Error-controlled feature selection for ultrahigh-dimensional and highly correlated feature space using deep learning

IF 2.1 4区 数学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Statistical Analysis and Data Mining Pub Date : 2024-03-05 DOI:10.1002/sam.11664
Arkaprabha Ganguli, Tapabrata Maiti, David Todem
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Abstract

Deep learning has been at the center of analytics in recent years due to its impressive empirical success in analyzing complex data objects. Despite this success, most existing tools behave like black-box machines, thus the increasing interest in interpretable, reliable, and robust deep learning models applicable to a broad class of applications. Feature-selected deep learning has emerged as a promising tool in this realm. However, the recent developments do not accommodate ultrahigh-dimensional and highly correlated features or high noise levels. In this article, we propose a novel screening and cleaning method with the aid of deep learning for a data-adaptive multi-resolutional discovery of highly correlated predictors with a controlled error rate. Extensive empirical evaluations over a wide range of simulated scenarios and several real datasets demonstrate the effectiveness of the proposed method in achieving high power while keeping the false discovery rate at a minimum.
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利用深度学习为超高维和高相关特征空间选择错误可控的特征
近年来,深度学习在分析复杂数据对象方面取得了令人印象深刻的经验性成功,因而成为分析领域的中心。尽管取得了这一成功,但大多数现有工具都表现得像黑盒子机器,因此人们对适用于广泛应用的可解释、可靠和稳健的深度学习模型的兴趣与日俱增。在这一领域,特征选择深度学习已成为一种前景广阔的工具。然而,最近的发展并不能适应超高维、高度相关的特征或高噪声水平。在本文中,我们提出了一种新颖的筛选和清理方法,借助深度学习,在误差率可控的情况下,以数据自适应的多分辨率方式发现高度相关的预测因子。在广泛的模拟场景和多个真实数据集上进行的大量实证评估证明,所提出的方法在实现高功率的同时,还能将错误发现率保持在最低水平。
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来源期刊
Statistical Analysis and Data Mining
Statistical Analysis and Data Mining COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCEC-COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
CiteScore
3.20
自引率
7.70%
发文量
43
期刊介绍: Statistical Analysis and Data Mining addresses the broad area of data analysis, including statistical approaches, machine learning, data mining, and applications. Topics include statistical and computational approaches for analyzing massive and complex datasets, novel statistical and/or machine learning methods and theory, and state-of-the-art applications with high impact. Of special interest are articles that describe innovative analytical techniques, and discuss their application to real problems, in such a way that they are accessible and beneficial to domain experts across science, engineering, and commerce. The focus of the journal is on papers which satisfy one or more of the following criteria: Solve data analysis problems associated with massive, complex datasets Develop innovative statistical approaches, machine learning algorithms, or methods integrating ideas across disciplines, e.g., statistics, computer science, electrical engineering, operation research. Formulate and solve high-impact real-world problems which challenge existing paradigms via new statistical and/or computational models Provide survey to prominent research topics.
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