Many causal and policy effects of interest are defined by linear functionals of high-dimensional or non-parametric regression functions. $\sqrt{n}$-consistent and asymptotically normal estimation of the object of interest requires debiasing to reduce the effects of regularization and/or model selection on the object of interest. Debiasing is typically achieved by adding a correction term to the plug-in estimator of the functional, that is derived based on a functional-specific theoretical derivation of what is known as the influence function and which leads to properties such as double robustness and Neyman orthogonality. We instead implement an automatic debiasing procedure based on automatically learning the Riesz representation of the linear functional using Neural Nets and Random Forests. Our method solely requires value query oracle access to the linear functional. We propose a multi-tasking Neural Net debiasing method with stochastic gradient descent minimization of a combined Riesz representer and regression loss, while sharing representation layers for the two functions. We also propose a Random Forest method which learns a locally linear representation of the Riesz function. Even though our methodology applies to arbitrary functionals, we experimentally find that it beats state of the art performance of the prior neural net based estimator of Shi et al. (2019) for the case of the average treatment effect functional. We also evaluate our method on the more challenging problem of estimating average marginal effects with continuous treatments, using semi-synthetic data of gasoline price changes on gasoline demand.
翻译:利益的许多因果关系和政策影响是由高维或非参数回归功能的线性函数定义的。 $\ sqrt{n} 美元一致且无症状地正常估计利息对象要求降低对利息对象的正规化和(或)模式选择的影响。 降低偏差通常通过在功能的插座估计器中添加一个修正术语来实现,该术语的根据是所谓的影响函数的具体功能理论推导,并导致双重稳健和尼伊曼或度等属性。 我们采用自动学习线性功能代表的Riesz代表度和随机森林。 我们的方法只要求对线性功能的功能进行价值查询或触摸。 我们建议一种多功能网络降低偏差的方法,将混为Riesz代表的梯度最小化和回归性降低,同时为两种功能共享代表层。 我们还建议一种随机森林方法,在自动学习线性功能表现的Riestiz代表度代表度的直径直线性分析法。 我们用直径直的直径直线性分析法,我们用直径直径直径直的直径直径直的直线性分析直线性计算法。