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 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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155 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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11 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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14 views

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
49 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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14 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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18 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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10 views

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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24 views

How to understand PCA output in R? [migrated]

I have problem on understanding the PCA output. I found two ways of doing PCA: 1) pca <- prcomp(inputdata); 2) do it myself: Xoriginal=t(as.matrix(inputdata)) ; rm=rowMeans(Xoriginal); ...
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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
39 views

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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24 views

Principle component analysis (components explain small variation), what else can I try? [migrated]

I am trying to use PCA to reduce dimensions before applying linear regression. The problem is that my first 10 components are so weak (explaining only tiny variances - the 10th component's cumulative ...
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24 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
39 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 ...
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1answer
39 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
27 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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28 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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2answers
48 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
37 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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Clustering of variables around latent components

I have a data base composed of 70 individuals and 97 variables. I decided to use the clustering of variable to reduce the number of dimension whithout losing the information of each variables which ...
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3 views

probabilistic principal component

I am studying the paper form Bishop in PPCA click here Can someone explain to me how the Expectation step is derived? There is an explanation that the Expectation with respect to p(x_n | t_n; W; ...
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1answer
20 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
22 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
21 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 ...
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how dimensionality reduction with pca in matlab [duplicate]

I have I big data, which contains 53 row and 16384 columns . I must reduce the number of columns in matlab with pca method .
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25 views

MATLAB perform PCA on the correlation matrix

As far as I understand, the PCA is performed on the covariance matrix. Is there a way to use the correlation matrix instead? Does the latent output correspond to the eigenvalues?
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35 views

Select all attributes using pca in r

I am using pca to reduce my data but I can't figure out a way to select all of my attributes. My data size is 195993x244. I am able to select a few attributes but when I try to select them all it ...
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1answer
64 views

Why does classifier accuracy drop after PCA, even though 99% of the total variance is covered?

I have a 500x1000 feature vector and principal component analysis says that over 99% of total variance is covered by the first component. So I replace 1000 dimension point by 1 dimension point giving ...
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1answer
34 views

Significance of 99% of variance covered by the first component in PCA

What does it mean/signify when the first component covers for more than 99% of the total variance in PCA analysis ? I have a feature vector of size 500X1000 on which I used Matlab's pca function ...
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1answer
51 views

Eigenfaces in OpenCV using C++

I have written a code to create eigenfaces. I have taken 3 images of different people as input. I have calculated the eigenvectors and eigenvalues. Since only 3 images are taken, I select all the ...
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1answer
25 views

Export PCA components in r

I did pca on my data using r and I am trying to save the components with an eigenvalue larger than 1. > summary(pca1) Importance of components: Comp.1 Comp.2 Comp.3 ...
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28 views

How to do distributed Principal Components Analysis + Kmeans using Apache Spark?

I need to run Principal Components Analysis and K-means clustering on a large-ish dataset (around 10 GB) which is spread out over many files. I want to use Apache Spark for this since it's known to ...
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1answer
18 views

Spectral clustering with Similarity matrix constructed by jaccard coefficient

I have a categorical dataset, I am performing spectral clustering on it. But I do not get very good output. I choose the eigen vectors corresponding to largest eigen values as my centroids for ...
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1answer
32 views

Bad Orientation of Principal Axis of a Point Cloud

I'm trying to calculate the principal axis via principal component analysis. I have a pointcloud and use for this the Point Cloud Library (pcl). Furthermore, I try to visualize the principal axis I ...
3
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1answer
102 views

Insufficient memory opencv

I am beginner to OpenCV and C++. I am trying to write PCA code for face recognition using 3 different faces. For this, each image(of size d=mxn) is reshaped to a column vector of d elements. typedef ...
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1answer
30 views

How to choose good SURF feature keypoints?

I am currently working on object classification problem. My objective is to use the SURF descriptors to train MLP based artificial neural network in opencv and generate a model for object ...
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14 views

How to export PCA from Weka

I am performing a PCA operation on my dataset using WEKA (filter-unsupervised-principal component). Once I apply, I am getting the PCA. However I am not able to export the PCA in a separate file for ...
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1answer
22 views

Reducing cubes of image to single vector using PCA

This is a following up question to my previous question about PCA (so the beginning is the same but the question is different). I have a 4D image of size 90 x 60 x 12 x 350. That means that each ...
0
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1answer
35 views

Reducing dimensionality of features with PCA

I'm totally confused regarding PCA. I have a 4D image of size 90 x 60 x 12 x 350. That means that each voxel is a vector of size 350 (time series). Now I divide the 3D image (90 x 60 x 12) into ...
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1answer
34 views

How to select first component and calculate percentage of variation in PCA?

I have a matrix M where the columns are data points and the rows are features. Now I want to do PCA and select only the first component which has highest variance. I know that I can do it in Matlab ...
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5 views

“Important” vectors of the standard basis from principal components

In PCA, given that for project-related reasons I do not want to work in the eigenbasis of the covariance matrix (obtained from SVD), how would you determine the "important" vectors of the standard ...
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1answer
17 views

Matlab's Princomp command- is it non-negative definite or not?

In Matlab, while trying to do PCA, is there a difference when using the princomp command for positive vs. negative data values? Is it a non-negative definite command? Thank you!
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62 views

Labelling in Principal component analysis in R

This is a continuation of the following post. Principal component in R This is as.fumeric function as.fumeric <- function(x,levels=unique(x)) as.numeric(factor(x,levels=levels)) ...
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Normalization in pca matlab, getting different results

clear all;clc; [red_f coeff ]=pca_reduction(train_data); sec_red_f=zscore(train_data)*coeff; . function [ reduced_feature_set,red_coeff ] = pca_reduction( feature_set ) [coeff,score,latent] = ...
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1answer
44 views

Opencv PCA Microsoft C++ exception: cv::Exception at memory location

I have a strange problem. I'm training a pca with a vector of data (Mat myData) as such: PCA pca(myData, Mat(), CV_PCA_DATA_AS_ROW, 90); The number of rows in myData coresponds to the number of ...
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20 views

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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46 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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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
46 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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34 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 ...