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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R: Removing zero variance columns from each element of dataframe list

I split a dataframe to create a dataframe list. The dataframe list has 401 dataframes. In other words, each dataframe is identical in structure (same columns), but potentially different numbers of ...
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10 views

Plot Principal Components onto Original Coordinate System (3D dataset) using R

I have a 3D dataset (x,y,z coordinate system), on which I've performed PCA. I know how to transform the x,y,z data to fit on a PC1, PC2, PC3 coordinate system. But what I want is to plot the PC's as ...
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15 views

Why different result with PCA and SVD in Matlab?

I have implemented my PCA function in Matlab in the following way: function e = myPCA(X) [D, N] = size(X); m = mean(X, 2); X = X - repmat(m, 1, N); [e, ~, ~] = svd(X,'econ'); end When I use now the ...
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16 views

Turning a list into a diagonal matrix

I have a list of singular values as a result of an SVD of a data matrix. Python outputs as a list rather than the diagonal matrix. Combining the matrices to find regression coefficients is then ...
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27 views

R Distance Matrix

I have the following data: > df <- data.frame(Sample = c("C1", "C2", "K1", "K2"), Abundance=c(345, 280, 250, 562)) > df Sample Abundance 1 C1 345 2 C2 280 3 K1 ...
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12 views

Sorting columns of a Matrix based on values in a different Matrix

I am writing java code to implement Principal Component Analysis. I am modeling my matrices using Apache Commons Math3's RealMatrix class. As part of the procedure, the eigenvalues and eigenvectors ...
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30 views

ZCA whitening (MATLAB) - out of memory

Currently, I am doing texture classification by using Convolution Neural Networks. I am trying to implement the ZCA whitening to preprocess my images by using the Matlab code here. Note that the size ...
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20 views

Different Valuse Returned from Using PCA Function

Can someone explain to me how these are different? #First Type of PCA. Scales and Transposes manually pr.data <- prcomp(scale(t(data))) #Second Type of PCA pr.data <- prcomp(data, retx=TRUE, ...
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27 views

How to implement ZCA Whitening? Python

Im trying to implement ZCA whitening and found some articles to do it, but they are a bit confusing.. can someone shine a light for me? Any tip or help is appreciated! Here is the articles i read : ...
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1answer
19 views

OpenCV Principle Component Analysis terminology - what actually is a 'sample'?

I'm working with Principle Component Analysis (PCA) in openCV. The constructor inputs for the case I'm interested in are: PCA(InputArray data, InputArray mean, int flags, double retainedVariance); ...
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86 views

how do I find the angles between an original and a rotated PCA loadings matrix?

Suppose I have two matrices of PCA loadings loa.orig, and loa.rot, and I know that loa.rot is a rotation (by-hand or otherwise) of loa.orig. (loa.orig might also have been already orthogonally ...
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31 views

Dimensionality reduction being way too slow using PCA and a small dataset

I have the following data set stored using numpy: https://www.dropbox.com/sh/ppseiv9skqlhljr/AACQEWZh11oszL5-Z_NHqre3a?dl=0 There is a different numpy file for the training and development partitions ...
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25 views

Principal Component Analysis being too slow (MLPY Python)

I am using the PCAFast method from the MLPY API in python (http://mlpy.sourceforge.net/docs/3.2/dim_red.html) The method is executed pretty fast when it learns a feature matrix generated as follows: ...
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25 views

Principal Component Analysis is too slow (MLPY Python)

I am using the PCAFast method from the MLPY API in Python. The method is executed pretty fast when it learns a feature matrix generated as follows: x = np.random.rand(100, 100) Sample output of ...
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148 views

customer segmentation in retail

I have a large sales database of a 'home and construction' retail. And I need to know who are the electricians, plumbers, painters, etc. in the store. My first approach was to select the articles ...
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8 views

How to keep original order of eigenvalues in JMAT

I have a program that counts occurrences of all words in a given scope (let's say, an article). My idea is that I can use several steps from the PCA method- calculate the covariance matrix and then ...
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1answer
55 views

Incremental PCA on big data

I just tried using the IncrementalPCA from sklearn.decomposition, but it threw a MemoryError just like the PCA and RandomizedPCA before. My problem is, that the matrix I am trying to load is too big ...
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9 views

Error while running ggbiplot on PCA analysis output

I am doing PCA analysis on some files and while am trying to plot the pca result using ggbiplot I got the following error: Error in $<-.data.frame(*tmp*, "groups", value = c("factor_1", : ...
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13 views

What exactly is returned from PCA in MatLab?

