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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How rotate Principal Component Analysis (PCA) obtained from “pcaPP” package of R

I have this code in R-Studio: # x is my data library(pcaPP) pc <- PCAproj(x) How we can rotate result using varimax? Documentation link : pcaPP
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1answer
39 views

R first principal component

I have do a PCA on 10 stock Data of the Dow Jones, and now I try to extract a “stock index” factor from the stock data by using the first principal component of my PCA, but I don't how to do this. ...
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16 views

Report contribution of every input in every principal component that explained variance percentage in Principal Component Analysis (PCA) in MATLAB

How can I export a report like this in PCA function of MATLAB R2015a? 1 to 10 are PCA inputs. I want know what is contribution of every input in every principal component that explained variance ...
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1answer
25 views

Slicing a matrix in the givens argument of a theano function

I have the following piece of code, in which I attempt to apply PCA to the MNIST dataset. X_train, y_train = mnist.data[:60000] / 255., mnist.target[:60000] X_train, y_train = shuffle(X_train, ...
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0answers
14 views

PCA Algorithm & Residual in R [migrated]

I'm studying PCA algorithm.But I meet a problem about the residual! I did the same as this manual until step 5. From step 6, I don't quite understand its idea as the dimensions of Y and Yhat are ...
0
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0answers
29 views

Efficient way of performing PCA on a Sparse matrix

I am a newbie researcher. Recently, I was going through few papers on spectral clustering, one of them is given below "Parallel Spectral Clustering in Distributed Systems" The high level ...
1
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1answer
36 views

quesstion about PCA R language

I'm a freshman in R. I want to show the relationship between convariance matrix Σ and eigenvectors and eigenvalues. I know that Σ can be factorized such that : ∃P, ∃D: Σ = P. D. P' with P the ...
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1answer
36 views

Principal component in R

I am doing PCA in R on a data frame(df_f) pc_gtex <- prcomp(df_f) plot(pc_gtex$x[,1], pc_gtex$x[,2], col=gtex_group, main = "PCA", xlab = "PC1", ylab = "PC2") legend("topleft", col=1:17, legend = ...
2
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0answers
26 views

Armadillo princomp out of memory

I'm trying to extract PCA component from a fmat matrix m (67584 x 396) using princomp function of Armadillo Library. With the code below: fmat eigenVec, score; fvec eigenVal, t; princomp(eigenVec, ...
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0answers
14 views

Using Scikit RandomizedPCA Python

I'm programming in Python 3.4 and I'm trying to use a package form scikit called RandomizedPCA in my program to recognize persons in photos. from sklearn.decomposition import RandomizedPCA ...
3
votes
1answer
32 views

How to drop a perpendicular line from each point in a scatterplot to an (Eigen)vector?

I'm creating a visualization to illustrate how Principal Components Analysis works, by plotting Eigenvalues for some actual data (for the purposes of the illustration, I'm subsetting to 2 dimensions). ...
0
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2answers
39 views

Dimensionality reduction in Matlab

I want to reduce the dimension of data to ndim dimensions in Matlab. I am using pcares to reduce dimension but the result( i.e residuals,reconstructed ) has the same dimensions as the data and not ...
0
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0answers
33 views

Python scikit-learn PCA to Augment Missing Data in Historical VaR Cacluation

I have an array of time series data I want to use to calculate historical VaR for a large equity portfolio. The portfolio has a significant number of instruments with missing time series data and I ...
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0answers
43 views

Use of proper functions or objects to optimizing python code

I have a requirement, which when I implement takes a heck lot of time with larger data set. I am new to python, so am not sure how to tune it, The requirement is as follow. I have (m=50,000) rows and ...
2
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1answer
38 views

Principal Component Analysis (PCA) Algorithm

I have tried reading a number of references about PCA and I found the difference. Some references writes this algorithm : Prepare the initial data (m x n) Calculate the Mean Subtract the initial ...
0
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1answer
28 views

Which one should I use for dimension reduction with PCA in MATLAB, pcacov or eigs?

