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Concordance-based estimation approaches for the optimal sufficient dimension reduction score

机译:基于一致的估计方法,用于最佳足够维度减少分数

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摘要

To characterize the dependence of a response on covariates of interest, a monotonic structure is linked to a multivariate polynomial transformation of the central subspace (CS) directions with unknown structural degree and dimension. Under a very general semiparametric model formulation, such a sufficient dimension reduction (SDR) score is shown to enjoy the existence, optimality, and uniqueness up to scale and location in the defined concordance probability function. In light of these properties and its single-index representation, two types of concordance-based generalized Bayesian information criteria are constructed to estimate the optimal SDR score and the maximum concordance index. The estimation criteria are further carried out by effective computational procedures. Generally speaking, the outer product of gradients estimation in the first approach has an advantage in computational efficiency and the parameterization system in the second approach greatly reduces the number of parameters in estimation. Different from most existing SDR approaches, only one CS direction is required to be continuous in the proposals. Moreover, the consistency of structural degree and dimension estimators and the asymptotic normality of the optimal SDR score and maximum concordance index estimators are established under some suitable conditions. The performance and practicality of our methodology are also investigated through simulations and empirical illustrations.
机译:为了表征对感兴趣的协变量的响应的依赖性,单调结构与具有未知结构程度和尺寸的中央子空间(CS)方向的多变量多项式转换相关联。在一个非常通用的半造型模型制剂下,示出了这种充足的尺寸减少(SDR)得分,以享受所存在,最优性和唯一性在规定的一致性概率函数中的规模和位置。鉴于这些属性及其单索引表示,构建了两种类型的一系列基于一系列的一系列的一系列的一系列相应的Concordance的信息标准来估计最佳的SDR分数和最大的一致性索引。估计标准进一步通过有效的计算程序进行。一般而言,第一方法中的梯度估计的外产物在计算效率中具有优点,第二种方法中的参数化系统大大减少了估计中的参数的数量。与大多数现有的SDR接近不同,只需要一个CS方向在提案中持续。此外,在某些合适的条件下建立了结构程度和尺寸估计和最佳SDR评分和最大一致性指数估计的渐近正常性的一致性。通过模拟和经验插图还研究了我们方法的性能和实用性。

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