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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How to determine scaling factor so that covariance matrix has a first element of 1?

I have data which I need to center and scale so that is centered around the origin. Then the data needs to be rotated so that the direction of maximum variance is on the x-axis. The mean of the data ...
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Jama getS gives exception

I am applying SVD to a term - document matrix that i have already created.The matrix is a double array of the form : public static double[][] tdidf; tdidf = new ...
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how to compare between points of different number of dimensions?

I have a data points of different dimensions and I want to compare between them such that I can remove redundant points. I tried to make the points of the same dimensions by using PCA, but the problem ...
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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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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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259 views

What is the role of latent semantic analysis in developing search engines?

I am trying to develop a music-focused search engine for my final year project.I have been doing some research on Latent Semantic Analysis and how it works on the Internet. I am having trouble ...
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Problems with svd in java

I have gone through jama and colt(I code in java) . Both of them expect me to use arrays such that the number of rows are more than the number of coloumns . But in case of the Latent semantic ...
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R projection matrix with SVD or QR decomposition

I'm trying to calculate in R a projection matrix P of an arbitrary N x J matrix S: P = S (S'S) ^ -1 S' I've been trying to operationalize this with the following function: P <- function(S){ ...
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Java SVD with JAMA or else

I have a cloud of Points and I need the best fitting Line. I'm using JAMA but I don't know why, something is not working. Probably it's me who doesn't get how it works. I have a Nx3 Matrix (this is ...
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LSA - steps after finding the SVD

I have read quite a few tutorials since morning . My problem involves finding the similarity between two documents. I am looking forward to use LSA in java for this purpose. I understood the ...
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Howto Create Recommendations with a Incremental SVD Recommender System

I am testing a recommendation system that is built according to Simon Funk's algorithm. (written by Timely Dev. http://www.timelydevelopment.com/demos/NetflixPrize.aspx) The problem is, all ...
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Why does scipy.sparse.linalg.svds return a ValueError?

Does anyone know that how to use scipy.sparse package to compute SVD on sparse matrix? I know that I need to use scipy.sparse.linalg.svds(). But I did as bellow: from scipy.sparse import * csr = ...
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Have memory error when using scipy to do SVD

I tried to use LSI to generate vectors to represent documents. I am using the svd package in Scipy library. But the program throws a memory error. The size of my matrix is 100*13057. Is this too big ...
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3answers
863 views

Obtain null space or single dimensional space which is its best approximation efficiently

I have been doing this using an svd computation [U, S, V] = svd(A) wherein I use the last column of A as my null space approximation. Since A gets really large, I realized that this is slowing ...
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2answers
369 views

Integrating content information with factorization-based collaborative filtering

I'm reading some papers in CF and noticed that most state-of-the-art methods are based on different factorization methods on the rating matrix only. I'd like to know if there are some representative ...
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Doing PCA in java on large matrix

I have a very large matrix (about 500000 * 20000) containing the data that I would analyze with pca. To do this I'm using ParallelColt library, but both using singular value decomposition and ...
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Java SVD as defined by wikipedia

I'm looking for a java library that performs singular value decomposition as descibed in wikipedia: from a matrix A (m X n) get A = U*S*V' where U is m x m, S is m x n and V is n x n. Anyone can help ...
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pca in R with princomp() and using svd() [duplicate]

Possible Duplicate: Comparing svd and princomp in R How to perform PCA using 2 methods (princomp() and svd of correlation matrix ) in R I have a data set like: ...
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Calculate SVD in R error: missing or infinite values

I have a similar problem with svd(XTR) the data is like: 1 0.3045 0.1448 -0.0714 -0.038 -0.0838 -0.1433 -0.1071 -0.1988 -0.1076 -0.0313 -0.157 -0.1032 -0.137 -0.0802 0.1244 0.0701 ...
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Is it possible to compile svdlibc on a mac (64 bit)?

I'm trying to compile svdlibc on a 64 bit mac. Running the make file returns the error message: main.c:1: error: CPU you selected does not support x86-64 instruction set main.c:1: error: CPU you ...
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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 ...
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how to check whether the image is compressed or not after applying SVD on that image(regarding size of compressed image on disk)

I=imread('cameraman.tif'); figure(1),imshow(I) I1=im2double(I); [U,S,V]=svd(I1); figure(2),imshow(I1) for j=1:90 I2=U(:,1:j)*S(1:j,1:j)*V(:,1:j)'; end figure(3),imshow(I2) I3=U*S*V'; ...
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SVD to solve harwell-boeing sparse a.x=b system in C/C++?

