the daunting nature of the requisite matrix formulations, when conducting statistical inference based on two‐stage estimates, applied researchers often implement bootstrapping methods or ignore the two‐stage nature of the estimator and report the uncorrected second‐stage outputs from packaged statistical software. In the present paper, we offer teachers of econometrics a pedagogical approach for introducing Ph.D. students to asymptotic inference for 2SMEs, with a view toward easier software implementation and empirical application. We seek to demonstrate to students (and their teachers) that the analytic and coding demands for calculating correct ASEs for the 2SME need not be burdensome (or prohibitive). The main instructional (and practical) innovation that we offer in this regard is our suggested use of numerical derivative (ND) software for calculating the most challenging components of the ASE formulations. An exercise demonstrates to the student that, by implementing ND software, one can overcome the analytic and coding impediments to conducting inference based on 2SMEs, without abandoning rigor.
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来源期刊
CiteScore
3.20
自引率
5.30%
发文量
58
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