Strong consistency of the projected total least squares dynamic mode decomposition for datasets with random noise

被引:0
作者
Kensuke Aishima
机构
[1] Hosei University,Faculty of Computer and Information Sciences
来源
Japan Journal of Industrial and Applied Mathematics | 2023年 / 40卷
关键词
Dynamic mode decomposition; Singular value decomposition; Total least squares; Eigenvalue problems; Strong convergence; 65F15; 15A18; 60B12; 37M10;
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学科分类号
摘要
Dynamic mode decomposition (DMD) has attracted much attention in recent years as an analysis method for time series data. In this paper, we perform asymptotic analysis on the DMD to prove strong consistency in the statistical sense. More specifically, we first give a statistical model of random noise for data with observation noise. Among many variants of the DMD, the total least squares DMD (TLS-DMD) is known as a robust method for the random noise in the observation. We focus on consistency analysis of the TLS-DMD in the statistical sense and aim to generalize the analysis for projected methods. This paper gives a general framework for designing projection methods based on efficient dimensionality reduction analogously to the proper orthogonal decomposition under the statistical model and proves its strong consistency of the estimation.
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页码:691 / 707
页数:16
相关论文
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