Does anybody know of a sparse SVD solver for c++? My problem involves some badly conditioned matrices that might have zeroed columns/rows. My data is stored in a uBLAS matrix which is the ...
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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 > ...
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SVD for image compression-image takes more disk size, hmm..?

d=50; im = imread('H:\matlab\bildanalys\terminator.gif'); M2 = double(im); [U S V] = svd(M2); U2 = U(:,1:d); S2 = S(1:d,1:d); V2 = V(:,1:d); compressed=U2*S2*V2'; ...
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Singular Value Decomposition SVD in php [closed]

Is there a SVD implementation in php?
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Basic Pseudocode for using SVD with Movielens/Netflix type data set

I'm struggling to figure out how exactly to begin using SVD with a MovieLens/Netflix type data set for rating predictions. I'd very much appreciate any simple samples in python/java, or basic ...
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1answer
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How to compute SVD (Singular Value Decomposition) of upper triangular matrix

Do you know an algorithm that calculates SVD using BLAS or LAPACK? Lets say I have a symmetric Matrix A: 1 22 13 14 22 1 45 24 13 ...
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LAPACK SVD (Singular Value Decomposition)

Do yo know any example to use LAPACK To calculate SVD?
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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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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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OpenCV SVD Matrix format

I currently have a set of 2D Cartesian coordinates e.g. {(1,3), (2,2), (3,4)} Which will be put into a 2D array, to perform SVD properly would the matrix be put together such that the coordinates form ...
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Eigen decomposition of a matrix of form W * diag(S) * W' for matrix exponential in MATLAB

W is a tall and skinny real valued matrix, and diag(S) is a diagonal matrix consists of +1 or -1 on the diagonal. I want the eigen decomposition of A = W * diag(S) * W' where single quote denotes ...
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How SVD works to find similar blocks in image?

I am writing a code to find out which part of an image has been duplicated, so i need to find similar blocks in image. I need to use SVD (singular value decomposition) to find which blocks match ...
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Obtaining an invertible square matrix from a non-square matrix of full rank in numpy or matlab

Assume you have an NxM matrix A of full rank, where M>N. If we denote the columns by C_i (with dimensions Nx1), then we can write the matrix as A = [C_1, C_2, ..., C_M] How can you obtain the ...
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Latent Semantic Indexing

I'm trying to find out how to carry out the multiplication of the matrices produced after SVD implementation in LSI. I need this for my research. I want to carry out document clustering.
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sparse matrix svd in python

Does anyone know how to perform svd operation on a sparse matrix in python? It seems that there is no such functionality provided in scipy.sparse.linalg.
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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 ...
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Performing a SVD on tweets. Memory problem

EDIT: I the size of the wordlist is 10-20 times bigger than I wrote down. I simply forgot a zero. EDIT2: I will have a look into SVDLIBC and also see how to reduce a matrix to its dense version so ...
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SVD Singular Value Decomposition in CImg library

the CImg library offers SVD calculation. however, i'm always getting a * glibc detected * ./projective_template: free(): invalid next size (fast): 0x089165b8 * error. I couldn't find proper ...
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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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java jama array problem

I asked a question before but duffymo said it is not clear so i am going to post it again here. I am using Jama api for SVD calculation. I know very well about jama and SVD. Jama does not work if ...
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Pagerank vs SVD

Pagerank works on the nodegraph of a series of pages and the directed edges formed by their respective inward and outward links. Thus the rank of a particular page is broadly a locally-induced effect ...
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Dimension Reduction

I'm trying to reduce a high-dimension dataset to 2-D. However, I don't have access to the whole dataset upfront. So, I'd like to generate a function that takes an N-dimensional vector and returns a ...
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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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3answers
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numpy linear algebra basic help

This is what I need to do- I have this equation- Ax = y Where A is a rational m*n matrix (m<=n), and x and y are vectors of the right size. I know A and y, I don't know what x is equal to. I ...
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What is SVD(singular value decomposition)

How does it actually reduce noise..can you suggest some nice tutorials?