在线核切片反回归

IF 1.5 3区 数学 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Jianjun Xu , Yue Zhao , Haoyang Cheng
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引用次数: 0

摘要

在线降维技术被广泛用于处理高维流数据。人们对各种方法进行了广泛的研究,包括在线主成分分析、在线切片反回归(OSIR)和在线核主成分分析(OKPCA)。然而,值得注意的是,对在线监督非线性降维技术的探索仍然有限。本文提出了一种名为 "在线内核切片反回归"(Online Kernel Sliced Inverse Regression,OKSIR)的新方法,专门解决随着样本量的增加,内核矩阵维度不断增加的难题。所提出的方法包含两个关键部分:近似线性依赖条件和字典变量集。这两个部分使得在线变量更新的阶次降低,从而提高了整个过程的效率。为了解决 OKSIR 问题,我们将其表述为一个在线广义特征分解问题,并采用随机优化技术来更新降维方向。我们建立了这种在线学习器的理论特性,为其应用奠定了坚实的基础。通过大量的仿真和实际数据分析,我们证明了所提出的 OKSIR 方法的性能可与批处理核切片反回归方法相媲美。这项研究极大地推动了在线降维技术的发展,提高了其在实际应用中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online kernel sliced inverse regression
Online dimension reduction techniques are widely utilized for handling high-dimensional streaming data. Extensive research has been conducted on various methods, including Online Principal Component Analysis, Online Sliced Inverse Regression (OSIR), and Online Kernel Principal Component Analysis (OKPCA). However, it is important to note that the exploration of online supervised nonlinear dimension reduction techniques is still limited. This article presents a novel approach called Online Kernel Sliced Inverse Regression (OKSIR), which specifically tackles the challenge of dealing with the increasing dimension of the kernel matrix as the sample size grows. The proposed method incorporates two key components: the approximate linear dependence condition and dictionary variable sets. These components enable a reduced-order approach for online variable updates, improving the efficiency of the process. To solve the OKSIR problem, we formulate it as an online generalized eigen-decomposition problem and employ stochastic optimization techniques to update the dimension reduction directions. Theoretical properties of this online learner are established, providing a solid foundation for its application. Through extensive simulations and real data analysis, we demonstrate that the proposed OKSIR method achieves performance comparable to that of batch processing kernel sliced inverse regression. This research significantly contributes to the advancement of online dimension reduction techniques, enhancing their effectiveness in practical applications.
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来源期刊
Computational Statistics & Data Analysis
Computational Statistics & Data Analysis 数学-计算机:跨学科应用
CiteScore
3.70
自引率
5.60%
发文量
167
审稿时长
60 days
期刊介绍: Computational Statistics and Data Analysis (CSDA), an Official Publication of the network Computational and Methodological Statistics (CMStatistics) and of the International Association for Statistical Computing (IASC), is an international journal dedicated to the dissemination of methodological research and applications in the areas of computational statistics and data analysis. The journal consists of four refereed sections which are divided into the following subject areas: I) Computational Statistics - Manuscripts dealing with: 1) the explicit impact of computers on statistical methodology (e.g., Bayesian computing, bioinformatics,computer graphics, computer intensive inferential methods, data exploration, data mining, expert systems, heuristics, knowledge based systems, machine learning, neural networks, numerical and optimization methods, parallel computing, statistical databases, statistical systems), and 2) the development, evaluation and validation of statistical software and algorithms. Software and algorithms can be submitted with manuscripts and will be stored together with the online article. II) Statistical Methodology for Data Analysis - Manuscripts dealing with novel and original data analytical strategies and methodologies applied in biostatistics (design and analytic methods for clinical trials, epidemiological studies, statistical genetics, or genetic/environmental interactions), chemometrics, classification, data exploration, density estimation, design of experiments, environmetrics, education, image analysis, marketing, model free data exploration, pattern recognition, psychometrics, statistical physics, image processing, robust procedures. [...] III) Special Applications - [...] IV) Annals of Statistical Data Science [...]
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