I = double(image1Cropped); X = reshape(I,size(I,1)*size(I,2),3 ); coeff1 = pca(X); What exactly is happening in the above 3 lines of code? Why covert an image into double before passing into ...
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1answer
24 views

R- reduce dimensionality LSA

I am following an example of svd, but I still don't know how to reduce the dimension of the final matrix: a <- round(runif(10)*100) dat <- as.matrix(iris[a,-5]) rownames(dat) <- c(1:10) s ...
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Difference in factor scores vs loading scores

I need a simple intuitive answer to a conundrum. When using factor analysis you have two options to generate scores: one is the multiple the factor loadings by the data saves factor scores as either ...
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13 views

can i correlate the PCA features of two different images using CCA

I am trying to obtain PCA features of two images of same size. My question is can i find correlation of the two PCA features using CCA.
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6 views

clarification in using als algorithm in pca

I am doing PCA in matlab using 'als' algorithm as below. When I specify a specific number of components (1 here), the 'explained' term gives 100% as explained variance. How is it possible? Shouldn't ...
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1answer
33 views

sklearn PCA not working

I have been playing around with sklearn PCA and it is behaving oddly. >>> from sklearn.decomposition import PCA >>> import numpy as np >>> identity = np.identity(10) ...
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1answer
31 views

How to change the linetype for ellipses in ggplot2 with stat_ellipse?

So I'm trying to change the line type on ellipses generated from stat_ellipse in ggplot2 (see here https://raw.github.com/low-decarie/FAAV/master/r/stat-ellipse.R). I can manually set the colors ...
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47 views

sklearn PCA producing numpy.linalg.linalg.LinAlgError

I wanted to run a pca on a matrix, but only got a numpy.linalg.linalg.LinAlgError. I attached the matrix and my code. Get the matrix here: http://workupload.com/file/YvSVhGJA import numpy as np from ...
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46 views

Is there a good package for by-hand / manual / judgmental factor / component rotation? [closed]

I'm trying to add a function to manually (or by-hand, or judgmentally) rotate a factor loadings matrix from principal components analysis to the qmethod R package. By-hand rotation as in: one ...
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17 views

spca R adegenet duplicated locations detected but I have no duplicated locations

I am running an sPCA analysis using the R package adegenet with the sPCA function. I have been using jitter to add random noise to some locations which are duplicated to be able to use type 1 ...
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2answers
48 views

scikit KernelPCA unstable results

I'm trying to use KernelPCA for reducing the dimensionality of a dataset to 2D (both for visualization purposes and for further data analysis). I experimented computing KernelPCA using a RBF kernel ...
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2answers
87 views

PCA output looks weird for a kmeans scatter plot

After doing PCA on my data and plotting the kmeans clusters, my plot looks really weird. The centers of the clusters and scatter plot of the points do not make sense to me. Here is my code: #clicks, ...
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41 views

how to save an image file in R with pca3d package

I want to save a tiff image of a pca graphic from pca3d package in R, I've tried with the next code but in the out I just get a white image, the console returns NULL Device. Does somebody why that ...
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178 views

How to perform prediction with LDA in scikit-learn?

I've been testing out how well PCA and LDA works for classifying 3 different types of image tags I want to automatically identify. In my code, X is my data matrix where each row are the pixels from an ...
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24 views

Next step after Principal Component Analysis?

