Additive models play an essential role in studying non-linear relationships. Despite many recent advances in estimation, there is a lack of methods and theories for inference in high-dimensional additive models, including confidence interval construction and hypothesis testing. Motivated by inference for non-linear treatment effects, we consider the high-dimensional additive model and make inference for the derivative of the function of interest. We propose a novel decorrelated local linear estimator and establish its asymptotic normality. The main novelty is the construction of the decorrelation weights, which is instrumental in reducing the error inherited from estimating the nuisance functions in the high-dimensional additive model. We construct the confidence interval for the function derivative and conduct the related hypothesis testing. We demonstrate our proposed method over large-scale simulation studies and apply it to identify non-linear effects in the motif regression problem. Our proposed method is implemented in the R package \texttt{DLL} available from CRAN.
翻译:添加模型在研究非线性关系方面发挥着必不可少的作用。尽管在估算方面最近取得了许多进展,但缺乏高维添加模型的推断方法和理论,包括信心间隔构建和假设测试。我们以非线性处理效应的推断为动力,考虑高维添加模型,并对利益函数的衍生物进行推断。我们提议了一个新的与装饰有关的本地线性线性估测器,并确立了其无症状的正常性。主要的新颖之处是设计变色权重的构建,这有助于减少高维性添加模型中从估计扰动功能中继承的错误。我们为该函数衍生物构建了信任间隔,并进行了相关的假设测试。我们展示了我们在大规模模拟研究中的拟议方法,并应用该方法来确定模型回归问题的非线性效应。我们提出的方法在CRIAN提供的R 包件\ textt{DL}中得到了实施。