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An Iterative Coordinate Descent Algorithm for High-Dimensional Nonconvex Penalized Quantile Regression

机译:高维非凸罚分位数回归的迭代坐标下降算法

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摘要

We propose and study a new iterative coordinate descent algorithm (QICD) for solving nonconvex penalized quantile regression in high dimension. By permitting different subsets of covariates to be relevant for modeling the response variable at different quantiles, nonconvex penalized quantile regression provides a flexible approach for modeling high-dimensional data with heterogeneity. Although its theory has been investigated recently, its computation remains highly challenging when p is large due to the nonsmoothness of the quantile loss function and the nonconvexity of the penalty function. Existing coordinate descent algorithms for penalized least-squares regression cannot be directly applied. We establish the convergence property of the proposed algorithm under some regularity conditions for a general class of nonconvex penalty functions including popular choices such as SCAD (smoothly clipped absolute deviation) and MCP (minimax concave penalty). Our Monte Carlo study confirms that QICD substantially improves the computational speed in the p n setting. We illustrate the application by analyzing a microarray dataset.
机译:我们提出并研究一种新的迭代坐标下降算法(QICD),用于解决高维非凸罚分位数回归问题。通过允许协变量的不同子集与在不同分位数处的响应变量建模相关,非凸罚分位数回归提供了一种用于建模具有异质性的高维数据的灵活方法。尽管最近对其理论进行了研究,但是当p大时,由于分位数损失函数的不光滑性和罚函数的不凸性,其计算仍然具有很高的挑战性。用于惩罚最小二乘回归的现有坐标下降算法不能直接应用。我们在一般规则的非凸罚函数包括常规选择(例如SCAD(平滑限幅绝对偏差)和MCP(最小极大凹罚))的某些规则性条件下,建立了该算法的收敛性。我们的蒙特卡洛研究证实了QICD在p n设置下大大提高了计算速度。我们通过分析微阵列数据集来说明该应用程序。

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