Principal component analysis (PCA) is a statistical technique for dimension reduction often used in clustering or factor analysis. Given any number of explanatory or causal variables, PCA ranks the variables by their ability to explain greatest variation in the data. It is this property that ...

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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', ...
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20 views

How to PCA reduction in Matlab

I am new to Matlab and have some problems using built in packages for PCA reduction. I have 37 objects each represented by 161 dimensional vector, that means i have 161 x 37 matrix called P. I need to ...
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19 views

Trying a multivariate analyses on time series with R [on hold]

I got measures of one variable (that behaves as a time series) for different conditions (some quantitatives, but mostly are qualitatives). For example, this is a "fake" representative plot of this ...
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1answer
20 views

How to find more than six eigenvectors of a large matrix in matlab?

I have a big matrix with size 12000x12000 and I need to find 100 eigenvectors with the highest 100 eigenvalues of that matrix (in order to perform a PCA dimension reduction). I tried using the ...
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1answer
26 views

PCA: PCA1 vs PC2

I know this question has been asked a million times but I am having trouble with making PCA plots is R. I have four tables with Eigenvalues from four different populations. I want to compare ...
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2answers
32 views

Recovering features names of explained_variance_ration in PCA with sklearn

I'm trying to recover from a PCA done with scikit-learn, which features are selected as relevant. A classic example with IRIS dataset. import pandas as pd import pylab as pl from sklearn import ...
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1answer
15 views

OpenCV PCA not initializable

Given http://docs.opencv.org/modules/core/doc/operations_on_arrays.html PCA should be initializable by just passing it a matrix. cv::Mat matrix; ... //If I do cv::PCA pca; pca(matrix); I get the ...
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66 views

calculate euclidean distance for PCA in python

I have PCA with 3D numpy array as pcar =[[xa ya za] [xb yb zb] [xc yc zc] . . [xn yn zn]] where each row is a point and I have selected any two random rows from ...
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18 views

How to efficiently operate overlapping block processing when filtering result is not a scalar

I want to operate overlapping block processing over an image and each block-wise operation does not return a scalar, but a block of the same size. If we partition the image into distinct blocks, that ...
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1answer
31 views

Changing axis names in ggplot2

I've found somewhere here code to create PCA biplot in ggplot2. I've made some small modifications, but I still need one improvement. The code looks like that: PCbiplot2 <- function(res.pca, ...
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1answer
54 views

Principal Component Analysis in Python: Analytical Mistake

I'm implementing a Principal Component Analysis for face recognition in Python without making use of the already defined PCA methods in numpy or OpenCV. But my results are literally rubbish. I read ...
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1answer
20 views

Dealing with Zero Values in Principle Component Analysis

I've really been struggling to get my PCA working and I think it is because there are zero values in my data set. But I don't know how to resolve the issue. The first problem is, the zero values are ...
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37 views

PCA transform messes up learning [closed]

I have the following code, which PCA-transforms data without skipping any dimension. It just does the linear transform itself: from sklearn import datasets import numpy as np # Initialize digits = ...
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20 views

Does predict.prcomp() return scores in R?

Specifically, when I add "newdata": > predict(pca,newdata=EODPositions[rr,]) PC1 PC2 PC3 PC4 PC5 PC6 PC7 PC8 PC9 PC10 PC11 PC12 ...
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1answer
31 views

How can I reconstruct an image after it has been downprojected with PCA in R?

How can I reconstruct an image after it has been down-projected with PCA in R? If the original image was N dimensional, I down-projected it to 10 dimensions. How can I reconstruct an N dimensional ...
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1answer
32 views

How to downproject with PCA in R?

