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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Python (NumPy, SciPy), finding the null space of a matrix

I'm trying to find the null space (solution space of Ax=0) of a given matrix. I've found two examples, but I can't seem to get either to work. Moreover, I can't understand what they're doing to get ...
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SVD for sparse matrix in R

I've got a sparse Matrix in R that's apparently too big for me to run as.matrix() on (though it's not super-huge either). The as.matrix() call in question is inside the svd() function, so I'm ...
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matlab eig returns inverted signs sometimes

I'm trying to write a program that gets a matrix A of any size, and SVD decomposes it: A=USV' Where A is the matrix the user enters, U is an orthogonal matrix composes of the eigenvectors of AA', S ...
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Parallel implementation for multiple SVDs using CUDA

I'm new to parallel programming using GPU so I apologize if the question is broad or vague. I'm aware there is some parallel SVD function in the CULA library, but what should be the strategy if I have ...
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Singular Value Decomposition (SVD) in PHP

I would like to implement Singular Value Decomposition (SVD) in PHP. I know that there are several external libraries which could do this for me. But I have two questions concerning PHP, though: 1) Do ...
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SVD computing different result in Matlab and OpenCV

I wonder why there is sign difference in result for SVD computing in Matlab and OpenCV. I input the same matrix 3.65E+06 -2.09E+06 0 YY = -2.09E+06 2.45E+06 0 0 ...
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1answer
762 views

calculate the V from A = USVt in objective-C with SVD from LAPACK in xcode

My goal is to transfer a coordinate in perspective from a known rectangle (for example a 800 by 600 screen) to a quadrangle that is skewed/rotated. To do so i found this, which was extremely helpful: ...
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cocktail party algorithm SVD implementation … in one line of code?

In a slide within the introductory lecture on machine learning by Stanford's Andrew Ng at Coursera, he gives the following one line Octave solution to the cocktail party problem given the audio ...
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importance of PCA or SVD in machine learning

All this time (specially in Netflix contest), I always come across this blog (or leaderboard forum) where they mention how by applying a simple SVD step on data helped them in reducing sparsity in ...
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3answers
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Fit points to a plane algorithms, how to iterpret results?

Update: I have modified the Optimize and Eigen and Solve methods to reflect changes. All now return the "same" vector allowing for machine precision. I am still stumped on the Eigen method. ...
4
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1answer
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LAPACK SVD (Singular Value Decomposition)

Do yo know any example to use LAPACK To calculate SVD?
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1answer
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Comparing svd and princomp in R

I want to get singular values of a matrix in R to get the principal components, then make princomp(x) too to compare results I know princomp() would give the principal components Question How to ...
2
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1answer
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R - svd() function - infinite or missing values in 'x'

I am constantly getting this error. I am sure the matrix does not have any non-numeric entries. I also tried imputing the matrix, did not work. Anyone know what the error might be? fileUrl <- "...
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2answers
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svd of very large matrix in R program

I have a matrix 60 000 x 60 000 in a txt file, I need to get svd of this matrix. I use R but I don´t know if R can generate it.
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2answers
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Calculating the null space of a matrix

I'm attempting to solve a set of equations of the form Ax = 0. A is known 6x6 matrix and I've written the below code using SVD to get the vector x which works to a certain extent. The answer is ...
9
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2answers
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Any reason why Octave, R, Numpy and LAPACK yield different SVD results on the same matrix?

I'm using Octave and R to compute SVD using a simple matrix and getting two different answers! The code is listed below: R > a<-matrix(c(1,1,1,1,1,1,1,1,1,1,1,1,0,0,0,0,0,0,0,0,0,1,1,1,0,0,...
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1answer
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How do we decide the number of dimensions for Latent semantic analysis ?

I have been working on latent semantic analysis lately. I have implemented it in java by making use of the Jama package. Here is the code: Matrix vtranspose ; a = new Matrix(termdoc); ...
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1answer
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Image Enhancement using combination between SVD and Wavelet Transform

My objective is to handle illumination and expression variations on an image. So I tried to implement a MATLAB code in order to work with only the important information within the image. In other ...
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1answer
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Correct way to extract Translation from Essential Matrix through SVD

I calibrated my camera and found the intrinsic parameters(K). Also I have calculated the Fundamental Matrix (F). Now E= K_T* F * K . So far so good. Now we pass the Essential Matrix(E) to the SVD to ...
2
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2answers
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Using alternative LAPACK driver in numpy's svd method?

I'm using numpy.svd to compute singular value decompositions of badly conditioned matrices. For some special cases the svd won't converge and raise a Linalg.Error. I've done some research and found ...
0
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1answer
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Best fit plane for 3D data

I have my 3D data X,Y,Z (Matrices with size NxM) I want to fit it to the best fit plane what I did: X = X(isfinite(X));% deleting the NaN because svd Doesn't accept them Y = Y(isfinite(Y)); Z = Z(...
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2answers
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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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1answer
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Using Principal Components Analysis (PCA) on binary data

I am using PCA on binary attributes to reduce the dimensions (attributes) of my problem. The initial dimensions were 592 and after PCA the dimensions are 497. I used PCA before, on numeric attributes ...
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2answers
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SVD algorithm implementation

Does anyone know good scalable implementation of SVD on C# for very big matrix?
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2answers
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Matlab SVD output in opencv

in Matlab SVD function outputs three Matrices: [U,S,V] = svd(X) and we can use the S Matrix to find to smallest possible number of component to reduce the dimension of X to retain enough variance....
3
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1answer
679 views

Singular values calculation only with CUDA 7.0

I'm trying to use the new cusolverDnSgesvd routine of CUDA 7.0 for the calculation of the singular values. The full code is reported below: #include "cuda_runtime.h" #include "...
2
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1answer
364 views

Simple (working) handwritten digit recognition: how to improve it?

I just wrote this very simple handwritten digit recoginition. Here is 8kb archive with the following code + ten .PNG image files. It works: is well recognized as . In short, each digit of the ...
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2answers
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Svd recomposition with Mathnet numerics library seems wrong

I'm looking for non regression between Mathnet.Iridium and Mathnet.Numerics. Here is my code, using Mathnet.Numerics : double[][] symJaggedArray = new double[5][]; symJaggedArray[0] = new double[] { ...
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1answer
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How to compute SVD using Cimg (or maybe openCV or eigen library)?

May anyone give me a quick guide on how to use Cimg to compute SVD for a 3-dimension array? I just want to get the decomposition of the array in order to compress it small for speeding up further ...
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1answer
394 views

Performing PCA on large sparse matrix by using sklearn

I am trying to apply PCA on huge sparse matrix, in the following link it says that randomizedPCA of sklearn can handle sparse matrix of scipy sparse format. Apply PCA on very large sparse matrix ...
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2answers
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Singular Value Decomposition: Different results with Jama, PColt and NumPy

I want to perform Singular Value Decomposition on a large (sparse) matrix. In order to choose the best(most accurate) library, I tried replicating the SVD example provided here using different Java ...
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How to clustering syllable types with python?

This is my second question in stack overflow. I don't have to much experience with python, but had excellent results with my first question and I was able to implement the code from the answer, so I ...
0
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1answer
241 views

How to fill NaN values in numeric array to apply SVD?

I am combined two data-frames that have some common columns, however there are some different columns. I would like to apply Singular Value Decomposition (SVD) on the combined data-frame. However, ...
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2answers
438 views

fixed point singular value decomposition in c/c++ [closed]

I am looking for some c/c++ libraries to do fixed point singular value decomposition or eigenvalue decomposition. Do you know any libraries or any pointers to existing codes? Thanks