High-dimensional Censored Regression via the Penalized Tobit Likelihood

Tate Jacobson, H. Zou
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引用次数: 1

Abstract

High-dimensional regression and regression with a left-censored response are each well-studied topics. In spite of this, few methods have been proposed which deal with both of these complications simultaneously. The Tobit model -- long the standard method for censored regression in economics -- has not been adapted for high-dimensional regression at all. To fill this gap and bring up-to-date techniques from high-dimensional statistics to the field of high-dimensional left-censored regression, we propose several penalized Tobit models. We develop a fast algorithm which combines quadratic minimization with coordinate descent to compute the penalized Tobit solution path. Theoretically, we analyze the Tobit lasso and Tobit with a folded concave penalty, bounding the $\ell_2$ estimation loss for the former and proving that a local linear approximation estimator for the latter possesses the strong oracle property. Through an extensive simulation study, we find that our penalized Tobit models provide more accurate predictions and parameter estimates than other methods. We use a penalized Tobit model to analyze high-dimensional left-censored HIV viral load data from the AIDS Clinical Trials Group and identify potential drug resistance mutations in the HIV genome. Appendices contain intermediate theoretical results and technical proofs.
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基于惩罚Tobit似然的高维截尾回归
高维回归和具有左审查响应的回归都是研究得很好的主题。尽管如此,很少有人提出同时处理这两种复杂性的方法。Tobit模型——长期以来一直是经济学中删减回归的标准方法——根本没有被用于高维回归。为了填补这一空白,并将高维统计的最新技术引入高维左删节回归领域,我们提出了几个惩罚Tobit模型。提出了一种将二次最小化与坐标下降相结合的快速算法来计算惩罚Tobit解路径。从理论上分析了Tobit套索和带折叠凹惩罚的Tobit套索,限定了前者的$\ell_2$估计损失,证明了后者的局部线性逼近估计量具有强oracle性。通过广泛的模拟研究,我们发现我们的惩罚Tobit模型比其他方法提供更准确的预测和参数估计。我们使用惩罚Tobit模型来分析来自艾滋病临床试验组的高维左删减HIV病毒载量数据,并确定HIV基因组中潜在的耐药突变。附录包含中间的理论结果和技术证明。
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