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Sparse conformal predictors SCP

机译:稀疏的保形预测因子SCP

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Conformal predictors, introduced by Vovk et al. (Algorithmic Learning in a Random World, Springer, New York, 2005), serve to build prediction intervals by exploiting a notion of conformity of the new data point with previously observed data. We propose a novel method for constructing prediction intervals for the response variable in multivariate linear models. The main emphasis is on sparse linear models, where only few of the covariates have significant influence on the response variable even if the total number of covariates is very large. Our approach is based on combining the principle of conformal prediction with the e_1 penalized least squares estimator (LASSO). The resulting confidence set depends on a parameter ε > 0 and has a coverage probability larger than or equal to 1 - ε. The numerical experiments reported in the paper show that the length of the confidence set is small. Furthermore, as a by-product of the proposed approach, we provide a data-driven procedure for choosing the LASSO penalty. The selection power of the method is illustrated on simulated and real data.
机译:Vovk等人介绍的保形预测器。 (《随机世界中的算法学习》,纽约,Springer,2005年)通过利用新数据点与先前观察到的数据的符合性概念来建立预测间隔。我们提出了一种新颖的方法来构造多元线性模型中响应变量的预测区间。主要重点是稀疏线性模型,在该模型中,即使协变量的总数非常大,只有很少的协变量对响应变量有重大影响。我们的方法是基于将保形预测的原理与e_1惩罚最小二乘估计器(LASSO)相结合。所得的置信度集取决于参数ε> 0,并且覆盖概率大于或等于1-ε。本文报道的数值实验表明,置信集的长度很小。此外,作为所提出方法的副产品,我们提供了一种数据驱动程序来选择LASSO罚分。在模拟和真实数据上说明了该方法的选择能力。

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