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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k-means clustering as a way to evaluate PCA solution

I have two different runs of PCA: one uses more variables than the other. I am testing/comparing them using observations for which I know the "truth" about which cluster they belong to. I need a way ...
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14 views

How the eigen vector changed to identity matrix in kpca steps?

[eigvec eigval] = eigs(K_center,[],neigs,'lm',opts); disp('***********Eigen value(1)***************') disp(eigval) eig_val = eigval ~= 0; disp('***********Eigen value(2)***************') disp(eig_val) ...
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43 views

PCA in machine learning

When applying the PCA technique on a training set, we find a coefficient matrix A, which is the principal component. So when we in training stage we find this principals and project it on the data. my ...
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5 views

Results from smartpca

everyone, I have been using smartPCA in Eigensoft software for computing PCAs on my SNPs. I got eigenvectors and eigenvalues as output. But I don't know how to interpret the log file and how to use ...
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5 views

I am working on estimating the age of human by extracting facial characteristics using PCI [on hold]

I am working on age estimating of human by extracting facial characteristics using PCA...i need code in matlab to extract the facial features
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21 views

Image rotation based on PCA in Matlab

I'm working with an image of an array where we on one side has added an extra row, this in order to make the data scatter greater in one direction. Now I want to rotate the image I my idea is to use ...
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1answer
13 views

Error :Undefined function 'kernelpca_tutorial' for input arguments of type 'double'

I have rum this code http://www.mathworks.com/matlabcentral/fileexchange/27319-kernel-pca/content/kernelpca_tutorial.m But I get the error as kernelpca_tutorial(input,5) Undefined ...
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18 views

Can anyone give me the code for kernel pca

I am now trying to implement Kernel PCA code...I have done PCA code in python...Can anyone tell what are the additions I have to incorporate..Thanks in advance! X=np.array(brr) print(X.shape) M,N = ...
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13 views

Kernel PCA real concept…?

After reading papers,I figured that 1) using a kernel function, the input data in the input space is mapped to a feature space which contains the dot products of the input data points..I am not sure ...
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4 views

How can PCA be used to determine whether classes are linearly separable?

For instance, I have multiple classes with multiple features. I first find the data concerning PCA. How can I use that data to determine whether the classes are linearly separable or not?
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Covariance matrix in nonlinear pca (eqn)..Why is it different from linear pca…?

I have been reading some of the kernel PCA(KPCA) related papers...I am not clear with the concepts yet... I have found that "covariance matrix" is found by taking transpose in KPCA which is not the ...
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23 views

R: Identifying important sample parameters in PCA

Say that I have a PCA (from prcomp()) of my data (two samples: one in triplicate, on with 4 replicates) and make a biplot of this, and this plot show the samples clustering nice enough. However, one ...
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19 views

How to use the components from PCA in discriminant analysis?

Any clue on how to do this in SAS Enterprise Guide?
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1answer
13 views

dataset for Latent semantic analysis

can anyone suggest me a dataset which contains some documents and test queries with their relevance to the documents for implementation of LSA. Also, please tell about the software and hardware ...
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1answer
46 views

psych: principal - loadings components

My question is concerned with the principal() function in psych package. set.seed(0) x <- replicate(8, rnorm(10)) pca.x <- principal(x, nf=4, rotate="varimax") I know if I want to see the ...
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1answer
22 views

Applying customized principal components to data in R

I have applied prcomp function to get the principal components. I am currently using the first 3 principal components as variables. I am happy with the way the data is represented through them, so I ...
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8 views

ade4package in R > what are “lagged principal components”

I am using the ppca()function in adephylo package to perform phylogenetic principal component analysis. This function returns a value called "lagged principal component". Anyone know what these ...
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1answer
28 views

getting “PC1” insted of variable name in principal component analysis

I have some data that looks like this: head(data) net1re net2re net3re net4re net5re net6re 24 3 2 1 2 3 3 33 1 1 1 1 1 2 30 3 ...
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11 views

