Singular Value Decomposition (SVD) is a factorization of a real or complex matrix, with many useful applications in signal processing and statistics.

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Incorrect angle detected between two planes

I want to calculate the angle between 2 planes, Reference plane and Plane1. When I feed the X,Y,Z co-ordinates of pointCloud to the function plane_fit.m (by Kevin Mattheus Moerman), I get the ...
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628 views

svd of a VERY LARGE sparse matrix

I have a 75000 x 75000 sparse matrix, and I'm interested in computing the full SVD. Whenever I use: [U,D,V] = svds(A,k) I get an out of memory error for k larger than 200. Is there a tracable way ...
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Matlab SVD on GPU

I'm testing SVD in Matlab R2014a and it seems that there is not speedup CPU vs GPU. I use gtx 460 and core 2 duo E8500. Here is my code: %test SVD n=10000; %host Mh= rand(n,1000); tic %[Uh,Sh,Vh]= ...
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86 views

What's the low dimensional?

My question is what is the low dimensional? I read several paper related to AI, Machine learning. Some of them mentioned something about low dimension, low dimensional factors and so on. I already ...
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73 views

Compute the combined image of SVD perturbations

I know how to generate a combined image: STEP1: I = imread('image.jpg'); STEP2: Ibw = single(im2double(I)); STEP3: [U S V] = svd(Ibw); %where U and S are letf and right odd vectors, respectively, ...
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103 views

Combination of SVD perturbation

To apply the combination of SVD perturbation: I = imread('image.jpg'); Ibw = single(im2double(I)); [U S V] = svd(Ibw); % calculate derviced image P = U * power(S, i) * V'; % where i is between 1 and ...
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72 views

How Dimensional reduction works for document classification

with reference to the following link What does dimensionality reduction mean?, dimensional reduction was well explained with movies and people example but what I could not understand was how ...
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75 views

how to do reverse operation of SVD in opencv?

I am applying SVD on image using opencv 2.4.9 command SVDecomp. at the time of back substitution it asks rhs array.What is that array? commands: 1. cv::SVDecomp(im_enc1,w,u,vt); where w,u,vt ...
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52 views

Choosing between different methods when the first one raises error message for linear regression

I have a linear regression problem (Ax=b). My initial approach that helped to solve some of my questions was using SVD and obtaining the chi-square and some other values that I am interested but it is ...
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501 views

Inaccuracies w/ prcomp? R lang PCA for eigenfaces

My question is: in the case of having a matrix we want to do PCA on, where the number of features greatly outnumbers the number of trials, why doesn't prcomp behave as expected (or am I missing ...
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315 views

large sparse matrix, svd with spark,python

I want to analyze data on spark. I need svd matrix to achieve recommendation algorithm using python or scala if python doesn't work. But the data is large and sparse. there are two columns in the ...
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2answers
205 views

How to fine tune input parameters for ALWRS Factorizer in Apache Mahout?

So I have been using Apache Mahout for building a recommendation system. I am interested in using the SVD matrix factorization method. I would like to know how I can fine tune the input paramter for :...
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251 views

Error plotting a gray scale image

I am facing an issue generating a gray image in R. The error reads "Error in grey(img) : invalid gray level, must be in [0,1]." I am not quite sure what must be done here. Please help. library(jpeg) ...
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1answer
353 views

Matlab: Efficiently do SVD many times? (to triangulate a 3D point cloud)

The context: Performing triangulation on many point pairs, 2d to 3d. The equation I have is: Mv = 0 with M = [P1 -x1 0] (6x6 matrix) v = [X, lambda1, lambda2]^T (6x1) ...
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1answer
1k views

Singular values sorted in descending order using svds from scipy.sparse.linalg

I am applying SVD to a large sparse matrix in Python. I am using svds from the scipy.sparse.linalg package. The singular values are sorted from an ascending order, so the singular vectors are arranged ...
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1answer
239 views

Segmentation Fault on ndarray matrices dot product

I am performing dot product of a matrix with 50000 rows and 100 columns with it's transpose. The values of the matrix is in float. A(50000, 100) B(100, 50000) Basically I get the matrix after ...
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484 views

