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Estimation of Nonparametric Conditional Moment Models With Possibly Nonsmooth Generalized Residuals

机译:具有非光滑广义残差的非参数条件矩模型的估计

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This paper studies nonparametric estimation of conditional moment restrictions in which the generalized residual functions can be nonsmooth in the unknown functions of endogenous variables. This is a nonparametric nonlinear instrumental variables (IV) problem. We propose a class of penalized sieve minimum distance (PSMD) estimators, which are minimizers of a penalized empirical minimum distance criterion over a collection of sieve spaces that are dense in the infinite-dimensional function parameter space. Some of the PSMD procedures use slowly growing finite-dimensional sieves with flexible penalties or without any penalty; others use large dimensional sieves with lower semicompact and/or convex penalties. We establish their consistency and the convergence rates in Banach space norms (such as a sup-norm or a root mean squared norm), allowing for possibly noncompact infinite-dimensional parameter spaces. For both mildly and severely ill-posed nonlinear inverse problems, our convergence rates in Hilbert space norms (such as a root mean squared norm) achieve the known minimax optimal rate for the nonparametric mean IV regression. We illustrate the theory with a nonparametric additive quantile IV regression. We present a simulation study and an empirical application of estimating nonparametric quantile IV Engel curves.
机译:本文研究了条件矩约束的非参数估计,其中内生变量的未知函数中的广义残差函数可能不平滑。这是一个非参数非线性仪器变量(IV)问题。我们提出了一种惩罚式筛分最小距离(PSMD)估计器,它们是在无限维函数参数空间中密集的筛子空间集合上的一种惩罚性经验最小距离准则的极小值。一些PSMD程序使用缓慢增长的有限尺寸筛网,并具有灵活的处罚或没有任何处罚;其他人则使用大尺寸筛网,其半紧密度和/或凸度罚则较低。我们在Banach空间范数(例如sup-范数或均方根范数)中建立它们的一致性和收敛速度,从而允许可能的非紧凑无限维参数空间。对于轻度和重度不适定的非线性逆问题,我们在希尔伯特空间范数(例如均方根范数)中的收敛速度均达到了已知的针对非参数均值IV回归的最小极大最优率。我们通过非参数加法四分位数回归来说明该理论。我们介绍了估计非参数分位数IV恩格尔曲线的仿真研究和经验应用。

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