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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Principal component analysis (PCA) assumptions

I used PCA to reduce a 180 dimensions feature space in 3 principal components. Afterwards I used k-mean clustering to cluster the data according to the 3 principal components of PCA. I read in ...
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494 views

Randomized PCA .explained_variance_ratio_ sums to greater than one in sklearn 0.15.0

When I run this code with sklearn.__version__ 0.15.0 I get a strange result: import numpy as np from scipy import sparse from sklearn.decomposition import RandomizedPCA a = np.array([[1, 0, 0, 0, 0, ...
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64 views

How to treat complex eigenvalues in PCA?

I'm building a recommender system and PCA is one of the preprocessing techniques I am using on my dataset of documents and features. I want to use the preprocessed result to apply similarity ...
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1answer
104 views

What does it mean to have zero mean in the data?

I'm trying to find ways to normalize my dataset (represented as a matrix with documents as rows and columns as features) and I came across a technique called feature scaling. I found a Wikipedia ...
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82 views

PCA and SVM (support vector machine): apply feature rescaling / renormalization to principal components?

I am using PCA (principal component analysis) to reduce the dimensionality of my feature set. Before implementing PCA, I already normalized the feature set. However, the resulting principal components ...
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36 views

PCA scores and loadings differ between 32 and 64 bit

I am experiencing a strange phenomenon. I am doing a PCA on data extracted from GPS coordinates and coinciding bioclimatic variable raster data. I do the analysis in R (64 bit) at my university. Then, ...
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1answer
112 views

Matlab - processpca out of memory error

I have to calculate a pca using processpca (lecture excercise, not able to user alternatives here I think) from the Neural Network Toolbox of a 400*60000 matrix (on a 64bit 8gb ram machine). The error ...
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79 views

R: backwards principal component calculation

I would like to perform a backwards principal component calculation in R, meaning: obtaining the original matrix by the PCA object itself. This is an example case: # Load an expression matrix ...
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1k views

Principal Component Analysis on Weka

I have just computed PCA on a training set and Weka returned me the new attributes with the way in which they were selected and computed. Now, I want to build a model using these data and then use the ...
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Selecting multiple odd or even columns/rows for dataframe in R

Is there a way in R to select many non-consecutive i.e. odd or even rows/columns? I'm plotting the loadings for my Principal Components Analysis. I have 84 rows of data ordered like this: x_1 y_1 ...
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1answer
156 views

What data of images are given to kmeans clustering in matlab?

Iam having 100 images in my database.Iam using those 100 images as both training set and also test images.I have to make 5 clusters.Iam using eigen faces(PCA) for feature extraction.What data should ...
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216 views

Matlab - PCA on EEG data?

I want to apply principal component analysis on my eeg data, but i'm little confused on how to do that on matlab. I have an NxM matrix, where N is the number of samples and M the number of EEG ...
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397 views

In R, how to predict with svm model in parallel using foreach/snow?

I'm trying to improve the performance of my R program, which is using an SVM trained on PCAs, by using the foreach and doSNOW packages. I've already trained the models and am now passing my validation ...
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1answer
264 views

Principal component analysis with EQUAMAX rotation in R

I need to do a principal component analysis (PCA) with EQUAMAX-rotation in R. Unfortunately the function "principal()" I use normally for PCA does not offer this kind of rotation. I could find out ...
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988 views

PCA multiplot in R

I have a dataset that looks like this: India China Brasil Russia SAfrica Kenya States Indonesia States Argentina Chile Netherlands HongKong 0.0854026763 0.1389383234 ...
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40 views

PCA how to plot effect of one component

EDIT AT THE BOTTOM CONTAINING SOLUTION I performed PCA on my dataset, resulting in the eigenvectors, eigenvalues and the mean. I want to plot the effects of varying one principal component but I ...
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1answer
325 views

PCA calculation using SVD vs EIG

PCA can be calculated using SVD and EIG, but SVD is considered more numerical stable(and seems it used more often in mature machine learning projects). So I need some comparision of this two methods ...
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2answers
313 views

PCA biplot of data subset

I'm trying to produce pca biplots for data subsets. Within the same principal components environment I'd like to plot only subsets based on Moisture levels. # Packages library(vegan) # Sample data ...
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27 views

Plot points in reduced dimensions in PCA

How do I plot a data set with respect to the first two or three principal components in Octave? I have the list of principal components (Z = X * U(:,k)).
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51 views

Finding weights for original variables using Principal component regression

I tried PCA on 16 independent variables and got 8 Principal components which were expressing 93% of the information from these variables.Subsequently i ran a regression model using these principal ...
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1answer
82 views

Why does the kernel restart when I try sklearn PCA?

