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Hard Thresholding Regularised Logistic Regression: Theory and Algorithms

机译:硬阈值,主旨逻辑回归:理论与算法

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摘要

The hard thresholding regularised logistic regression in high dimensions with larger number of features than samples is considered. The sharp oracle inequality for the global solution is established. If the target signal is detectable, it is proven that with a high probability the estimated and true supports coincide. Starting with the KKT condition, we introduce the primal and dual active sets algorithm for fitting and also consider a sequential version of this algorithm with a warm-start strategy. Simulations and a real data analysis show that SPDAS outperforms LASSO, MCP and SCAD methods in terms of computational efficiency, estimation accuracy, support recovery and classification.
机译:硬阈值,主旨物流回归与大量高维度的功能被认为是比样品。甲骨文全球解决方案是不平等的建立。这是证明,以高概率估计和真正的一致支持。与马条件,介绍了原始的和双活跃集算法拟合和也考虑顺序的版本算法用热启动策略。和一个真正的数据分析表明,SPDAS优于套索,MCP和竹荚鱼的方法计算效率的估计精度,支持恢复和分类。

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