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广义非参数模型中深度神经网络估计量的推断

Inference for Deep Neural Network Estimators in Generalized Nonparametric Models

Journal of the American Statistical Association · 2026
被引 0 · 同刊同年前 8%
ABS 4

中文导读

针对分类或指数族结果变量,提出深度神经网络估计量并构建推断框架,通过集成子抽样方法实现模型无关的方差估计和置信区间构建,适用于非参数逻辑、泊松和二项回归模型。

Abstract

While deep neural networks (DNNs) are used for prediction, inference on DNN-estimated subject-specific means for categorical or exponential family outcomes remains underexplored. We address this by proposing a DNN estimator under generalized nonparametric regression models (GNRMs) and developing a rigorous inference framework. Unlike existing approaches that assume independence between estimation errors and inputs to establish the error bound, a condition often violated in GNRMs, we allow for dependence and our theoretical analysis demonstrates the feasibility of drawing inference under GNRMs. To implement inference, we consider an Ensemble Subsampling Method (ESM) that leverages U-statistics and the Hoeffding decomposition to construct reliable confidence intervals for DNN estimates. We show that, under GNRM settings, ESM enables model-free variance estimation and accounts for heterogeneity among individuals in the population. Through simulations under nonparametric logistic, Poisson, and binomial regression models, we demonstrate the effectiveness and efficiency of our method. We further apply the method to the electronic Intensive Care Unit (eICU) dataset, a large scale collection of anonymized health records from ICU patients, to predict ICU readmission risk and offer patient-centric insights for clinical decision making.

深度神经网络非参数回归统计推断分类数据计数数据