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Inference on regressions with interval data on a regressor or outcome

机译:用回归数据或结果上的间隔数据推断回归

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This paper examines inference on regressions when interval data are available on one variable, the other variables being measured precisely. Let a population be characterized by a distribution P(y,x,v,v_0,v_1), where y ∈ R~1, x ∈ R~k, and the real variables (v,v_0,v_1) satisfy v_0 ≤ v ≤ v_1. Let a random sample be drawn from P and the realizations of (y,x,v_0,v_1) be observed, but no those of v. The problem of interest may be to infer E(y|x, v) or E(v|x). This analysis maintains Interval (I), Monotonicity (M), and Mean Independence (MI) assumptions: (I) P(v_0 ≤ v ≤ v_1) = 1; (M) E(y|x,v) is monotone in v; (MI) E(y|x,v,v_0,v_1) = E(y|x, v). No restrictions are imposed on the distribution of the unobserved values of v within the observed intervals [v_0, v_1]. It is found that the IMMI Assumptions alone imply simple nonparametric bounds on E(y|x,v) and E(v|x). These assumptions invoked when y is binary and combined with a semiparametric binary regression model yield an identification region for the parameters that may be estimated consistently by a modified maximum score (MMS) method. The IMMI assumptions combined with a parametric model for E(x|x,v) or E(v|x) yield an identification region that may be estimated consistently by a modified minimum-distance (MMD) method. Monte Carlo methods are used to characterize the finite-sample performance of these estimators. Empirical case studies are performed using interval wealth data in the Health and Retirement Study and interval income data in the Current Population Survey.
机译:当检验一个变量的间隔数据时,本文研究了回归的推论,而其他变量被精确地测量。以分布P(y,x,v,v_0,v_1)为特征,其中y∈R〜1,x∈R〜k,实变量(v,v_0,v_1)满足v_0≤v≤ v_1。让我们从P中抽取一个随机样本,并观察到(y,x,v_0,v_1)的实现,但没有观察到v的实现。感兴趣的问题可能是推断E(y | x,v)或E(v | x)。该分析维持区间(I),单调性(M)和平均独立性(MI)假设:(I)P(v_0≤v≤v_1)= 1; (M)E(y | x,v)是v中的单调; (MI)E(y | x,v,v_0,v_1)= E(y | x,v)。在观察间隔[v_0,v_1]内,对v的未观察值的分布没有限制。发现仅IMMI假设就意味着E(y | x,v)和E(v | x)上的简单非参数范围。当y为二元时调用的这些假设与半参数二元回归模型结合使用时,将得出参数的标识区域,这些参数可以通过修改后的最大得分(MMS)方法一致地估算。 IMMI假设与E(x | x,v)或E(v | x)的参数模型相结合,得出了一个识别区域,该区域可以通过修改的最小距离(MMD)方法一致地估计。蒙特卡罗方法用于表征这些估计量的有限样本性能。使用健康与退休研究中的区间财富数据和当前人口调查中的区间收入数据进行经验案例研究。

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