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首页> 外文期刊>Journal of Multivariate Analysis: An International Journal >Variable selection and estimation for longitudinal survey data
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Variable selection and estimation for longitudinal survey data

机译:纵向调查数据的变量选择和估计

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There is wide interest in studying longitudinal surveys where sample subjects are observed successively over time. Longitudinal surveys have been used in many areas today, for example, in the health and social sciences, to explore relationships or to identify significant variables in regression settings. This paper develops a general strategy for the model selection problem in longitudinal sample surveys. A survey weighted penalized estimating equation approach is proposed to select significant variables and estimate the coefficients simultaneously. The proposed estimators are design consistent and perform as well as the oracle procedure when the correct submodel was known. The estimating function bootstrap is applied to obtain the standard errors of the estimated parameters with good accuracy. A fast and efficient variable selection algorithm is developed to identify significant variables for complex longitudinal survey data. Simulated examples are illustrated to show the usefulness of the proposed methodology under various model settings and sampling designs.
机译:研究纵向调查引起了广泛的兴趣,在纵向调查中随着时间的推移连续观察了样本主体。纵向调查已在当今的许多领域中使用,例如在健康和社会科学中,用于探索关系或确定回归设置中的重要变量。本文针对纵向样本调查中的模型选择问题提出了一种通用策略。提出了一种调查加权惩罚估计方程方法,以选择重要变量并同时估计系数。当已知正确的子模型时,建议的估计器在设计上是一致的,并且性能与oracle过程相同。估计函数自举被应用于以良好的精度获得估计参数的标准误差。开发了一种快速有效的变量选择算法,以识别复杂纵向调查数据的重要变量。通过仿真示例说明了所提出方法在各种模型设置和采样设计下的有用性。

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