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Majorization minimization by coordinate descent for concave penalized generalized linear models

机译:凹罚广义线性模型的坐标下降最大化最小化。

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Recent studies have demonstrated theoretical attractiveness of a class of concave penalties in variable selection, including the smoothly clipped absolute deviation and minimax concave penalties. The computation of the concave penalized solutions in high-dimensional models, however, is a difficult task. We propose a majorization minimization by coordinate descent (MMCD) algorithm for computing the concave penalized solutions in generalized linear models. In contrast to the existing algorithms that use local quadratic or local linear approximation to the penalty function, the MMCD seeks to majorize the negative log-likelihood by a quadratic loss, but does not use any approximation to the penalty. This strategy makes it possible to avoid the computation of a scaling factor in each update of the solutions, which improves the efficiency of coordinate descent. Under certain regularity conditions, we establish theoretical convergence property of the MMCD. We implement this algorithm for a penalized logistic regression model using the SCAD and MCP penalties. Simulation studies and a data example demonstrate that the MMCD works sufficiently fast for the penalized logistic regression in high-dimensional settings where the number of covariates is much larger than the sample size.
机译:最近的研究表明,在变量选择中,包括平滑剪切的绝对偏差和最小极大凹凹惩罚,对一类凹凹惩罚具有理论吸引力。然而,在高维模型中凹凹罚解的计算是一项艰巨的任务。我们提出了一种通过坐标下降(MMCD)算法进行的最小化,用于计算广义线性模型中的凹罚解。与使用对罚函数进行局部二次或局部线性逼近的现有算法相比,MMCD试图通过二次损失来使负对数似然最大化,但不对罚函数使用任何近似。这种策略可以避免在每次解决方案更新中计算比例因子,从而提高了坐标下降的效率。在一定规律性条件下,我们建立了MMCD的理论收敛性。我们使用SCAD和MCP惩罚为惩罚性Logistic回归模型实现此算法。仿真研究和数据示例表明,MMCD对于协变量数量远大于样本数量的高维环境中的惩罚逻辑回归足够快地工作。

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