I use Ipython Notebook and when I input the code: import numpy as np from sklearn.decomposition import PCA pca = PCA(n_components=2) pca.fit(data) I receive a notice that the kernel has died and ...
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146 views

Principal component in matlab - loadings plot

I am trying to obtain a PCA loadings plot similar to that in the following article (see page 40). I have estimated a so called affine no-arbitrage model with latent state variables (level, slope and ...
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1answer
601 views

Poor performance on MNIST digit recognition data set

I have been playing around with the MNIST digit recognition dataset and I am kind of stuck. I read through some research papers and implemented what all I understood. Basically what I did was that I ...
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2answers
81 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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1answer
159 views

ggbiplot - change the axes value

The current ggbiplot (code below) shows X axis values from -5 to 5 and Y axis from -4 to 4. How can I change it so it will be X axis values from -6 to 6 and Y axis from -6 to 6? Thanks. Code: ...
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136 views

Plotting biplots with ggplot 2 in R

I have recently used this excellent post Plotting pca biplot with ggplot2 to plot biplots produced in FactomineR with ggplot2. Does anyone know how to put both outputs on one graph, as you would get ...
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486 views

PCA biplot with confidence ellipses, centroids in color - R

I am using ggbiplot to generate a PCA biplot with confidence ellipses and arrows but can not add centroids, any idea how can I add them? Code. library(ggbiplot) data(wine) wine.pca <- ...
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43 views

SPSS Form questions weight

I have an issue with SPSS. I have a survey with about 20 questions, and about 40 people who answered it. I want to explain my 2nd question of the survey with the result of others. In fact, i want to ...
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1answer
124 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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161 views

Vectorization of matlab code for faster execution

My code works in the following manner: 1.First, it obtains several images from the training set 2.After loading these images, we find the normalized faces,mean face and perform several calculation. ...
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2k views

face recognition using PCA-matlab

my project is "feature based face detection and recognition" me complete the detection part (detect the face from an image on the bases of skin color).now i want to applyy code for recognition using ...
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2answers
44 views

Retrieving principal components in R

I am applying pca in R using the prcomp function. Calling summary(mypca) returs the importance of components (proportion of variance explained), but I couldn't find a way to retrieve these principal ...
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165 views

Given that the data features are all nominal; does it make any sense to apply PCA to the data?

If PCA also helps to normalize the data, how a normalized data is going to be improved by PCA. Thanks
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121 views

Eliminating eigenvalues less than a specified threshold in a face recognition system using PCA

The code below sort all the eigenvalues of matrix L and those who are less than a specified threshold, are eliminated. Can anyone please explain me how that particular code works and what is the ...
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1answer
222 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
200 views

processing data using weka PCA

I would like to do PCA for my dataset using weka's PCA. I saw online the java code is: PrincipalComponents pca = new PrincipalComponents(); pca.setMaximumAttributeNames(300); ...
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342 views

Colouring a legend on a PCA plot

I have a large data matrix which can be partitioned by a variable called 'Day' which varies from 1-10 and I want to use this to colour my PCA plot This works fine when I use the following code: ...
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363 views

How is the output of predict command calculated when predicting the output of a PCA?

I am working on constructing a principal components equation for some housing data. I run the pca on my relevant variables and use the predict command to get the estimated output of the model: ...
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1answer
153 views

prcomp : PCA residuals not zero

I have 3 variables on which I ran PCA using prcomp. I tried to reconstruct the variables using the loadings and factors but residuals is not zero. Statistically (I might be wrong here) I was ...
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1answer
270 views

What is the recognition rate of PCA eigenfaces?

I used the Database of Faces (formally the ORL Database) from the AT&T Laboratories Cambridge. The database consists of 400 images with 10 images per person, i.e, there is 10 images of each 40 ...
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115 views

Principal Componenet Analysis (mathworks example source code )

My question is quite elementary but I need help understanding the basic concepts. In the following example from the Mathworks documentation page of the princomp function load hald; ...
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1answer
44 views

Difficulties applying pca

I am experimenting pca with R. I have the following data: V2 V3 V4 V5 V6 V7 V8 V9 V10 V11 2454 0 168 290 45 1715 61 551 245 30 91 222 188 94 105 60 3374 615 7 294 0 ...
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1answer
199 views

Performing pca using r

I am trying to perform pca with R. I have the following data matrix: V2 V3 V4 V5 V6 2430 0 168 290 45 1715 552928 188 94 105 60 3374 55267 0 0 465 0 3040 27787 0 0 0 0 ...
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79 views

PCA calculation for classification?

To do PCA, we have to compute the covariance matrix from our input data and then eigen decomposition is performed in that covariance matrix. And to get the covariance matrix, we have to calculate ...
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1answer
112 views

What was wrong with running princomp() in R?

I was running PCA with princomp(). My dataset is called vt. pca = princomp(as.matrix(vt)) Error in cov.wt(z) : 'x' must contain finite values only However, when I check if I got infinite values, ...
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1answer
31 views

Subspace clustering with random transformation

One approach for clustering a high dimensional dataset is to use linear transformation, and the most common approaches are PCA and random projection (where random projection arises from the ...
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127 views

Weka PCA in Java class

I have a table where each row contains a record. The first element (first column) of each record is the object and the remaining fields denote certain attribute of the object. Its am x n matrix. I ...
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1answer
107 views

Unable to run PCA from Orange GUI

I am unable to find the PCA module in Orange. From the documentation it seems to be present but I cannot find it in the GUI. I have installed all the addons and I can find PCA in the Orange Python ...
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2answers
980 views

How to use scikit-learn PCA for features reduction and know which features are discarded

I am trying to run a PCA on a matrix of dimensions m x n where m is the number of features and n the number of samples. Suppose I want to preserve the nf features with the maximum variance. With ...
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2answers
886 views

Inversing PCA transform with sklearn (with whiten=True)

Usually PCA transform is easily inversed: import numpy as np from sklearn import decomposition x = np.zeros((500, 10)) x[:, :5] = random.rand(500, 5) x[:, 5:] = x[:, :5] # so that using PCA would ...