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  1. NTU Theses and Dissertations Repository
  2. 理學院
  3. 應用數學科學研究所
Please use this identifier to cite or link to this item: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/70483
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dc.contributor.advisor陳素雲(Su-Yun Huang)
dc.contributor.authorSheng-Yao Huangen
dc.contributor.author黃聖堯zh_TW
dc.date.accessioned2021-06-17T04:29:11Z-
dc.date.available2019-08-19
dc.date.copyright2019-08-19
dc.date.issued2019
dc.date.submitted2019-08-13
dc.identifier.citation[1] Vladimir Rokhlin, Arthur Szlam, and Mark Tygert. A randomized algorithm for prin-cipal component analysis. SIAM Journal on Matrix Analysis and Applications, 2009.
[2] Ting-Li Chen, Dawei D. Chang, Su-Yun Huang, Hung Chen, Chien-Yao Lin, and Wei-Chung Wang. Intergrating multiple random sketches for singular value decom-position. arXiv preprint, 2016.
[3] Yasuko Chikuse. Statistics on Special Manifolds. Springer, 2003.
[4] Xiying rainbow bridge. https://www.penghunsa.gov.tw/FileDownload/Album/NotSet/20161012162551758864338.jpg.
dc.identifier.urihttp://tdr.lib.ntu.edu.tw/jspui/handle/123456789/70483-
dc.description.abstract奇異值分解 (SVD) 是一個有名的矩陣分解的工具,但在矩陣的大小過大時將會計算得很久。Rokhlin et al. [1] 對快速 SVD 近似提供一個隨機化算法 (稱作 rSVD)。方法是首先先用高斯隨機投影將矩陣的行 (column) 或列 (row) 做一個縮減,然後再對這個叫低維度的子空間做 SVD。Chen et al. [2] 證明了 rSVD 的一致性 (consistency),本篇論文對 rSVD 的一致性給一個新的證明,證明方法為從矩陣角度高斯分配去做。Chen et al. [2] 還提出了一個根據高斯隨機投影的迭代法,此方法叫做 iSVD。除了一致性的證明外,還給了一個對圖片做低維度的估計當作例子。從例子的結果來看,可以發現到 iSVD 的計算時間比 SVD 少了許多,但出來的結果卻很相似。最後給了一個 iSVD 的python code,code 根據 Kolmogorov-Nagumo-type average 來完成。zh_TW
dc.description.abstractSingular value decomposition (SVD) is a popular tool for dimension re-duction. When the size of matrix is large, the computing load is heavy. Rokhlin et al [1] proposed a randomized algorithm for fast SVD approxi-mation (abbreviated as rSVD). Often Gaussian random projection is used to reduce the number of columns or rows, and next SVD is carried out in this lower-dimensional subspace. Chen et al. [2] proved the consistency of rSVD. In this paper, we give the rSVD consistency a new proof. Our new proof is based on matrix angular Gaussian distribution and is more instructive. Chen et al. [2] further proposed an integration method based on multiple random Gaussian projections, called iSVD. In addition to the new proof for consis-tency, we also provide an iSVD example for image low-rank approximation. From this example, we can see that the runtime of iSVD is less than the run-time of SVD without sacrificing much of accuracy. Finally, we provide a python code for iSVD, it is based on Kolmogorov-Nagumo-type average.en
dc.description.provenanceMade available in DSpace on 2021-06-17T04:29:11Z (GMT). No. of bitstreams: 1
U0001-0608201914494500.pdf: 2059320 bytes, checksum: ae25a17d06c0137487eb92a70cf3ff7b (MD5)
Previous issue date: 2019
en
dc.description.tableofcontents誌謝 iii
Acknowledgements iv
摘要 v
Abstract vi
1 Introduction 1
2 Literature review 2
2.1 Stiefel manifold 2
2.2 Matrix-variate Gaussian distribution 3
2.3 Randomized SVD (rSVD) 3
2.4 Integration of multiple randomized SVDs (iSVD) 4
3 Main result 5
3.1 Consistency Theorem 5
3.2 New proof of Theorem 3.1.1 5
4 Numerical example 11
5 Conclusion 13
A Appendix 14
A.1 Matlab code 14
A.2 Python code 16
Bibliography 21
dc.language.isoen
dc.subject隨機化算法zh_TW
dc.subject隨機投影zh_TW
dc.subject奇異值分解zh_TW
dc.subject矩陣角度高斯分配zh_TW
dc.subjectSingular value decompositionen
dc.subjectmatrix angular Gaussian distributionen
dc.subjectrandomized algorithmen
dc.subjectrandom projectionen
dc.title高斯隨機投影下的快速近似奇異值分解zh_TW
dc.titleFast Approximation for SVD via Gaussian Random Projectionsen
dc.typeThesis
dc.date.schoolyear109-1
dc.description.degree碩士
dc.contributor.oralexamcommittee洪弘(Hung Hung),陳宏(Hung Chen)
dc.subject.keyword矩陣角度高斯分配,隨機化算法,隨機投影,奇異值分解,zh_TW
dc.subject.keywordmatrix angular Gaussian distribution,randomized algorithm,random projection,Singular value decomposition,en
dc.relation.page21
dc.identifier.doi10.6342/NTU201902652
dc.rights.note有償授權
dc.date.accepted2019-08-13
dc.contributor.author-college理學院zh_TW
dc.contributor.author-dept應用數學科學研究所zh_TW
Appears in Collections:應用數學科學研究所

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