Fast SVD and PCA

版本 1.3.0.0 (3.3 KB) 作者: Vipin Vijayan
Fast truncated SVD and PCA rectangular matrices
3.7K 次下载
更新时间 2014/7/7

查看许可证

Truncated Singular Value Decomposition (SVD) and Principal Component Analysis (PCA) that are much faster compared to using the Matlab svd and svds functions for rectangular matrices.
svdecon is a faster alternative to svd(X,'econ') for long or thin matrices.
svdsecon is a faster alternative to svds(X,k) for dense long or thin matrices where k << size(X,1) and size(X,2).
PCA versions of the two svd functions are also implemented.
---

function [U,S,V] = svdecon(X)
function [U,S,V] = svdecon(X,k)

Input:
X : m x n matrix
k : gets the first k singular values (if k not given then k = min(m,n))

Output:
X = U*S*V'
U : m x k
S : k x k
V : n x k

Description:
svdecon(X) is equivalent to svd(X,'econ')
svdecon(X,k) is equivalent to svds(X,k) where k < min(m,n)
This is faster than svdsecon when k is not much smaller than min(m,n)

---

function [U,S,V] = svdsecon(X,k)

Input:
X : m x n matrix
k : gets the first k singular values, k << min(m,n)

Output:
X = U*S*V' approximately (up to k)
U : m x k
S : k x k
V : n x k

Description:
svdsecon(X,k) is equivalent to svds(X,k) where k < min(m,n)
This function is useful if k << min(m,n) (see doc eigs)

---

function [U,T,mu] = pcaecon(X,k)

Input:
X : m x n matrix
Each column of X is a feature vector
k : extracts the first k principal components

Output:
X = U*T approximately (up to k)
T = U'*X
U : m x k
T : k x n

Description:
Principal Component Analysis (PCA)
Requires that k < min(m,n)

---

function [U,T,mu] = pcasecon(X,k)

Input:
X : m x n matrix
Each column of X is a feature vector
k : extracts the first k principal components, k << min(m,n)

Output:
X = U*T approximately (up to k)
T = U'*X
U : m x k
T : k x n

Description:
Principal Component Analysis (PCA)
Requires that k < min(m,n)
This function is useful if k << min(m,n) (see doc eigs)

引用格式

Vipin Vijayan (2024). Fast SVD and PCA (https://www.mathworks.com/matlabcentral/fileexchange/47132-fast-svd-and-pca), MATLAB Central File Exchange. 检索来源 .

MATLAB 版本兼容性
创建方式 R2013a
兼容任何版本
平台兼容性
Windows macOS Linux
致谢

启发作品: EOF

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!
版本 已发布 发行说明
1.3.0.0

Uses less memory now

1.2.0.0

Truncated

1.1.0.0

Title change

1.0.0.0