通过平滑进行张量筛选的一般框架

IF 1 4区 数学 Q3 STATISTICS & PROBABILITY Electronic Journal of Statistics Pub Date : 2022-01-01 DOI:10.1214/21-ejs1954
Keqian Min, Qing Mai
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引用次数: 0

摘要

筛选是分析高维数据的重要技术。大多数筛选工具都是针对病媒开发的,并且在每次单独评估每个变量的意义上是边缘的。现在产生了许多多维数组(张量)。除了高维之外,这些数据还具有张量结构,可以用于更有效的分析。张量中相邻的变量往往同时重要或不重要。边际筛选方法忽略了这些信息。在本文中,我们提出了一个通用的张量筛选框架,称为平滑张量筛选(STS)。STS在评估一个变量时,通过汇总其相邻变量的信息,将现有边际筛选方法的优势与张量结构信息相结合。STS是广泛适用的,因为用于筛选的统计工具可以根据响应和预测因子的基本模型或数据类型来选择。此外,我们还建立了在温和条件下对STS的SURE筛选性能。数值研究表明,STS比边缘筛选方法具有更好的性能。MSC2020学科分类:62P10, 62F07。
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A general framework for tensor screening through smoothing
Screening is an important technique for analyzing high-dimensional data. Most screening tools have been developed for vectors and are marginal in the sense that each variable is evaluated individually at a time. Many multi-dimensional arrays (tensors) are generated nowadays. In addition to being high-dimensional, these data further have the tensor structure that should be exploited for more efficient analysis. Variables adjacent to each other in a tensor tend to be important or unimportant at the same time. Such information is ignored by marginal screening methods. In this article, we propose a general framework for tensor screening called smoothed tensor screening (STS). STS combines the strength of current marginal screening methods with tensor structural information by aggregating the information of its adjacent variables when evaluating one variable. STS is widely applicable since the statistical utility used in screening can be chosen based on the underlying model or data type of the responses and predictors. Moreover, we establish the SURE screening property for STS under mild conditions. Numerical studies demonstrate that STS has better performance than marginal screening methods. MSC2020 subject classifications: 62P10, 62F07.
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来源期刊
Electronic Journal of Statistics
Electronic Journal of Statistics STATISTICS & PROBABILITY-
CiteScore
1.80
自引率
9.10%
发文量
100
审稿时长
3 months
期刊介绍: The Electronic Journal of Statistics (EJS) publishes research articles and short notes on theoretical, computational and applied statistics. The journal is open access. Articles are refereed and are held to the same standard as articles in other IMS journals. Articles become publicly available shortly after they are accepted.
期刊最新文献
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