I'm trying to reduce my training set dimension from 1296*70000 to 128*70000. I wrote Below code: A=DicH; [M N]=size(A); mu=mean(A,2);%mean of columns Phi=zeros(M,N); C=zeros(M,M); for j=1:N ...
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0answers
21 views

Biplot coding example

A beginner here! I am trying to produce a biplot using the following code (that works) as my baseline, but needing to replace the 'each=50' with something that will look up 'benign' or 'malignant' in ...
0
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37 views

PCoA draw ellipses around points based on significance level (ggplot2, ellipse)

I would need your help folks. I want to draw ellipse around my points in PCoA plot based on 95% significance level, preferably. It would work also if I just do it based on data "Time". This is my ...
1
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1answer
31 views

PCA: scores vs loadings in biplot

I was investigating the interpretation of a biplot and meaning of loadings/scores in PCA in this question: What are the principal components scores? According to the author of the first answer the ...
0
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0answers
16 views

input for PCA feature extraction JavaCv

I'm doing PCA feature extraction to classify object in image based on color and use it as ANN input. I convert the training data into grayscale .PGM images, and the result is disappointing. After I ...
0
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1answer
19 views

Principal Component Rotation matrix with different dimension

I am not able to understand why is this happening. I have a data matrix which is (64x6830). When I do the following pr.out=prcomp(data,scale=TRUE) dim(pr.out$rotation) # [1] 6830 64 I am not able ...
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1answer
23 views

Scikit-learn (sklearn) PCA throws Type Error on sparse matrix

From the documentation of sklearn RandomizedPCA, sparse matrices are accepted as input. However when I called it with a sparse matrix, I got a TypeError : > sklearn.__version__ '0.16.1' > pca = ...
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0answers
7 views

matlab code for palm print recognition system

I have been trying to work on palm print recognition system.I am facing problem in ROI extraction and feature level fusion of the extracted features of palm image by 2D gabor filter.I am new to matlab ...
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21 views

How to use PCA in matlab on 2d image in order to correct image alignmnet?

I'm trying to find out the similarity between an ideal map and the maps constructed by the Turtlebot platform using ROS, that are out of alignment and are somewhat distorted. While i can compare the ...
0
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1answer
8 views

Using the covariance matrix for PCA() in package FactoMineR

From what I can tell, there's no option to specify a covariance (instead of a corr matrix) in PCA() in package FactoMineR. Any comments?
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19 views

Principal component analysis alternative for categorical and continuous variables in matlab

In Matlab, I would like to do a principal component analysis but my data are a mixture of mainly categorical variables with a few continuous variables. My data consists of columns that represent ...
0
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0answers
25 views

How to restore a grayscaled Image which reduced dimention using Kernel PCA

I'd like to know how to restore a grayscaled Image which reduced dimention using Kernel PCA(I used Radial basis function kernel for KPCA). I figured out the way to restore the grayscaled image which ...
0
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0answers
19 views

Implementing PCA using Incremental approach

I am trying to implement the algorithm proposed in the paper in Section (III) here in R. It uses incremental eigendecomposition and incremental SVD for calculating IPCA. Instead of working on images ...
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0answers
20 views

Separating circles using kernel PCA

I am trying to reproduce a simple example of using kernel PCA. The objective is to separate out the points from two concentric circles. Creating the data: circle <- data.frame(radius = rep(c(0, ...
0
votes
1answer
41 views

How to reduce matrix dimension using PCA in matlab? [duplicate]

I wanted to reduce a bigger dimension matrix i.e. 2000*768; to some lower dimensions i.e 200*768 or 400*400 (not fixed); using principal component analysis (PCA) in MatLab. I wanted to do it for ...
1
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1answer
49 views

how can I change the legend for ggbiplot?

Actually I am trying to plot PCA by this package but when I plot the loading, I cannot change the legend as I wish (e.g. if I want to set the legend to (+)M it shows something else. what I do is as ...
1
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2answers
53 views

How to solve OutOfMemoryException that is thrown using principal component analysis

I'm working on a project in C# that uses Principal Component Analysis to apply feature reduction/dimension reduction on a [,]matrix. The matrix columns are features (words and bigrams) that have been ...
0
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0answers
49 views

change point colors and shapes in ggbiplot in r

I am using ggbiplot() and would like to manipulate the colors and shapes of the datapoints to make them more printer friendly. Currently I get the default rainbow of colors from ggbiplot(). I have ...
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votes
1answer
43 views

