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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Is it required to add mean of original train data to reduced dimension train and test data when using PCA?

I have reduced test and train data dimension using PCA. Now I want to use svm for classification. Do I need to add mean of original train data to pca reduced train and test data by command as ...
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Is it necessary to convert zero centered train and test date to original format after feature reduction using PCA?

I have centered train and test data using train data 'mean' parameter and performed feature dimension reduction using PCA. Now i want to scale pca transformed train and test data for classification ...
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15 views

Symmetry of autocovariance matrix by multiplying feature matrix with its transpose

There is a mathematical theorem stating that a matrix A multiplied with its transpose yields a symmetric, positive definite matrix (thus leading to positive eigenvalues). Why does the symmetry test ...
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23 views

When using ICA rather than PCA?

I know that PCA and ICA both are used for dimensionality reduction and in PCA principal components are orthogonal (not necessarily independent) but in ICA they are independent. Can anybody please ...
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23 views

subset of prcomp object in R

My question might be simple but I could not find an answer. I'm basically computing the PCA for a set of variables and everything works fine. Lets say I'm using the iris data as an example, but my ...
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20 views

PCA with colorbar

I have this data of which I want to make a principal component analysis. In particular for each data point I want to associate a color. This is my code: for ii=1:size(SBF_ens,1) SBF(ii) ...
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10 views

Does (non-metric) multidimensional scaling reduce noise?

Perform PCA can reduce noise from data. Is this similar with (non-metric) multidimensional scaling ?
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34 views

Difference between princomp and prcomp rotation and loadings

In the code below what is the difference between pc3$loadings and pc4$rotation? Code: pc3<-princomp(datadf, cor=TRUE) pc3$loadings pc4<-prcomp(datadf,cor=TRUE) pc4$rotation Data: ...
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34 views

Dimension reduction Using PCA while preserving variance in percentage

i am trying to reduce the dimensions of MNIST dataset using PCA. Trick is, i have to preserve the certain percentage of variance(say 80%) while reducing the dimension. I am using Scikit learn. I am ...
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44 views

Using PCA to pick predictors for Arima Model

I'm trying to use PCA to pick good predictors to use in the xreg argument of an arima model to try to forecast the tVar variable below. I am just using the reduced dataset below with just a few ...
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Plotting PCA in different

I have searched the internet trying to find a way to give the arrows in a PCA- plot different colours according to the loadings. The package ggbiplot would work, but this is not possible to install in ...
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23 views

Principal Component Analysis using FactoMineR

I am new to R and this is my first question on a blog like this, so please excuse me if my question is too long or not very clear! I want to create groups of species (clusters) that are similar in ...
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Using PCA for for feature extraction of OCR process

I have a data from feature extraction process (using DCT method). The size is 4096x601 (mxn) in double type. I wanted to use PCA for dimensionality reduction without losing important information ...
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29 views

View PCA component matrix in R

I am using R for a PCA, using the function princomp (I'm also open to using prcomp). I'd like to view the component matrix, as found in SPSS, where each variable is correlated to each component. Note ...
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45 views

How to calculate the volume of the intersection of ellipses in r

I was wondering how to calculate the intersection between two ellipses e.g. the volume of the intersection between versicolor and virginca as illustrated in this graph: which is plotted using the ...
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18 views

PCA biplot group individuals

I have many individuals in my data (n=600). I run a PCA and would like to create a Biplot of variables and individuals. I'd like the variables coloured by their contribution. These individuals come ...
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27 views

Coloring the observations by groups in PCA with fviz_pca_ind

I’m trying to visualise my results from principal component analysis (PCA) by coloring groups of individuals (respondents), but I have problem with my grouping variable. My script looks like this ...
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37 views

plot PCA vs one dimension in R

I have a data set with 10 dimension as feature and 1 dimension as cluster number (11 dimension together). how can I plot the PCA of my data (PC1) vs cluster number using R? qplot(x = ...
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13 views

PCA Score plot Matlab with confidence limits

I am trying to plot my Principle component plots with the confidence interval ovals I am not sure how to do this this is currently my plot code: figure; plot(score(:,1),score(:,2),'o'); ...
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28 views

How to do cross validation in R to choose the number of principal component

I want to choose the number of significant principal components using 10 fold cross validation. i know how to choose using scree plot and looking at deviance but need to know if there is any R code to ...
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30 views

Why 'pca' in Matlab doesn't give orthogonal principle components?

