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LS,LAD组合损失的高维统计性质分析
引用本文:张凌洁,苏美红,张海.LS,LAD组合损失的高维统计性质分析[J].纯粹数学与应用数学,2013(5):536-543.
作者姓名:张凌洁  苏美红  张海
作者单位:西北大学数学系,陕西 西安,710127;西北大学数学系,陕西 西安,710127;西北大学数学系,陕西 西安,710127
基金项目:国家自然科学基金(11171272).
摘    要:主要针对损失函数为最小二乘LS(Least Squaresl和最小绝对偏差LAD(Least Absolute Deviation)的凸组合形式,研究了观测数n和预测数P均趋于无穷大(lim p/n=k,k〉0n-∞)时,高维稳健统计性质和高维罚稳健统计性质,得到了稳健估计和罚稳健估计的显示表达.结果显示这种凸组合损失函数的模型集成了LS和LAD损失的优点,同时消弱了它们的不足,具有优良的高维统计性质.

关 键 词:线性模型  高维  稳健估计  罚稳健估计  LS+LAD的凸组合

The statistical analysis of the combined loss of LS, LAD in high-dimension
Zhang Lingjie,Su Meihong,Zhang Hai.The statistical analysis of the combined loss of LS, LAD in high-dimension[J].Pure and Applied Mathematics,2013(5):536-543.
Authors:Zhang Lingjie  Su Meihong  Zhang Hai
Institution:(Department of Mathematics, Northwest University, Xi'an 710127, China)
Abstract:This article studies a convex combination of the Least Squares(LS) and Least Absolute Devia- tion(LAD). By studying the robust statistical properties of high-dimensional and penalized robust statisticM properties of high dimension when the number of observations n and the number of prediction p tends to infinity (lim p/n=k, k 〉 0n-∞), the expressions of robust estimation and penalized robust estimation are obtained. The result reveals that the loss function model of convex combination combines the advantages of the LS and LAD, at the same time, it relatively weakens their shortcomings, thus it has excellent high dimensional statistical properties.
Keywords:linear model  high dimension  robust estimation  penalized robust estimation  convex combination of LS+LAD
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