How to downproject with PCA in R? When I use princomp function on my data it creates as many principal components as there are dimensions in the original data. But how can I down-project, let's say ...
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1answer
32 views

Remove top and right axis in princomp plot

I have a little problem, I want to remove the top and right axes (I don't know what's the name of that axis, sorry) of my PCA biplot, but I can't figure out how to do it. Is there a way to remove ...
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2answers
44 views

How do you use a correlation matrix as the input into princomp() in R

I have a dataframe that represents the correlation matrix of a large data set: > data V1 V2 V3 V4 V5 V6 V7 V8 1 1.000 0.846 0.805 0.859 0.473 0.398 0.301 0.382 2 0.846 ...
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1answer
85 views

Reuse dimensionality reduction after designing model with Matlab

I'm using a binary classification with SVM and MLP for financial data. My input data has 21 features so I used dimensionally reduction methods for reducing the dimension of data. Some dimensionally ...
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15 views

Does PCA automatically reduces size of dimensions?

I did lot of search but I was unable to find what PCA output gives? The data with reduced form or I need to reduce the table so that it ll have appropriate dimensions. If it does not reduces the ...
2
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1answer
36 views

how to find Eigenvalues for non quadratic matrix

I want to make similar graphs to this given on the picture: I am using Fisher Iris data and employ PCA to reduce dimensionality. this is code: load fisheriris ...
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33 views

How to plot hotelling's confidence ellipse in PCA - MATLAB

I have used princomp function in matlab for PCA analysis which gives scores, variances Coeffs and t2 values. These t2 values are Hotelling's t2 values (n*1 vector, n= no. of samples). I want to plot ...
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1answer
44 views

What does eigenvalues represent in Face Recognition by Eigenfaces

I've got a set of training face images (40 images). Each image size is 28*34. From there, I'm able to get eigenVector, Score, Latent using princomp function in Matlab. I've got 952 latents ...
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68 views

Python OpenCV PCACompute Eigenvalue

When using Python 2.7.5 with OpenCV (OSX), I run PCA on a sequence of images (cols are pixels, rows are frames as per this answer. How do I get the eigenvalues corresponding to the eigenvectors? ...
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33 views

PCA figure formatting options in R--changing individual points to group means/SE

I tried this question in stats.stackexchange and somebody suggested I try it over here, so here goes: I've completed PCA analysis, in R with VEGAN package, of some ecological data on tree health. ...
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37 views

scikit learn PCA dimension reduction - data lot of features and few samples

I am trying to do a dimension reduction using PCA from scikit-learn. My data set has around 300 samples and 4096 features. I want to reduce the dimensions to 400 and 40. But when I call the algorithm ...
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1answer
49 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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1answer
49 views

PCA for feature extraction MATLAB

I have a data matrix A of size NxM. I wanted use PCA for dimensionality reduction. I want to set the dimensions to 'k'. I understand that after feature extraction, I should get a Nxk matrix. I have ...
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15 views

Need help in Executing SSVD for dimensionality reduction on Mahout

I am trying to use SSVD for dimensionality reduction on Mahout, the input is a sample data in CSV format. Below is a snippet of the input 22,2,44,36,5,9,2824,2,4,733,285,169 ...
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20 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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1answer
54 views

Dots instead of labels for biplot.prcomp

I'd like to create a biplot for a prcomp primary component analysis. However, since I have lots of rows in my matrix, I don't want to print all these labels. I'm mostly concerned in the overall ...
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1answer
64 views

How to create a biplot with FactoMineR?

The Question is easy. I'd like to biplot the results of PCA(mydata), which I did with FactoMineR. As it seems I can only display ether the variables or the individuals with the built in ploting ...
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1answer
31 views

Extracting the covariance from princomp() in R

I am looking to extract the covariance after doing PCA on my data set. I have monthly returns of SnP500 and would like to perform PCA on it. But I am only looking for the covariances. Is there a way ...
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69 views

PCA decomposition with python: features relevances

I'm following now next topic: How can I use PCA/SVD in Python for feature selection AND identification? Now, we decompose our data set in Python with PCA method and use for this the ...
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1answer
72 views

How to represent points from PCA space in the RGB space

I'm trying to implement a morphological method for image colors from the article: "Probabilistic pseudo-morphology for grayscale and color images". At one point, we compute the PCA on the entire ...
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2answers
70 views

Principal Component Analysis?