Whey using pca in Matlab, I cannot get the orthogonal principle component matrix For example: A=[3,1,-1;2,4,0;4,-2,-5;11,22,20]; A = 3 1 -1 2 4 0 4 -2 -5 11 ...
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13 views

I wish to visualize SVM decision boundary on my data . I am unable to spot the cause of error. Here is the code

NOTE : The variable x contains 30 tuples of feature vector of 5 dimension. These values of x are transferred to x_train.x can be imagined to be the form of x = [[1.0 , 2.0 , 3,0 , 4.0 , 5.0 ], ...
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28 views

How create variables to be used in model after Principal components analysis (PCs)

I have run the principal component analysis using R tool on my data which had 20 variables. After running PCA i find that there are only 7 Components which are defining 95% of variance .so i selected ...
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Correlation biplot (scaling 2) and distance biplot (scaling 1) PCA not in the right length in R

I'm running a principal component analysis and I was told that the vector of the scaling 1 are supposed to be of length 1. Here they are enormously bigger than 1. In scaling 2, it's suppose to be less ...
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6 views

Cleaning up a Biplot

I'm new to Rstudio, having created a biplot of a dataset (384 obs. of 646 variables - species vs site distribution) using data from my local City Council, for a uni project. I managed to create it, ...
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26 views

How to determine time complexity of EM algorithm of probabilistic PCA?

I was studying probabilistic pca from bishop's book, there an EM algo is provdied to calculate principal subspace. Here M is MxM matrix, W is DxM matrix and (xn − x) is vector Dx1 matrix. Later ...
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36 views

Factoextra - change line width for ellipses and variables

I'm currently making pca with factomineR and factoextra packages. An example of my code with data iris : library(FactoMineR) library(factoextra) data(iris) res.pca<-PCA(iris , scale.unit=TRUE, ...
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21 views

Is SVM resilient to noise

I have tranning set composed of 36 features. when I calculated "explained" value of PCA using Matlab. I notice that only the first 24 components are important. my question is, would I gain a better ...
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51 views

Problems with Shiny PCA and ggbiplot coloring

I've seen quite a few questions on StackOverflow about problems with aes mapping in Shiny, and most of these are solved with using aes_string() in people's code. These are almost exclusively to do ...
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11 views

Custom labels using ade4 and factoextra packages

I want to make and plot PCA with ade4 package and then customize with factoextra. It works very well with both packages until I realize my biplot with factoextra, I don't know how to customize labels. ...
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30 views

R: Using data.frame information to colour points on a scatter plot

I have generated a scatter plot of my data using plot(data$pco$li[,1], data$pco$li[,2]). The result is a PCA scatter output. I now want to colour each point on the scatter according to it's category ...
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1answer
8 views

How to compress single array using Python OpenCV cv2.PCAProject

Background: say I have already trained a PCA in python using PCACompute as follows: import numpy as np import cv2 as cv # generate some random data data = np.random.sample(128) for x in xrange(63): ...
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34 views

How can I apply PCA on term-document matrix in R?

