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Orthogonal Machine Learning: Power and Limitations

机译:正交机器学习:功能和局限性

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Double machine learning provides n^{1/2}-consistent estimates of parameters of interest even when high-dimensional or nonparametric nuisance parameters are estimated at an n^{-1/4} rate. The key is to employ Neyman-orthogonal moment equations which are first-order insensitive to perturbations in the nuisance parameters. We show that the n^{-1/4} requirement can be improved to n^{-1/(2k+2)} by employing a k-th order notion of orthogonality that grants robustness to more complex or higher-dimensional nuisance parameters. In the partially linear regression setting popular in causal inference, we show that we can construct second-order orthogonal moments if and only if the treatment residual is not normally distributed. Our proof relies on Stein’s lemma and may be of independent interest. We conclude by demonstrating the robustness benefits of an explicit doubly-orthogonal estimation procedure for treatment effect.
机译:即使以n ^ {-1/4}速率估计高维或非参数扰动参数,双机学习也可以提供感兴趣的参数的n ^ {1/2}一致估计。关键是要采用对扰动参数的扰动不敏感的一阶Neyman正交矩方程。我们表明,通过采用第k次正交性的概念,可以将n ^ {-1/4}的要求提高到n ^ {-1 /(2k + 2)},从而将鲁棒性赋予更复杂或更高维度的麻烦参数。在因果推理中普遍使用的部分线性回归设置中,我们表明,当且仅当处理残差不是正态分布时,我们才能构造二阶正交矩。我们的证明依赖于斯坦因的引理,并且可能具有独立利益。我们通过证明显式双正交估计程序对治疗效果的稳健性优势来得出结论。

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