Logistic regression remains one of the most widely used tools in applied statistics, machine learning and data science. However, in moderately high-dimensional problems, where the number of features $d$ is a non-negligible fraction of the sample size $n$, the logistic regression maximum likelihood estimator (MLE), and statistical procedures based the large-sample approximation of its distribution, behave poorly. Recently, Sur and Cand\`es (2019) showed that these issues can be corrected by applying a new approximation of the MLE's sampling distribution in this high-dimensional regime. Unfortunately, these corrections are difficult to implement in practice, because they require an estimate of the \emph{signal strength}, which is a function of the underlying parameters $\beta$ of the logistic regression. To address this issue, we propose SLOE, a fast and straightforward approach to estimate the signal strength in logistic regression. The key insight of SLOE is that the Sur and Cand\`es (2019) correction can be reparameterized in terms of the \emph{corrupted signal strength}, which is only a function of the estimated parameters $\widehat \beta$. We propose an estimator for this quantity, prove that it is consistent in the relevant high-dimensional regime, and show that dimensionality correction using SLOE is accurate in finite samples. Compared to the existing ProbeFrontier heuristic, SLOE is conceptually simpler and orders of magnitude faster, making it suitable for routine use. We demonstrate the importance of routine dimensionality correction in the Heart Disease dataset from the UCI repository, and a genomics application using data from the UK Biobank. We provide an open source package for this method, available at \url{https://github.com/google-research/sloe-logistic}.
翻译:物流回归仍然是应用统计、机器学习和数据科学中最广泛使用的工具之一。然而,在中等高度问题中,地物数量是抽样规模中不可忽略的部分美元,后勤回归最大可能性估计器(MLE),以及基于其分布大相模近的统计程序的统计程序,表现不佳。最近,Sur和Cand ⁇ es(2019年)显示,这些问题可以通过在这个高维系统中对MLE的抽样分布进行新的近似来纠正。不幸的是,这些纠正难以在实践中实施,因为它们需要估算地物量($d$d)是样本规模中不可忽略的部分美元;为了解决这一问题,我们建议SLOE,一个快速和直截的办法来估计物流回归的信号强度。SLOE的关键洞察显示,Sur和Candérical(2019年)的校正校正可以以正值为源值进行重新校正。 但这些校正的精确度(mell ) 信号力 因为它们只能用一个精确的参数($betrode) 数据来证明, 而Odealalalalalalalalalalalalalalalal) lidealalalalal a ligideal a listal 。