How can I apply PCA on term-document matrix in R? I've got a document and I've applied PCA on the term-document matrix but all the pc components are zero. I'm wondering if it is a right way to ...
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19 views

math domain error while using PCA

I am using python's scikit-learn package to implement PCA .I am getting math domain error : C:\Users\Akshenndra\Anaconda2\lib\site-packages\sklearn\decomposition\pca.pyc in ...
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44 views

Using theano to compute the Covariance of Matrix columns

I want to compute the covariance of the MNIST Dataset using Theano. That means I want to compile a theano function which implements $$ 1/N \sum_{n = i}^{N}(x_i - \bar{x})^T(x_i - \bar{x}) $$ where ...
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17 views

How to calculate the recognition rate using Principal Component Analysis (PCA)

In my matlab code, I have reached the point where I have projected the eigen faces and calculated the the minimum distance using the commands euclide_dist = [ ]; for i=1 : size(En,2) temp = ...
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1answer
22 views

1.#QNAN error in OpenCV PCA

I'm trying to dimensionality reduction with OpenCV 3.0.0 by PCA. When the code running I get a vector with -1.#QNAN values. What am I doing wrong? //code #include <cv.h> #include ...
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1answer
33 views

PCA for image processing

I want to get the first principal component for an image using the built-in function pca. How can I do that? I have tried the following code: [COEFF, SCORE] = pca(image); ...
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29 views

How to annotated labels to a 3D matplotlib scatter plot?

I have run a sklearn - Principal Component Analysis on my data with 3 principal components (PC1, PC2, PC3). The data looks like this (it's a pandas DataFrame): Here is the code for plotting the ...
2
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1answer
42 views

scikit-learn PCA transform returns incorrect reduced feature length

I try to apply PCA in my code and when I train my data using the following code: def gather_train(): train_data = np.array([]) train_labels = np.array([]) with open(training_info, "r") as ...
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1answer
19 views

Reason of Non-singleton dimensions mismatch in data under PCA

During pca analysis using built in pca function in matlab, I faced the following error. Data is actually a feature vector obtained from 30 MR images. >> size(data) ans = 30 281 389 ...
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1answer
20 views

How can I draw those to graphs on the same one and in different colours?

I just need to put those graphs on the same one, and the points of the first needs to be in different colour than the second one. I think it is something very easy but I can not find it please help. ...
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1answer
38 views

Python PCA - projection into lower dimensional space

i am trying to implement PCA, which worked well regarding the intermediate results such as eigenvalues and eigenvectors. Yet when i try to project the data (3 dimensional) into the a ...
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2answers
51 views

MNIST Python numpy eigen vectors visualization error

I am trying to perform PCA on MNIST dataset, as part of the process I need to generate the eigen vectors and visualize the top features. Following is my algorithm: Load images Subtract mean ...
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1answer
23 views

Matching features of images using PCA-SIFT

I want to match features in two images to detect copy-move forgery. I used the PCA-SIFT code to detect image features. But, I am having trouble in matching the PCA-SIFT features. According to several ...
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28 views

Projecting subsequent years of species data onto PCA ordination

I am running a PCA on Hellinger-transformed species data for multiple sites in a single year (ex: 1995). I want to calculate site scores from those same sites in the next year (1996) by projecting ...
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38 views

Illumination Normalization for Face Recognition

I am doing a project in Face Recognition. However, when I implemented the Illumination normalization I didn't get the expected results. I applied the ideal in the paper below: ...
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50 views

PCA reduced the performance of Logistic Regression? [duplicate]

I am putting this code down there where I have done logistic regression and PCA + logistic regression. With logistic I have got 95% accuracy, while with PCA + logistic I am getting strange results. I ...
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36 views

How to bind/merge prcomp and predict data in r?

To plot a predicted validation/test data set within a training dataset in ggbiplot as addressed here, I would like to bind/merge the two datasets. The given mwe is: library(ggbiplot) data(wine) ...
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48 views

Why did PCA reduced the performance of Logistic Regression?

I performed Logistic regression on a binary classification problem with data of 50000 X 370 dimensions.I got accuracy of about 90%.But when i did PCA + logistic on data, my accuracy reduced to 10%, ...