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BLP estimation using Laplace transformation and overlapping simulation draws

机译:使用拉普拉斯变换和重叠仿真估计的BLP估计

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We derive the asymptotic distribution of the parameters of the Berry et al. (1995) (BLP) model in a many markets setting which takes into account simulation noise under the assumption of overlapping simulation draws. We show that as long as the number of simulation draws R and the number of markets T approach infinity, our estimator is root m = root min(R, T) consistent and asymptotically normal. We do not impose any relationship between the rates at which R and T go to infinity, thus allowing for the case of R T. We provide a consistent estimate of the asymptotic variance which can be used to form asymptotically valid confidence intervals. Instead of directly minimizing the BLP GMM objective function, we propose using Hamiltonian Markov Chain Monte Carlo methods to implement a Laplace-type estimator which is asymptotically equivalent to the GMM estimator. (C) 2020 Elsevier B.V. All rights reserved.
机译:我们推导了Berry et al.(1995)(BLP)模型的参数在多个市场环境下的渐近分布,其中考虑了重叠模拟图假设下的模拟噪声。我们证明,只要模拟的数量R和市场的数量T接近无穷大,我们的估计是根m=根min(R,T)一致且渐近正态的。我们没有在R和T趋于无穷大的速率之间施加任何关系,因此考虑到RT的情况。我们提供了渐近方差的一致估计,可用于形成渐近有效的置信区间。与直接最小化BLP GMM目标函数不同,我们建议使用哈密顿马尔可夫链蒙特卡罗方法实现一个拉普拉斯型估计,该估计与GMM估计渐近等价。(C) 2020爱思唯尔B.V.版权所有。

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