How to set colours in biplot PCA analysis in R

Im very new to the R environment and started using it on a practice file. i'v created a biplot (biplot is what im required to do) and mange to choose the PC's i wanted. Iv looked for an answer which ...
0
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0answers
13 views

Plot a Correlation Circle in Python (Spyder)

I've been doing some Geometrical Data Analysis (GDA) such as Principal Component Analysis (PCA). I'm looking to plot a Correlation Circle... these look a bit like this: http://bit.ly/1EgjpNU (sorry, ...
0
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1answer
20 views

R: ggfortify: “Objects of type prcomp not supported by autoplot”

I am trying to use ggfortify to visualize the results of a PCA I did using prcomp. sample code: iris.pca <- iris[c(1, 2, 3, 4)] autoplot(prcomp(iris.pca)) Error: Objects of type prcomp ...
0
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0answers
23 views

How to do dimensionality reduction on coloured images

I have to do scene labelling, and for this I intend to do a dimensionality reduction step on the images using PCA. I am using scikit package for that with the following sample code: import numpy as ...
1
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0answers
24 views

Writing (and using) principal component analysis in matlab

I (hope to) obtain a matrix with data on different characteristics on rat calls (in the ultrasound). Variables include starting frequency, ending frequency, duration etc etc. The observations will ...
4
votes
1answer
23 views

Adding point and lines to 3D scatter plot in R

I want to visualize concentration ellipsoids in 3d scatter plot in respect of principal components (principal components as axes of these ellipsoids). I used function scatter3d with option ellipsoid = ...
0
votes
1answer
47 views

PCA computation on 2D vectors of type double

I am trying to run PCA on a dataset which I have stored into a 2D vector from a file as follows: std::vector<std::vector<double> > tmpVec; while(std::getline(file, numStream)) { ...
0
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1answer
32 views

colored dots on matlab plot

I want to make a PCA-plot, where the colour of each dot is given by a special number. The colour of the dot should be from blue (small number) to red (large number). I am trying to do this: ...
1
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2answers
29 views

Performing Decomposition on Sparse Matrices in Python

I'm trying to decomposing signals in components (matrix factorization) in a large sparse matrix in Python using the sklearn library. I made use of scipy's scipy.sparse.csc_matrix to construct my ...
2
votes
1answer
45 views

How do i apply principal component analysis on an image

I am trying to apply pca on an image. Assign new W axis which is the first principal component,and second principal component as the P axis. In the W–P axis,the image is re-plotted. can anyone tell me ...
0
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0answers
47 views

PCA SIFT gives the same image descriptor vector as SIFT

I am using the following two small codes for testing the working of PCA along with SIFT. The first code uses PCA while the second code doesn't. The problem is that when I write the descriptor vectors ...
2
votes
1answer
58 views

Calculating and Plotting Principal Components using Principal Component Analysis (PCA) in Matlab

I have an image. I need to identify the axis along which the variance of the image is the smallest. A bit of reading and searching led me to the conclusion that Principal Component Analysis(PCA) is ...
0
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0answers
42 views

PCA in EmguCV / OpenCV

I'm trying to perform PCA on a data set. This data set has 10 samples(each row one sample) and each sample has 1000 features(columns). Below is the code : Matrix<float> test = new ...
3
votes
0answers
32 views

clusplot - showing variables

I would like to add to a clusplot plot the variables used for pca as arrows. I am not sure that a way has been implemented (I can't find anything in the documentation). I have produced a clusplot ...
0
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0answers
45 views

Matlab - PCA, biplot and convex hull

I generate a random data array and I wish to perform on it PCA where I color differently each group and perform a convex hull but without successes. I will appreciate a lot if you can explain me how ...
2
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0answers
35 views

Constructing scores from principal loadings in R

I want to understand how the principal() function in psych package calculate the $score element. I want to try the covariance matrix rather than correlation matrix. model <- ...
2
votes
1answer
75 views

Higher Prediction Error in after Preprocessing using PCA with Neural Networks in Matlab

I am using PCA before feeding the training set into a neural network. It reduces 13 features down to 8 and trains over 2200 training sets. The MAPE I get with this is close to 2.5 - 2.6 %. If I train ...