In this paper, we study the linear transformation model in the most general setup. This model includes many important and popular models in statistics and econometrics as special cases. Although it has been studied for many years, the methods in the literature are based on kernel-smoothing techniques or make use of only the ranks of the responses in the estimation of the parametric components. The former approach needs a tuning parameter, which is not easily optimally specified in practice; and the latter is computationally expensive and may not make full use of the information in the data. In this paper, we propose two methods: a pairwise rank likelihood method and a score-function-based method based on this pairwise rank likelihood. We also explore the theoretical properties of the proposed estimators. Via extensive numerical studies, we demonstrate that our methods are appealing in that the estimators are not only robust to the distribution of the random errors but also lead to mean square errors that are in many cases comparable to or smaller than those of existing methods.
翻译:在本文中,我们在最一般的设置中研究线性转换模式,这一模式包括统计和计量经济学中作为特例的许多重要和流行的模式。虽然已经进行了多年的研究,但文献中的方法是以内核吸附技术为基础的,或者仅仅使用对准组成部分估计答复的等级。前者需要调试参数,在实践中,该参数不是最容易最理想地加以说明;后者是计算成本高昂,可能无法充分利用数据中的信息。在本文件中,我们提出了两种方法:一种对等的可能性等级法和一种基于分数的可能性法。我们还探索了拟议估计的估算者的理论特性。通过广泛的数字研究,我们证明我们的方法在吸引人们注意的是,估计者不仅对随机误差的分布很可靠,而且导致在很多情况下与现有方法相近或更小于现有方法的中间错误。