We propose estimators based on kernel ridge regression for nonparametric causal functions such as dose, heterogeneous, and incremental response curves. Treatment and covariates may be discrete or continuous in general spaces. Due to a decomposition property specific to the RKHS, our estimators have simple closed form solutions. We prove uniform consistency with finite sample rates via original analysis of generalized kernel ridge regression. We extend our main results to counterfactual distributions and to causal functions identified by front and back door criteria. We achieve state-of-the-art performance in nonlinear simulations with many covariates, and conduct a policy evaluation of the US Job Corps training program for disadvantaged youths.
翻译:我们提出基于内核脊回归的估算值,以得出剂量、差异和递增反应曲线等非参数性因果函数。一般空间的处理和共变可能是离散的或连续的。由于RKHS特性的分解,我们的估测器有简单的封闭形式解决方案。我们通过对内核脊回归的原始分析,证明与有限的抽样率一致。我们将我们的主要结果扩大到反事实分布以及前门和后门标准所确定的因果函数。我们在非线性模拟中取得了与许多共变国家最先进的表现,并对美国就业团针对弱势青年的培训方案进行了政策评价。