Convergence error of function svd() in R

When coding in R, I find the function svd() may sometimes throw out the error message: Error in La.svd(x, nu, nv) : error code 1 from Lapack routine 'dgesdd'. After searching some information ...
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432 views

Convert matlab image svd method to opencv

I want to write a program with opencv by c++ in the visual studio. My code is following matlab code: close all clear all clc %reading and converting the image inImage=imread('pic.jpg'); inImageD=...
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110 views

Extreme Math .net Singular valued Decomposition out of memory

I am calculating Singular Valued Decomposition using Extreme.Math.net but programme throwing exception "OutOfMemoryException" inside svd.singularValues, svd.LeftSingularVector, svd.righrSingularVector....
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166 views

Recommender Systems: Does using Singular Value Decomposition rule out the possibility of using Euclidean Distance as way of measuring similarity?

I'm learning about recommender systems and learning about different similarity algorithms. Euclidean distance would change as the scale of the objects being compared changes. In that case, would SVD (...
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116 views

Eigen Values from Matlab

I'm trying to figure out Eigenvalues/Eigenvectors for large datasets in order to compute the PCA. I can calculate the Eigenvalues and Eigenvectors for 2x2, 3x3 etc.. The problem is, I have a dataset ...
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238 views

Simon Funk vs. Matlabs SVDS

I want to build an recommender system using Simon Funks' algorithm. The idea is to first construct the model offline in Matlab to perform some evaluation on the results to what number of features (or ...
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120 views

How to implement weighted SVD on vowpal wabbit?

I am trying to implement a One Class Collaborative Filtering (OCCF) Algorithm which uses weighted SVD. I was using Vowpal Wabbit to implement regularized Matrix Factorization to get recommendations ...
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267 views

Finding the knee point in an eigenvalue plot

I want to automatically find the "knee" point of the eigenvalue plot. I.e. I have a vector of eigenvalues (sorted from highest to lowest) and I want some heuristic to find the "knee" point. Is there ...
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47 views

write result as matrix form

let us consider following matrix a=[1 2 3;2 3 4;3 4 5;4 5 7] a = 1 2 3 2 3 4 3 4 5 4 5 7 let us consider it's svd [U E V]=svd(a) U = -0....
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357 views

large sparse matrix, svd

I want to calculate SVD , but I didn't find good java library for this. Now, I have data store in hashmap, because matrix didn't fit into memory due to the fact that sizes are about 400 000 X 10 000 ...
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1answer
474 views

dimensionality reduction for non square matrix?

Im going to do dimensionality reduction by using PCA/SVD for my extracted features. Suppose if I want to do classification using SIFT as the features and SVM as the classifier. I have 3 images for ...
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1answer
1k views

R - Get a matrix with the reduced number of features with SVD

I'm using the SVD package with R and I'm able to reduce the dimensionality of my matrix by replacing the lowest singular values by 0. But when I recompose my matrix I still have the same number of ...
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OpenCV SVD returns different result than MATLAB [duplicate]

I am using SVD function to get values. In my Opencv, I wrote Mat w, u, vt; SVD::compute(A, w, u, vt); After compare the values against the MATLAB, it seems u and vt matrix does not match with what ...
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3k views

compute SVD using Matlab function

I have a doubt about SVD. in the literature that i had read, it's written that we have to convert our input matrix into covariance matrix first, and then SVD function from matlab (SVD) is used. But, ...
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68 views

Pyramidal 3D histogram in matplotlib (as in 1976 historical movie about SVD)

Recently I discovered a surprising short CG movie about Singular Value Decomposition made in 1976 by Cleve Moler (the inventor of Matlab): http://www.youtube.com/watch?v=R9UoFyqJca8 I started to ...
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234 views

sign determination of singular vectors ind matlabs svd function

Does anybody know how the sign of the singular vectors resulting from Matlab's svd function is determined? Let: B = U*S*V' be a valid svd decomposition of a real or complex 2-by-2 matrix B, then: ...
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322 views

