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Robust variable selection for finite mixture regression models

机译:有限混合回归模型的鲁棒变量选择

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Finite mixture regression (FMR) models are frequently used in statistical modeling, often with many covariates with low significance. Variable selection techniques can be employed to identify the covariates with little influence on the response. The problem of variable selection in FMR models is studied here. Penalized likelihood-based approaches are sensitive to data contamination, and their efficiency may be significantly reduced when the model is slightly misspecified. We propose a new robust variable selection procedure for FMR models. The proposed method is based on minimum-distance techniques, which seem to have some automatic robustness to model misspecification. We show that the proposed estimator has the variable selection consistency and oracle property. The finite-sample breakdown point of the estimator is established to demonstrate its robustness. We examine small-sample and robustness properties of the estimator using a Monte Carlo study. We also analyze a real data set.
机译:有限的混合物回归(FMR)模型经常用于统计建模,通常具有许多具有低意义的协变量。 可以采用可变选择技术来识别对响应影响不大的协变量。 这里研究了FMR模型中变量选择的问题。 惩罚的基于可能性的方法对数据污染敏感,并且当模型略微错过时,它们的效率可能会显着降低。 我们为FMR模型提出了一种新的强大变量选择过程。 所提出的方法基于最小距离技术,似乎具有模拟误操作的自动稳健性。 我们表明所提出的估算器具有变量选择一致性和Oracle属性。 建立估算器的有限样本击穿点以展示其鲁棒性。 我们使用蒙特卡罗研究检查估算器的小样本和鲁棒性属性。 我们还分析了一个真实的数据集。

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