Matlab PCA code for diimensionality reduction of data

Can someone please share the MATLAB code for PCA for dimensionality reduction. I found some code on the internet but when i run it for my dataset it gives error: Out of memory. Type HELP MEMORY for ...
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25 views

Principal component analysis on text documents

I'm doing sentiment analysis on product reviews.I extracted words using sentiwordnet and now i need to do principal component analysis.What i need to do for performing PCA on text documents.My text ...
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19 views

Obatining PCA residusals in Python's scikit-learn

I'm using scikit-learn to conduct PCA on a large dataset with the goal of removing large, common sources of variance from a matrix X. Thus, I'd like to produce a matrix of residuals of the same size ...
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40 views

Normalize PCA scores in Stata

I am trying to create an index using PCA in Stata. I have done the PCA code listed below. Am I correct in assuming that in order to get a single index for the three variables, I should select one ...
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1answer
8 views

Can you run Singular Value Decomposition or PCA on a dataset with lots of Null Values

I have a dataset that has 300 variables, with over 300K observations. There are some columns that have lots of null values (up to 90% for some variables). I want to eventually run a clustering ...
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1answer
43 views

PCA on Sift desciptors and Fisher Vectors

I was reading this particular paper http://www.robots.ox.ac.uk/~vgg/publications/2011/Chatfield11/chatfield11.pdf and I find the Fisher Vector with GMM vocabulary approach very interesting and I would ...
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45 views

How to pass VLFeat parameters to OpenCV

I've implemented fisher vector like this from this tutorial: void* dataToEncode = data; //descriptor/centroid? vl_size dimension = 512; vl_size numClusters = 64; //nb of dimensions to keep in ...
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30 views

PCA item deletion

I'm working on a survey with 288 observation in total (108 complete answers used) and around 200 variables. I'm working on reducing those number using Principal Components Analysis, using R. Suppose ...
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57 views

Find eigenvalues and eigenvectors of a video using OpenCV using PCA

I have to find the eigenvalues and eigenvectors using PCA algorithm in OpenCV (c++). I'm just learning opencv so i don't know how to use PCA class in my program. I want to know where should I add PCA ...
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26 views

scikit-learn PCA remove common signals

Traditionally PCA is used to reduce dimensionality (I believe) but I want to use it to remove trends. My use case is that I have lots of time series (star brightnesses) and want to remove spurious ...
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38 views

Problems with output plot of PCA+environmental factors (with envfit) with vegan

I have a dataset from 6 samples with lots of species (12k) and some environmental factors (7 factors). I am trying to do a PCA ordination of the species and then add the environmental factors to the ...
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68 views

Screeplot and parallel analysis after polychoric correlation matrix-based PCA

I am using Stata 12. My dataset contains around 50 categorical (ordinal) variables. I am trying to develop a scale. Since my variables are categorical, instead of Pearson correlation I was trying to ...
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1answer
61 views

Fast Matrix Calculations in Java

I am essentially doing face recognition and verification in Java, testing with PCA and then WMPCA. I have PCA fully implemented however it runs incredibly slow, 15 minutes to train a 7900 image data ...
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20 views

PCA on raster in R :Proportion Var equally distributed among components?

I was doing PCA on 35 rasters with some environmental data (climond). Everything works fine and I use this command in R to perform a PCA on raster stack: pca<-princomp(na.omit(values(s)), ...
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1answer
32 views

How to calculate MDA for face recognition in matlab

I want to do PCA and then MDA (Multiple Discriminative Analysis) in order to reduce the dimensions of the dataset from 99^2 to 49 (face recognition). My first step was reducing dimensions from 99^2 ...
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1answer
33 views

Process Pandas DataFrames which don't fit in memory

I'm manipulating a huge DataFrame stored using HDFStore objects, the table is too big to be completely loaded in memory so I have to extract the data chunck by chunk, which is fine for a lot of tasks. ...
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2answers
115 views

How to find the largest eigenvector of a matrix?

