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Finite sample behavior of a sieve profile estimator in the single index model

机译:单指标模型中筛分轮廓估计量的有限样本行为

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We apply the results of Andresen et. al. (2014) on finite sample properties of sieve M-estimators and Andresen et. al. (2015) on the convergence of an alternating maximization procedure to analyse a sieve profile maximization estimator in the single index model with linear index function. The link function is approximated with $C^{3}$-Daubechies-wavelets with compact support. We derive results like Wilks phenomenon and Fisher Theorem in a finite sample setup even when the model is miss-specified. Furthermore we show that an alternating maximization procedure converges to the global maximizer and we assess the performance of Friedman’s projection pursuit procedure. The approach is based on showing that the conditions of Andresen et. al. (2014) and (2015) can be satisfied under a set of mild regularity and moment conditions on the link function, the regressors and the additive noise. The results allow to construct non-asymptotic confidence sets and to derive asymptotic bounds for the estimator as corollaries.
机译:我们应用Andresen等人的结果。等(2014年)关于筛子M估计量的有限样本属性和Andresen等。等(2015年)对交替最大化过程的收敛性进行分析,以分析具有线性指标函数的单指标模型中的筛面最大化估算器。链接函数可以通过带有紧凑支持的$ C ^ {3} $-Daubechies小波来近似。即使模型未指定,我们也可以在有限的样本设置中得出类似Wilks现象和Fisher定理的结果。此外,我们证明了交替最大化过程收敛于全局最大化器,并且我们评估了Friedman的投影追踪过程的性能。该方法基于证明Andresen等人的条件。等(2014)和(2015)可以在连杆函数,回归变量和加性噪声的一组适度规律性和矩条件下满足。结果允许构造非渐近置信集,并推导估计量的渐近边界。

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