VIF回归筛选超高维特征空间

Hassan S. Uraibi
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引用次数: 0

摘要

针对超高维特征空间中的变量选择问题,提出了迭代确定独立筛选(ISIS)方法。不幸的是,ISIS方法将特征的维度从超高转换为超低,并且当重要变量的数量特别大于筛选阈值时,可能导致不可靠的推断。该方法将特征的超高维转换为高维空间,以弥补ISIS方法丢失的一些信息。通过实际数据和仿真,将该方法与ISIS方法进行了比较。结果表明,该方法比ISIS方法更有效、更可靠。
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VIF-Regression Screening Ultrahigh Dimensional Feature Space
Iterative Sure Independent Screening (ISIS) was proposed for the problem of variable selection with ultrahigh dimensional feature space. Unfortunately, the ISIS method transforms the dimensionality of features from ultrahigh to ultra-low and may result in un-reliable inference when the number of important variables particularly is greater than the screening threshold. The proposed method has transformed the ultrahigh dimensionality of features to high dimension space in order to remedy of losing some information by ISIS method. The proposed method is compared with ISIS method by using real data and simulation. The results show this method is more efficient and more reliable than ISIS method.
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来源期刊
CiteScore
0.50
自引率
0.00%
发文量
5
期刊介绍: The Journal of Modern Applied Statistical Methods is an independent, peer-reviewed, open access journal designed to provide an outlet for the scholarly works of applied nonparametric or parametric statisticians, data analysts, researchers, classical or modern psychometricians, and quantitative or qualitative methodologists/evaluators.
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