I am trying to implement this without success and I have to do this without using external modules numpy, etc. There are 3 modules in the app I am coding this, Python and C#, C++ but no other fancy ...
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1answer
40 views

Using built-in function(PCA) in pyscripter

Can anyone suggest how to use PCA built in function in pyscripter. As a start i imported pca from matplotlib.mlab import PCA and then code area, results = PCA(arr1) ...
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40 views

check if point is inside ellipsoid (3D or higher-dimensional)

The following sample data represent a problem in two dimensions only (they stem from the following paper: Tsong et al. J. Biopharm. Stat. (1997) 7(3): 423-439). However, there might be more ...
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17 views

How to change the numbers in PCA biplot into symbols with legend shown on top of the biplot?

How do I change the numbers into symbols in my biplot? With numbers, they all looked stacked together but I need to see the difference when those numbers are changed into symbols so that the result ...
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1answer
33 views

How to find projection matrix for PCA in MATLAB?

I'm trying to reduce the dimensionality of my data with PCA. So I call [COEFF, SCORE] = princomp(data); According to this answer, I can reconstruct my data with SCORE * COEFF' + Mean, and it works. ...
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1answer
75 views

Principal Component Analysis w/ Alternating Least Squares for Missing Data

In MATLAB R2014b there is a new function, pca(), that performs PCA that can handle missing data. In the documentation it says that it performs pca with the "alternating least squares" algorithm in ...
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2answers
49 views

What exactly happens after run Algorithm PCA (Principal Component Analysis)

At this moment I'm working with an image processing project. But I have a conceptual questions regarding the PCA. What exactly happens to the matrix after applying the PCA in the matrix of an image? ...
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1answer
105 views

How to Use PCA to Reduce Dimension

Input : LBP Feature extracted from an image with dimension 75520, so the input LBP data contains 1 row and 75520 columns. Required Output: Apply PCA on input to reduce the dimension, Currently my ...
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2answers
86 views

Scikit-Learn PCA

I am using input data from here (see Section 3.1). I am trying to reproduce their covariance matrix, eigenvalues, and eigenvectors using scikit-learn. However, I am unable to reproduce the results as ...
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1answer
49 views

How can I calculate factor scores with R?

I am doing factor analysis with principle component method in SPSS. As we know, we can get factor scores in SPSS through click "scores" and "save as variables". My question is, i need to get factors ...
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1answer
46 views

Matlab - Plotting PCA Analysis

I have a 21x5 sized matrix (top5features) containing values for 5 different feature types extracted from 21 cancer nodules. I am trying to apply principal component analysis on my data and plotting ...
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1answer
60 views

Normalize PCA with scikit-learn when data is split

I have a followup question on: How to normalize with PCA and scikit-learn. I'm creating an emotion detection system and what I do now is: Split data over all emotion (distributing data over ...
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65 views

feature selection using pca using weka as library in java code

I have been trying to use principal component analysis (pca) algorithm for KDD intrusion detection data set and i have got an error on java code weka.core.WekaException: ...
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56 views

Dimension reduction using psych::principal() does not work for smaller data

I am trying to get the PCA components using the training data by using function psych::Principal(). > train <- read.csv("mytraindata.csv", header = TRUE) > train[is.na(train)] <- 0 > ...
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110 views

Sklearn.KMeans() : Get class centroid labels and reference to a dataset

Sci-Kit learn Kmeans and PCA dimensionality reduction I have a dataset, 2M rows by 7 columns, with different measurements of home power consumption with a date for each measurement. date, ...
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71 views

Matlab - use of principal components in finding longest axis of shape

I'm trying to use the pca function to find the longest axis of shapes in binary images. These are 2D images, so I'm expecting just two principal components. If I apply pca to the image itself I get ...