高维回归的加权Lasso子抽样

IF 0.6 Q4 STATISTICS & PROBABILITY Electronic Journal of Applied Statistical Analysis Pub Date : 2019-04-26 DOI:10.1285/I20705948V12N1P69
Hassan S. Uraibi
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引用次数: 4

摘要

套索回归方法在许多科学应用中被广泛使用。许多统计从业人员没有意识到,数据的微小变化会导致Lasso解路径不稳定。例如,在存在离群观测的情况下,拉索可能导致预测者错误选择率的百分比增加。另一方面,关于确定拉索的最佳收缩参数的讨论仍在进行中。因此,本文提出了一种鲁棒算法来处理存在异常值时Lasso的不稳定性。提出了一种新的权函数来克服离群观测值的问题。加权观测值是一定数量的子样本的子样本,以控制假套索选择。仿真研究已经进行,并使用真实数据来评估我们提出的算法的性能。结果表明,该方法比LAD-Lasso和加权LAD-Lasso算法效率更高,结果更可靠。
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Weighted Lasso Subsampling for HighDimensional Regression
Lasso regression methods are widely used for a number of scientic applications.Many practitioners of statistics were not aware that a small changein the data would results in unstable Lasso solution path. For instance, inthe presence of outlying observations, Lasso perhaps leads the increase inthe percentage of the false selection rate of predictors. On the other hand,the discussions on determining an optimal shrinkage parameter of Lasso isstill ongoing. Therefore, this paper proposed a robust algorithm to tacklethe instability of Lasso in the presence of outliers. A new weight function isproposed to overcome the problem of outlying observations. The weightedobservations are subsamples for a certain number of subsamples to controlthe false Lasso selection. The simulation study has been carried out and usesreal data to assess the performance of our proposed algorithm. Consequently,the proposed method shows more eciency than LAD-Lasso and weightedLAD-Lasso and more reliable results.
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CiteScore
1.40
自引率
14.30%
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