I have performed Principal Component Analysis on a data set and I've obtained the score and loading plots. My question is what are the next steps after this? I have a data set with different ...
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Does the number of variables used in PCA have an impact of the amount of variance explained?

If I perform a PCA with 100 variables, my first component explain 30% of the variance. While when I used 40 of these it explain 48% of the variance. Can I say that it is more relevant to work with ...
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1answer
63 views

Confidence intervals of loadings in principal components in R

I am using following code for principal component analysis of first 4 columns of iris data set using prcomp function in R: > prcomp(iris[1:4]) Standard deviations: [1] 2.0562689 0.4926162 ...
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1answer
18 views

How to get selected loadings in princomp in R

I am trying following code using princomp function and first 4 columns of iris dataset for principal component analysis: prin =princomp(iris[1:4]) loadings(prin) #Loadings: # Comp.1 ...
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24 views

Algorithms for Face Verification

If you look at face recognition, the task is quite often described w.r.t. following setting: You have a set of face images. Given a query image, identify the face on the query image among the set, ...
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2-D PCA scatter on Neural-Netwok on Torch7

I have a neural network on torch7 which uses temporal convolution on WAV input. after getting a 10-D vector of classifying values, I wish to 2-D-PCA them and have a scatter graph of the kind you see ...
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how can I get groups from cel files automatically in R

I´m using R and bioconductor and I want to extract the tissue name of the cel files (not the file name itself because a lot of cel files with different names can be related to the same tissue) in ...
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2answers
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Printing in R - PCA rotation components

I did a PCA in R and I am trying to print the rotation components. I was pretty much trying to understand a snippet I found online and I would really appreciate if somebody could help me with it. ...
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29 views

Renaming Rows to control items in dist() and promp() objects

I have a data frame called family 1 (below). This data will be used for constructing dendrograms and for principle component analysis. I would like to control the names of items in both dist() and ...
2
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2answers
43 views

Retain specific component in PCA

I have an numpy array called "data" which has 500 rows and 500 columns. Using PCA from sklearn I can compress this to 500 rows and 15 columns. I believe that in essence I go from 500 axes and 500 ...
1
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1answer
52 views

Principal component analysis using sklearn and panda

I have tried to reproduce the results from the PCA tutorial on here (PCA-tutorial) but I've got some problems. From what I understand I am following the steps to apply PCA as they should be. But my ...
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1answer
28 views

the coeff of pca in matlab is not a p*p matrix

My data matrix is X which is 4999*37152. Then I use this command in Matlab: [coeff, score, latent, tsquared1, explained1] = pca(X); The output: coeff is 37152*4998, score is 4999*4998, latent is ...
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1answer
59 views

How to export an interactive rgl 3D Plot to share or publish?

I have made an interactive 3D plot in R using the rgl package. I would like to be able to send it (and keep it interactive) to a colleague so she can present it (rotate it) in a meeting on her laptop. ...
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67 views

R Biplot with clusters as colors

I'm doing a clustering after a PCA transformation and I would like to visualize the results of the clustering in the first two or three dimensions of the PCA space as well as the contribution from the ...
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1answer
43 views

Extract relevant attributes from postal addresses data in order to do PCA on those Data (using R) [closed]

I have big file which contains string information : postal addresses. Address example : "1780 wemmel rue hendrik de mol 59/7" I need to do a PCA analysis on that Data in order to identify on the ...
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1answer
26 views

Unable to plot PCA data in R. Are scores defined by a given object/name to plot them specifically?

I have completed a simple PCA function using code that was passed down thru the institution. It outputs scores, loadings, eigen values, % eigen values, # of principal components, mean of columns, std ...
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1answer
28 views

Obtain unstandardized factor scores from factor analysis in R

I'm conducting a factor analysis of several variables in R using factanal() (but am open to using other packages). I want to determine each case's factor score, but I want the factor scores to be ...
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2answers
36 views

How to get the number of components needed in PCA with all extreme variance?

I am trying to get the number of components needed to be used for classification. I have read a similar question Finding the dimension with highest variance using scikit-learn PCA and the scikit ...