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Computation of Bounds on Population Parameters When the Data Are Incomplete

机译:数据不完整时总体参数的界线计算

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This paper continues our research on the identification and estimation of statistical func-tionals when the sampling process produces incomplete data due to missing observations or interval measurement of variables. Incomplete data usually cause population parameters of interest in applications to be unidentified except under untestable and often controversial assumptions. However, it is often possible to identify sharp bounds on these parameters. The bounds are functionals of the population distribution of the available data and do not rely on untestable assumptions about the process through which data become incomplete. They contain all logically possible values of the population parameters. Moreover, every parameter value within the bounds is consistent with some model of the process that generates incomplete data. The bounds can be estimated consistently by replacing the population distribution of the data with the empirical distribution in the functionals that give the bounds. In practice, this is straightforward in some circumstances but computationally burdensome in others; in general, the bounds are the solutions to non-convex mathematical programming problems that can be difficult to solve. Horowitz and Manski (Censoring of Outcomes and Regressors Due to Survey Nonresponse: Identification and Estimation Using Weights and Imputations, Journal of Econometrics 84 (1998), pp. 37-58; Nonparametric Analysis of Randomized Experiments with Missing Covariate and Outcome Data, Journal of the American Statistical Association 95 (2000), pp. 77-84) studied nonparametric mean regression with missing data. In this paper, we first describe the general problem. We then present new findings on the computation of bounds on best linear predictors under square loss. We describe a genetic algorithm to compute sharp bounds and a min-imax approach yielding simple but non-sharp outer bounds. We use actual data to demonstrate the computations.
机译:当抽样过程由于缺少观测值或变量的间隔测量而产生不完整的数据时,本文将继续我们对统计函数的识别和估计的研究。数据不完整通常会导致无法识别应用程序中感兴趣的总体参数,除非存在无法测试且经常引起争议的假设。但是,通常有可能在这些参数上确定尖锐的界限。边界是可用数据的总体分布的函数,并且不依赖于数据变得不完整的过程的不可检验的假设。它们包含总体参数的所有逻辑上可能的值。而且,范围内的每个参数值都与生成不完整数据的过程的某些模型一致。通过用给出界限的函数中的经验分布替换数据的总体分布,可以一致地估计界限。实际上,在某些情况下这很简单,而在另一些情况下却在计算上很繁琐。通常,边界是难以解决的非凸数学规划问题的解决方案。 Horowitz和Manski(由于调查无响应而对结果和回归进行删失:使用权重和归因进行识别和估计,《计量经济学》 84(1998),第37-58页;缺少协变量和结果数据的随机实验的非参数分析,美国统计协会95(2000),第77-84页)研究了缺少数据的非参数均值回归。在本文中,我们首先描述一般问题。然后,我们将介绍平方损失下最佳线性预测变量的边界计算的新发现。我们描述了一种遗传算法来计算尖锐边界和产生简单但非尖锐外部边界的min-imax方法。我们使用实际数据来演示计算。

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