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A simple nonparametric approach to estimating the distribution of random coefficients in structural models

机译:一种简单的非参数方法来估计结构模型中随机系数的分布

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摘要

We explore least squares and likelihood nonparametric mixtures estimators of the joint distribution of random coefficients in structural models. The estimators fix a grid of heterogeneous parameters and estimate only the weights on the grid points, an approach that is computationally attractive compared to alternative nonparamqtric estimators. We provide conditions, under which the estimated distribution function converges to the true distribution in the weak topology on the space of distributions. We verify most of the consistency conditions for three discrete choice models. We also derive the convergence rates of the least squares nonparametric mixtures estimator under additional,restrictions. We perform a Monte Carlo study on a dynamic programming model. (C) 2016 Elsevier B.V. All rights reserved.
机译:我们探索结构模型中随机系数联合分布的最小二乘和似然非参数混合估计。估计器固定异构参数的网格,仅估计网格点上的权重,与其他非参数估计器相比,该方法在计算上具有吸引力。我们提供条件,在这种条件下,估计分布函数在分布空间上收敛于弱拓扑中的真实分布。我们验证了三个离散选择模型的大多数一致性条件。我们还导出了附加约束下最小二乘非参数混合估计的收敛速度。我们对动态编程模型进行了蒙特卡洛研究。 (C)2016 Elsevier B.V.保留所有权利。

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