Best Subset Solution Path for Linear Dimension Reduction Models Using Continuous Optimization

IF 1.3 3区 生物学 Q4 MATHEMATICAL & COMPUTATIONAL BIOLOGY Biometrical Journal Pub Date : 2024-12-16 DOI:10.1002/bimj.70015
Benoit Liquet, Sarat Moka, Samuel Muller
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Abstract

The selection of best variables is a challenging problem in supervised and unsupervised learning, especially in high-dimensional contexts where the number of variables is usually much larger than the number of observations. In this paper, we focus on two multivariate statistical methods: principal components analysis and partial least squares. Both approaches are popular linear dimension-reduction methods with numerous applications in several fields including in genomics, biology, environmental science, and engineering. In particular, these approaches build principal components, new variables that are combinations of all the original variables. A main drawback of principal components is the difficulty to interpret them when the number of variables is large. To define principal components from the most relevant variables, we propose to cast the best subset solution path method into principal component analysis and partial least square frameworks. We offer a new alternative by exploiting a continuous optimization algorithm for best subset solution path. Empirical studies show the efficacy of our approach for providing the best subset solution path. The usage of our algorithm is further exposed through the analysis of two real data sets. The first data set is analyzed using the principle component analysis while the analysis of the second data set is based on partial least square framework.

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使用连续优化的线性降维模型的最佳子集求解路径
在有监督和无监督学习中,最佳变量的选择是一个具有挑战性的问题,尤其是在高维情况下,变量的数量通常远远大于观测值的数量。本文重点讨论两种多元统计方法:主成分分析和偏最小二乘法。这两种方法都是流行的线性降维方法,在基因组学、生物学、环境科学和工程学等多个领域都有大量应用。特别是,这些方法可以建立主成分,即由所有原始变量组合而成的新变量。主成分的一个主要缺点是在变量数量较多时难以解释。为了从最相关的变量中定义主成分,我们建议将最佳子集求解路径法引入主成分分析和偏最小二乘法框架。我们利用最佳子集求解路径的连续优化算法,提供了一种新的选择。实证研究表明,我们的方法能有效提供最佳子集求解路径。通过对两个真实数据集的分析,进一步揭示了我们算法的用途。第一个数据集使用原理成分分析法进行分析,而第二个数据集的分析则基于偏最小二乘法框架。
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来源期刊
Biometrical Journal
Biometrical Journal 生物-数学与计算生物学
CiteScore
3.20
自引率
5.90%
发文量
119
审稿时长
6-12 weeks
期刊介绍: Biometrical Journal publishes papers on statistical methods and their applications in life sciences including medicine, environmental sciences and agriculture. Methodological developments should be motivated by an interesting and relevant problem from these areas. Ideally the manuscript should include a description of the problem and a section detailing the application of the new methodology to the problem. Case studies, review articles and letters to the editors are also welcome. Papers containing only extensive mathematical theory are not suitable for publication in Biometrical Journal.
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