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A new use of importance sampling to reduce computational burden in simulation estimation

机译:重要性抽样的新用途是减少仿真估计中的计算负担

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Simulation estimators (Lerman and Manski 1981; McFadden, Eco-nometrica 57(5):995-1026, 1989; Pakes and Pollard, Econometrica 57:1027-1057, 1989) have been of great use to applied economists and marketers. They are simple and relatively easy to use, even for very complicated empirical models. That said, they can be computationally demanding, since these complicated models often need to be solved numerically, and these models need to be solved many times within an estimation procedure. This paper suggests methods that combine importance sampling techniques with changes-of-variables to address this caveat. These methods can dramatically reduce the number of times a particular model needs to be solved in an estimation procedure, significantly decreasing computational burden. The methods have other advantages as well, e.g. they can smooth otherwise non-smooth objective functions and can allow one to compute derivatives analytically. There are also caveats-if one is not careful, they can magnify simulation error. We illustrate with examples and a small Monte-Carlo study.
机译:模拟估算器(Lerman和Manski 1981; McFadden,Eco-nometrica 57(5):995-1026,1989; Pakes and Pollard,Econometrica 57:1027-1057,1989)在应用经济学家和市场营销人员中得到了很大的应用。它们非常简单并且相对易于使用,即使对于非常复杂的经验模型也是如此。就是说,它们可能需要计算,因为这些复杂的模型通常需要用数值方法求解,并且这些模型需要在估算过程中多次求解。本文提出了将重要性抽样技术与变量变化相结合的方法,以解决这一警告。这些方法可以大大减少在估计过程中需要解决特定模型的次数,从而大大减少了计算负担。所述方法还具有其他优点,例如。它们可以平滑原本不平滑的目标函数,并且可以让人们解析地计算导数。还有一些警告-如果不小心,它们会放大模拟错误。我们通过示例和一个小型蒙特卡洛研究来说明。

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