Find Image SVD without using SVD command

My question is pretty simple but I am new to SVD analysis. My final goal will be to implement denoise an Image using SVD but at the moment of time I am trying to comprehend the concept of Singular ...
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65 views

svd out of sample vector projection

Is it possible to project 'out of sample' vector into new space without using original data matrix? Given X (N * M) matrix, where N is number of vectors and M - number of features, we can decompose it ...
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use vertcat to get 1 dimensional data

suppose that we have following matrices >> X=create_matrix1(B,20); >> [U E V]=svd(X); in other word we have matrix and we are going to do svd of this matrix,then it is clear that ...
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212 views

use vertcat for concatenate columns of matrix to make 1D column

let us consider following bit of code: [m,n]=size(X); if m == (n+1) Z = vertcat(U(:,1:2:d), V(:,1:2:d)); else Z = vertcat(U(:,[1:2:d])); end C=Z(:); What I want it to do is concatenate ...
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646 views

PCA error in Matlab: svd did not converge

I was trying to do PCA on some matrix( approximately 2500 by 2500 floating points) using Matlab function pca. I tried some settings such as: pca(data, 'Centered', true, 'NumComponents', numComponents)...
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153 views

understanding of cumsum dfunction

let us suppose that we have SVD decomposition of some matrices [U E V]=svd(X); and i want to sketch graph of cumulative sum of singular value ,so i have done like this sigmas=diag(E); %figure;...
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846 views

reconstruct time series from SSA

let us consider following code clear all; B=xlsread('data_generations1','A1','g8:g301'); n=length(B); L =input('Give the size of the interval: ' );% Number of columns in the Data matrix m=n-...
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1k views

PCA of RGB Image

I'm trying to figure out how to use PCA to decorrelate an RGB image in python. I'm using the code found in the O'Reilly Computer vision book: from PIL import Image from numpy import * def pca(X): ...
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104 views

Truncated SVD implementation in Java

I need the Truncated SVD implementation in java. I need to pass a matrix of doubles and an integer value representing the rank where to filter out noise. In output i need a filtered matrix of doubles. ...
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331 views

When using SVD how do I unsort the scale factors along Sigma's diagonal?

I'm not entirely sure how I should phrase this question. Forgive my lack of expertise on the subject. Here is my best shot: I have a lower triangular transformation matrix A = [(a, 0), (c, d)]...
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130 views

How to find a set of maximum independent vectors given a matrix?

Given a matrix A, I want to find a set of maximum linearly independent columns ? I have tried use rref(A) in matlab, then find all the pivot, it works well in general matrix. But when the matrix is ...
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601 views

Find the identity of outliers in clustering

I'm a newbie to machine learning and these days experimenting with Singular Value Decomposition(SVD). Based on the x and y values I have drawn following digram using matplotlib. I'm in the process of ...
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611 views

how to reconstruct the original Image after modification using SVD

I have decomposed my image using svd and modified the singular values by adding matrix, let's say A. How can I get back this matrix A. For example: m=[1 2 3; 4 5 6; 7 8 9]; [u s v]= svd(m); A=[0 ...
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Is SVD included in MathNet.Numerics x86?

I need to calculate the Singular Value Decomposition of a Dense matrix but it doesn't seem to be included in the package I'm using: MathNet.Numerics x86 v2.4.0.26 downloaded from Nuget package manager....
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258 views

Singular value decomposition (SVD) using multithreading

I am running the partial SVD of a large (120k x 600k) and sparse (0.1 of non-zero values) matrix on a 3,5GHz/3,9GHz (6 cores / 12 threads) server with 128GB of RAM using SVDLIBC. Is it possible to ...
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2answers
547 views

Full SVD of a large sparse matrix (where only the eigenvalues are required)

I am trying to run the full SVD of a large (120k x 600k) and sparse (0,1% of non-null values) matrix M. Due to memory limitation all my previous attempts failed (with SVDLIBC, Octave, and R) and I am (...
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1answer
85 views

matlab SVD qustion

I have the following Matlab code: r=5; [U, Gamma, V] = svd( rand(20,10), 'econ' ); L1 = U(:,1:r) * Gamma(1:r,1:r) * V(:,1:r)'; L2 = zeros(20,10); for i=1:r L2 = L2 + Gamma(i)* U(:,i) * V(:,i)';...
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401 views

Parallelize SVD computations c++

So I've would like to do an SVD factorization of a large matrix (1000-25000 x 4096) in C++. I have tried LAPACKE dgesdd, Armadillo svd/svd_econ and Eigen but all of them seem to be single threaded and ...