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首页> 外文期刊>Journal of Econometrics >Identification robust confidence set methods for inference on parameter ratios with application to discrete choice models
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Identification robust confidence set methods for inference on parameter ratios with application to discrete choice models

机译:用于参数比率推断的可靠鲁棒置信度确定方法及其在离散选择模型中的应用

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We study the problem of building confidence sets for ratios of parameters, from an identification robust perspective. In particular, we address the simultaneous confidence set estimation of a finite number of ratios. Results apply to a wide class of models suitable for estimation by consistent asymptotically normal procedures. Conventional methods (e.g. the delta method) derived by excluding the parameter discontinuity regions entailed by the ratio functions and which typically yield bounded confidence limits, break down even if the sample size is large (Dufour, 1997). One solution to this problem, which we take in this paper, is to use variants of Fieller's (1940,1954) method. By inverting a joint test that does not require identifying the ratios,Fieller-based confidence regions are formed for the full set of ratios. Simultaneous confidence sets for individual ratios are then derived by applying projection techniques, which allow for possibly unbounded outcomes. In this paper, we provide simple explicit closed-form analytical solutions for projection-based simultaneous confidence sets, in the case of linear transformations of ratios. Our solution further provides a formal proof for the expressions in Zerbe et al. (1982) pertaining to individualratios. We apply the geometry of quadrics as introduced by Dufour and Taamouti (2005, 2007), in a different although related context. The confidence sets so obtained are exact if the inverted test statistic admits a tractable exact distribution, for instance in the normal linear regression context. The proposed procedures are applied and assessed via illustrative Monte Carlo and empirical examples, with a focus on discrete choice models estimated by exact or simulation-based maximum likelihood. Our results underscore the superiority of Fieller-based methods.
机译:我们从识别鲁棒性的角度研究了建立参数比率的置信度集的问题。特别是,我们处理有限数量比率的同时置信度集合估计。结果适用于适用于通过一致渐近正态程序进行估计的各种模型。即使样本量很大,通过排除比率函数所带来的参数不连续区域(通常会产生有界置信度限制)而得出的常规方法(例如德尔塔方法)也会崩溃(Dufour,1997)。我们在本文中采用的解决此问题的方法之一是使用Fieller(1940,1954)方法的变体。通过反转不需要确定比率的联合测试,就可以为整个比率集合形成基于Fieller的置信区域。然后,通过应用投影技术得出各个比率的同时置信度集,这可能会产生无限的结果。在本文中,在比率线性变换的情况下,我们为基于投影的同时置信度集提供了简单的显式闭式解析解。我们的解决方案进一步为Zerbe等人的表达提供了形式证明。 (1982)关于个人比率。我们采用了Dufour和Taamouti(2005,2007)引入的二次曲面的几何结构,但其背景却有所不同。如果倒置检验统计量允许易于处理的精确分布(例如在正态线性回归上下文中),则这样获得的置信度集就是精确的。通过说明性的蒙特卡洛(Monte Carlo)和经验示例对建议的过程进行应用和评估,重点放在通过精确或基于模拟的最大可能性估计的离散选择模型上。我们的结果强调了基于Fieller的方法的优越性。

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