分数响应模型在会计调查研究中的应用

Susanna Gallani, Ranjani Krishnan
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引用次数: 53

摘要

调查研究广泛使用评定量表来测量感兴趣的构式。这种尺度的有限性提出了计量经济学估计的挑战。线性估计方法(例如OLS)经常产生超出评级尺度的预测值,并且不能解释预测因子的非恒定效应。已建立的非线性方法,如logit和probit变换,减轻了线性方法的许多缺点。然而,这些非线性方法受到角解的挑战,因为它们需要特别的变换。删减回归和截短回归改变了样本的组成,而Tobit方法依赖于分布假设,而这些假设往往没有反映在调查数据中,特别是当观测结果由于调查者和被调查者的特征而落在尺度的一个极端时。分数响应模型(FRM) (Papke和Wooldridge 1996,2008)克服了已有的线性和非线性计量经济学解决方案在有界数据研究中的许多局限性。在本研究中,我们首先回顾了FRM的计量经济学特征,并讨论了其在基于调查的会计研究中的适用性。其次,我们介绍了蒙特卡罗模拟的结果,以突出使用FRM相对于传统模型的优势。最后,我们使用医院患者满意度调查的数据,比较了传统OLS方法和FRM方法的估计结果,并得出FRM方法为研究有界因变量提供了一种改进的方法方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying the Fractional Response Model to Survey Research in Accounting
Survey research studies make extensive use of rating scales to measure constructs of interest. The bounded nature of such scales presents econometric estimation challenges. Linear estimation methods (e.g. OLS) often produce predicted values that lie outside the rating scales, and fail to account for nonconstant effects of the predictors. Established nonlinear approaches such as logit and probit transformations attenuate many shortcomings of linear methods. However, these nonlinear approaches are challenged by corner solutions, for which they require ad hoc transformations. Censored and truncated regressions alter the composition of the sample, while Tobit methods rely on distributional assumptions that are frequently not reflected in survey data, especially when observations fall at one extreme of the scale owing to surveyor and respondent characteristics. The fractional response model (FRM) (Papke and Wooldridge 1996, 2008) overcomes many limitations of established linear and non-linear econometric solutions in the study of bounded data. In this study, we first review the econometric characteristics of the FRM and discuss its applicability to survey-based studies in accounting. Second, we present results from Monte Carlo simulations to highlight the advantages of using the FRM relative to conventional models. Finally, we use data from a hospital patient satisfaction survey, compare the estimation results from a traditional OLS method and the FRM, and conclude that the FRM provides an improved methodological approach to the study of bounded dependent variables.
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