1
vote
1answer
44 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 ...
1
vote
1answer
33 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 ...
1
vote
1answer
100 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): ...
0
votes
2answers
97 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, ...
0
votes
1answer
177 views

different results for PCA, truncated_svd and svds on numpy and sklearn

In sklearn an numpy there are different ways to compute the first principal component. I obtain a different results for each method. Why? import matplotlib.pyplot as pl from sklearn import ...
1
vote
2answers
391 views

MemoryError from numpy.linalg.svd for large matrices

The following command will fail on my machine, with Windows 7 ultimate SP1 x64, Python 3.3.3 x64, numpy 1.8.0, and 16GB memory, which seems sufficient for the task. And it also fails on a cluster. ...
3
votes
1answer
211 views

Is there a way to prevent numpy.linalg.svd running out of memory?

I have 1 million 3d points I am passing to numpy.linalg.svd but it runs out of memory very quickly. Is there a way to break down this operation into smaller chunks? I don't know what it's doing but ...
0
votes
1answer
711 views

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 ...
4
votes
2answers
2k views

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. ...
1
vote
0answers
108 views

how to obtain residuals from numpy svd

I have fitted a set of points using numpy svd and have the coefficients for the fitting function. As I understand the algorithm, it will have calculated the residuals to the points along the way and ...
2
votes
1answer
625 views

Using numpy.linalg.svd on a 12 x 12 matrix using python

I want to perform an SVD on a 12*12 matrix. The numpy.linalg.svd works fine. But when I try to get the 12*12 matrix A back by performing u*s*v , i dont get it back. import cv2 import numpy as np ...
2
votes
1answer
4k views

Python ValueError: operands could not be broadcast together with shapes

I am doing SVD and when I try to run my code I get the following error: ValueError: operands could not be broadcast together with shapes (375, 375) (375, 500) I am using an image with size (500, ...
1
vote
1answer
461 views

numpy.linalg.svd not returning Sigma in descending order

Im currently computing an SVD on a large matrix (an image, to be exact) using numpy.linalg's svd function. The documentation and examples that I've found all seem to indicate that the Sigma values ...
1
vote
1answer
330 views

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 ...
7
votes
2answers
1k views

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 > ...
4
votes
2answers
1k views

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 ...
2
votes
3answers
2k views

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 ...