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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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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26 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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6 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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1answer
24 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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16 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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26 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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38 views

What is the Matlab equivalent of R loadings in for PCA? [closed]

Title says it all really - I'd like to get the coefficient matrix from Matlab PCA and label it with Component 1, Component 2, etc as column headings, and the input parameters as row headings. ...
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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
16 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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1answer
26 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 ...
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1answer
34 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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16 views

principal component analysis (PCA) in two groups of data

i want to perform a principal component analysis (PCA), in SPSS, on values/scores of cognitive tasks (these are my dependent variables), to determine the minimum number of components that would ...
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6 views

Extract the error rate of the face recognition system with the test data

For the Principle Component Analysis (PCA) code found here, how do you go about extracting the error rate of the classification with the test data? Also (and this question might be redundant), but ...
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1answer
18 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
19 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
34 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
32 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
21 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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1answer
26 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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35 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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1answer
44 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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31 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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1answer
44 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%, ...
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28 views

How do i provide PCA compressed data as input for the training algorithm?

I am at the moment trying to train a dataset using naive bayes method. First i tried to bin my data and then train it, but the result of it seemed very poor. Now I want to try and reduce the ...
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12 views

How can we improve the quality of graphics in Rstudio ? my individual factor map is not stack overflow

I don't know how to improve the quality of my graphics. It seems not clear and not neat.
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20 views

OpenCV Error with PCA

I am new at Machine learning. I am trying to build an ANN MLP for expression recognition; But first I will use a PCA, but program crash with this error : OpenCV Error: Assertion failed ...
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20 views

Different results when performing PCA in R with princomp() and principal ()

I tried to use princomp() and principal() to do PCA in R with data set USArressts. However, I got two different results for loadings/rotaion and scores. First, I centered and normalised the original ...
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1answer
25 views

Calculate the multidimensional distance from the center of the galactic space

I have a data matrix called mydf which contains the 10 principal components(10 dimensions) in galactic space with 5 samples. I want to find the centroid (gravitational center) of the samples using ...
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2answers
32 views

Sklearn and PCA. Why is max n_row == max n_components?

I have a high-dimensional word-bi-gram frequency matrix (1100 x 100658, dtype=int). As column-names I'm setting the word-bi-grams (like 'of-the', 'and-the',...) with myPandaDataFrame.columns = ...
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70 views

How to plot training and test/validation data in R using ggbiplot?

I came across the answer in this post, nicely showing how a training dataset is used to generate what I call a calibrated space, into which a test/validation dataset can be transformed using ...
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1answer
29 views

PCA inputs error Argument with more than 65535

When using PCA in spark.mllib.feature, the cols of my input data is over 65535, but the RowMatrix defined in PCA is <65535, does it means I can't use PCA?
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23 views

PCA clusters by replicates not by study groups

I have a dataset like this: rep1_group1 rep1_group2 rep1_group3 rep2_group1 rep2_group2 rep2_group3 rep3_group1 rep3_group2 rep3_group3 18.26426 18.50355 17.87981 18.14181 18.12318 ...
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15 views

Getting the Principal Components from factoMineR

I am trying to walk through some steps of PCA and I think I have it figured out, but I don't know how to get the mapped data after I run the PCA command. My code is as follows: require(FactoMineR) ...
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30 views

How to perform a three-way PCA in R

I would like to perform a three-way principal component analysis in R, and though I have found a few articles explaining how it works and how to interpret results, I cannot find any useful guides ...
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1answer
37 views

PCA projecting and reconstruction in Scikit

I can perform PCA in scikit by code below: X_train has 279180 rows and 104 columns. from sklearn.decomposition import PCA pca = PCA(n_components=30) X_train_pca = pca.fit_transform(X_train) Now, ...
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1answer
47 views

Dimension Reduction (TSNE/PCA) on Sparse Matrix

I want to perform Dimension Reduction(DR) technique to visualize my data and how related they are to each other. I am planning to use Barnes-hut tsne but I am not able to get how to provide input to ...
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18 views

How to create a 2d polygon that outlines group data points and overlap analysis of such euclidean or hyperspace volumes [duplicate]

I have constructed a PCA plot using the ggbiplot function and added confidence ellipses (stat_ellipse) but I want to create a 2d polygon that outlines the contour of all data points of the different ...
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1answer
30 views

PCA : same explained variance ratio for different number of components

I'm trying to understand PCA. I have a 3-dimensional dataset, I built two PCA models, one with 2 components, and the other with 3 components. However, I don't understand why the explained variances ...
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2answers
62 views

Different results between Orange PCA and scikit-learn PCA

I am using scikit-learn PCA to find the principal components of a dataset with about 20000 features and 400+ samples. However, comparing with Orange3 PCA which should be using scikit-learn PCA, I get ...
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22 views

Data loss (or percentage explained) in dimensionality reduction

I am trying to apply dimensionality reduction using PCA, LDA, and FA. I think I can successfully produce reconstructed data and mapping matrix that makes the reconstructed data from original matrix. ...
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24 views

R tsne parameters

I ran the tsne iris example from the R Help - and PCA shows better separation than tsne. What parameters needs to be used for tsne so that it will do as good or better than PCA for the iris example?
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1answer
42 views

Sklearn PCA is pca.components_ the loadings?

Sklearn PCA is pca.components_ the loadings? I am pretty sure it is, but I am trying to follow along a research paper and I am getting different results from their loadings. I can't find it within the ...
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1answer
28 views

How can I actually reduce the dimension of feature from PCA? [duplicate]

I am trying to perform a dimension reduction using pca in Matlab. From this code below, I get coefficient, score, latent, and t-squared. However, it is still fuzzy to me how to reduce the actual ...
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49 views

PCA plot using ggbiplot

I am trying to plot a PCA using ggbiplot but am having difficulty with displaying my data in to 4 different data groups. I currently plot a PCA using the 4 columns from my dataset (KO Cerulein, KO ...
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19 views

How to interpret an answer given by PCA

I have matrix consisted of 30 variables(columns) and 14 observation(rows). Many of these variables are basically measuring similar activities. Thus I decided to use PCA to decrease the dimensionality. ...
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1answer
63 views

Calculate the transformation of a PCA in R?

I'm looking for the weights that represent the mapping from a dataset to its PCs. The aim is to set up a "calibrated" fixed space e.g. of three sorts of wine and when new observations e.g. a new sort ...
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18 views

Using vtkPCAAnalysisFilter for statistical shape modeling in python

I am trying to build a statistical shape model using vtk. Procrustes Alignment and Principal Component Analysis functions are already available in vtk, and there are python examples for them. However, ...
3
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1answer
37 views

PCA with ITK in Python

Ineed to implement a PCA analysis with ITK in Python. After looking in the manuel, it seems easy enough. typedef itk::ImagePCAShapeModelEstimator<ImageType, ImageType > my_Estimatortype; ...
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1answer
20 views

Visualizing transformed data with Python with 2 components

This is the samplefile I am trying to analyze by first running PCA: A01_01 A01_02 A01_03 A01_04 A01_05 A01_06 A01_07 A01_08 A01_09 A01_10 A01_11 A01_12 A01_13 A01_14 A01_15 A01_16 ...