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Statistical Inference for High-Dimensional Models via Recursive Online-Score Estimation

机译:通过递归在线分数估计对高维模型的统计推断

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摘要

In this article, we develop a new estimation and valid inference method for single or low-dimensional regression coefficients in high-dimensional generalized linear models. The number of the predictors is allowed to grow exponentially fast with respect to the sample size. The proposed estimator is computed by solving a score function. We recursively conduct model selection to reduce the dimensionality from high to a moderate scale and construct the score equation based on the selected variables. The proposed confidence interval (CI) achieves valid coverage without assuming consistency of the model selection procedure. When the selection consistency is achieved, we show the length of the proposed CI is asymptotically the same as the CI of the "oracle" method which works as well as if the support of the control variables were known. In addition, we prove the proposed CI is asymptotically narrower than the CIs constructed based on the desparsified Lasso estimator and the decorrelated score statistic. Simulation studies and real data applications are presented to back up our theoretical findings. for this article are available online.
机译:在本文中,我们在高维广义线性模型中为单个或低维回归系数进行了新的估计和有效推理方法。允许预测器的数量相对于样本大小呈呈指数快速增长。通过解决得分函数来计算所提出的估计器。我们递归地进行模型选择以将高度从高度降低到中等尺度,并基于所选择的变量构建得分方程。所提出的置信区间(CI)在不假设模型选择程序的一致性的情况下实现有效覆盖范围。当达到选择一致性时,我们显示所提出的CI的长度与“Oracle”方法的CI相同的方式,以及如何知道控制变量的支持。此外,我们证明了所提出的CI比基于Disparsified Lasso估算者和去相关评分统计数据所构建的CI渐近。提出了仿真研究和实际数据应用来备份我们的理论发现。本文可在线获取。

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