I am strugling with PCA stuff. So for example I have : Data=100*3 substractdata=data-mean (the size will be same 100*3) covariance=3*3 EigenVector=3*3 EigenValue=3*3 And to do reduction to our ...
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37 views

Feature clustering through PCA in WEKA

I'm using the WEKA PrincipalComponents class to execute PCA. The main goal is to perform feature clustering. In this respect, I would need to obtain the eigenvectors in order to identify in which of ...
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33 views

How to prove that the plotted data with eigen vector is correct?

I'm working on PCA. I have already extracted the eigen vectors and eigen values from the distributed data. My data is in normally distributed,so the center of the curve (if we plot the data) is ...
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1answer
38 views

Get the eigen vector correspoinding to the ith largest eigen value

I have tried this code for my assignments, but I am getting error of type ??? Subscript indices must either be real positive integers or logicals. This is my code: for i = 5:200 eigvecm = ...
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2answers
75 views

Extracting PCA components with sklearn

I am using sklearn's PCA for dimensionality reduction on a large set of images. Once the PCA is fitted, I would like to see what the components look like. One can do so by looking at the components_ ...
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25 views

Predict values of some numerical vectors by using other numerical vectors with all these vectors in the same vector set

I need to solve a problem about predicting values of some numerical vectors by using other numerical vectors with all these vectors in the same vector set, which is generated by one or more black box ...
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2answers
48 views

KMean and PCA connection

As I understand pattern recognition, PCA is used to remove unnecessary data in the dataset so that when the dataset will be used in a KMean, it will perform less than a dataset not being PCA'd. So, I ...
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40 views

How to view the output of PCA in Python

I have a PCA results = PCA(myData),I am using numpy to implement it. How can I get or where can I see the output?
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1answer
41 views

PCA-SIFT in Java

Does anybody have a source code or even just a pseudocode for PCA-SIFT in Java language? I'm making a program which extracts SIFT features from images and then feeding those features from multiple ...
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1answer
71 views

PCA generated initial matrix in gaussian and ellipse?

I have to do PCA in Matlab for object recognition. For now, I generate matrix randomly [a,InputMatrix] = sort(rand(100,20)); %Rows=100 Columns=20 Average=mean(InputMatrix); CovarianceMatrix= ...
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1answer
38 views

How to get the number of significant Eigen Value?

Im working in Matlab to compute the PCA. I already compute the Eigen Value and the Eigen Vector. I used this matlab function : [Eigen Vector, Eigen Value]=eigs(Matrix,k); With this eigs ...
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2answers
83 views

PCA analysis using Correlation Matrix as input in R

Now i have a 7000*7000 correlation matrix and I have to do PCA on this in R. I used the CorPCA <- princomp(covmat=xCor) , xCor is the correlation matrix but it comes out "covariance ...
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91 views

raise LinAlgError(“SVD did not converge”) LinAlgError: SVD did not converge in matplotlib pca determination

code : import numpy from matplotlib.mlab import PCA file_name = "C:/Documents and Settings/862629/My Documents/53135/programs/store1_pca_matrix.txt" ori_data = numpy.loadtxt(file_name,dtype='float', ...
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1answer
39 views

How to calculate determinant in PCA?

Im going to program PCA, but for that, I have to calculate the Eigen Vector and Eigen Value. My question is in calculate the eigen value we have to calculate the determinant of the matrix which all ...
2
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1answer
139 views

Least Squares line fit in Matlab - Polyfit isn't (doesn't seem to be) answer

I'm looking for help doing a (simple?) least squares line fit to a set of points in Matlab. I have an image with a set of points that I'm trying to fit a line to, minimizing the distance from each ...