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首页> 外文期刊>Journal of the American statistical association >An Effective Semiparametric Estimation Approach for the Sufficient Dimension Reduction Model
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An Effective Semiparametric Estimation Approach for the Sufficient Dimension Reduction Model

机译:充分降维模型的有效半参数估计方法

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In the exploratory data analysis, the sufficient dimension reduction model has been widely used to characterize the conditional distribution of interest. Different from the existing approaches, our main achievement is to simultaneously estimate two essential elements, basis and structural dimension, of the central subspace and the bandwidth of a kernel distribution estimator through a single estimation criterion. With an appropriate order of kernel function, the proposed estimation procedure can be effectively carried out by starting with a dimension of zero until the first local minimum is reached. Meanwhile, the optimal bandwidth selector is ensured to be a valid tuning parameter for the central subspace estimator. An important advantage of this estimation technique is its flexibility to allow a response to be discrete and some of covariates to be discrete or categorical providing that a certain continuity condition holds. Under very mild assumptions, we further derive the uniform consistency of the introduced optimization function and the consistency of the resulting estimators. Moreover, the asymptotic normality of the central subspace estimator is established with an estimated rather than exact structural dimension. In extensive simulations, the developed approach generally outperforms the competitors. Data from previous studies are also used to illustrate the proposal. On the whole, our methodology is very effective in estimating the central subspace and conditional distribution, highly flexible in adapting diverse types of a response and covariates, and practically feasible in obtaining an asymptotically optimal and valid bandwidth estimator. Supplementary materials for this article are available online.
机译:在探索性数据分析中,足够的降维模型已被广泛用于表征感兴趣的条件分布。与现有方法不同,我们的主要成就是通过一个估计标准同时估计中心子空间的两个基本元素(基础和结构维度)以及内核分布估计器的带宽。通过适当的核函数顺序,可以通过从零开始直到达到第一个局部最小值来有效地执行所提出的估计过程。同时,确保最佳带宽选择器是中央子空间估计器的有效调谐参数。这种估计技术的一个重要优点是其灵活性,它允许响应是离散的,而某些协变量是离散的或分类的,前提是要保持一定的连续性条件。在非常温和的假设下,我们进一步推导了引入的优化函数的一致一致性和所得估计量的一致性。此外,中心子空间估计量的渐近正态性是通过估计的而不是确切的结构尺寸建立的。在广泛的模拟中,开发的方法通常优于竞争对手。先前研究的数据也用于说明该建议。总体而言,我们的方法在估计中央子空间和条件分布方面非常有效,在适应各种类型的响应和协变量时具有很高的灵活性,并且在获得渐近最优和有效带宽估计量方面切实可行。可在线获得本文的补充材料。

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