基于模式的主子空间追踪和矩阵尖刺协方差模型。

IF 3.1 1区 数学 Q1 STATISTICS & PROBABILITY
Runshi Tang, Ming Yuan, Anru R Zhang
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引用次数: 0

摘要

本文介绍了一种新的框架,称为模式主子空间追踪(mopup),用于提取矩阵数据的行维和列维的隐藏变化。为了增强对框架的理解,我们引入了一类矩阵变量尖刺协方差模型,作为mopup算法开发的灵感。mopup算法包括两个步骤:平均子空间捕获(ASC)和交替投影。这些步骤专门用于捕获逐行和逐列的降维子空间,这些子空间包含数据中信息量最大的特征。ASC采用一种新颖的平均投影算子作为初始化,在无噪声环境下实现精确恢复。我们分析了mopup的收敛性和非渐近误差界,引入了一个块矩阵特征值摄动界,证明了经典摄动界失效的期望界。在模拟和真实数据集上的实验证明了该框架的有效性和实用性。最后,我们讨论了我们的方法推广到高阶数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mode-wise principal subspace pursuit and matrix spiked covariance model.

This paper introduces a novel framework called Mode-wise Principal Subspace Pursuit (MOP-UP) to extract hidden variations in both the row and column dimensions for matrix data. To enhance the understanding of the framework, we introduce a class of matrix-variate spiked covariance models that serve as inspiration for the development of the MOP-UP algorithm. The MOP-UP algorithm consists of two steps: Average Subspace Capture (ASC) and Alternating Projection. These steps are specifically designed to capture the row-wise and column-wise dimension-reduced subspaces which contain the most informative features of the data. ASC utilizes a novel average projection operator as initialization and achieves exact recovery in the noiseless setting. We analyse the convergence and non-asymptotic error bounds of MOP-UP, introducing a blockwise matrix eigenvalue perturbation bound that proves the desired bound, where classic perturbation bounds fail. The effectiveness and practical merits of the proposed framework are demonstrated through experiments on both simulated and real datasets. Lastly, we discuss generalizations of our approach to higher-order data.

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来源期刊
CiteScore
8.80
自引率
0.00%
发文量
83
审稿时长
>12 weeks
期刊介绍: Series B (Statistical Methodology) aims to publish high quality papers on the methodological aspects of statistics and data science more broadly. The objective of papers should be to contribute to the understanding of statistical methodology and/or to develop and improve statistical methods; any mathematical theory should be directed towards these aims. The kinds of contribution considered include descriptions of new methods of collecting or analysing data, with the underlying theory, an indication of the scope of application and preferably a real example. Also considered are comparisons, critical evaluations and new applications of existing methods, contributions to probability theory which have a clear practical bearing (including the formulation and analysis of stochastic models), statistical computation or simulation where original methodology is involved and original contributions to the foundations of statistical science. Reviews of methodological techniques are also considered. A paper, even if correct and well presented, is likely to be rejected if it only presents straightforward special cases of previously published work, if it is of mathematical interest only, if it is too long in relation to the importance of the new material that it contains or if it is dominated by computations or simulations of a routine nature.
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