Semiparametric methods in applied econometrics: do the models fit the data?

J. Horowitz, S. Lee
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引用次数: 34

Abstract

Much empirical research in economics and other fields is concerned with estimating the mean of a random variable conditional on one or more explanatory variables (conditional mean function). The most frequently used estimation methods assume that the conditional mean function is known up to a finite number of parameters, but the resulting estimates can be highly misleading if the assumed parametric model is incorrect. This paper reviews several semiparametric methods for estimating conditional mean functions. These methods are more flexible than parametric methods and offer greater estimation precision than do fully nonparametric methods. The various estimation methods are illustrated by applying them to data on the salaries of professional baseball players in the USA. We find that a parametric model and several simple semiparametric models fail to capture important features of the data. However, a sufficiently rich semiparametric model fits the data well. We conclude that semiparametric models can achieve their aim of providing flexible representations of conditional mean functions, but care is needed in choosing the semiparametric specification. Our analysis also provides some suggestions for further research on semiparametric estimation.
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应用计量经济学中的半参数方法:模型是否与数据拟合?
经济学和其他领域的许多实证研究都关注于估计一个随机变量的均值,该随机变量的均值取决于一个或多个解释变量(条件均值函数)。最常用的估计方法假设条件平均函数已知有限数量的参数,但如果假设的参数模型不正确,结果估计可能会产生很大的误导。本文综述了几种估计条件平均函数的半参数方法。这些方法比参数方法更灵活,并且比完全非参数方法提供更高的估计精度。通过将各种估计方法应用于美国职业棒球运动员的工资数据来说明各种估计方法。我们发现一个参数模型和几个简单的半参数模型不能捕捉数据的重要特征。然而,一个足够丰富的半参数模型可以很好地拟合数据。我们得出结论,半参数模型可以实现提供条件平均函数的灵活表示的目的,但在选择半参数规范时需要注意。本文的分析也为半参数估计的进一步研究提供了一些建议。
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