Another Look at Single-Index Models Based on Series Estimation

Chaohua Dong, Jiti Gao, B. Peng
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引用次数: 2

Abstract

In this paper, a semiparametric single-index model is investigated. The link function is allowed to be unbounded and has unbounded support that answers a pen ding issue in the literature. Meanwhile, the link function is treated as a point in an infinitely many dimensional function space which enables us to derive the estimates for the index parameter and the link function simultaneously. This approach is different from the profile method commonly used in the literature. The estimator is derive d from an optimization with the constraint of identification condition for index parameter, which is a natural way but ignored in the literature. In addition, making use of a property of Hermite orthogonal polynomials, an explicit estimator for the index parameter is obtained. Asymptotic properties for the two estimators of the index parameter are established. Their efficiency is discussed in some special cases as well. The finite sample properties of the two estimates are demonstrated through an extensive Monte Carlo study and an empirical example.
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再看一下基于序列估计的单指数模型
本文研究了一类半参数单指标模型。link函数允许是无界的,并且具有无界的支持,以回答文献中的一个钢笔问题。同时,将链接函数视为无穷多维函数空间中的一个点,从而可以同时导出索引参数和链接函数的估计。这种方法不同于文献中常用的剖面法。该估计量是由一种带有指标参数辨识条件约束的优化方法导出的,这是一种自然的方法,但在文献中被忽略了。此外,利用Hermite正交多项式的一个性质,得到了指标参数的显式估计。建立了指标参数的两个估计量的渐近性质。在一些特殊情况下也讨论了它们的有效性。通过广泛的蒙特卡罗研究和一个经验例子证明了这两种估计的有限样本性质。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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