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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Calculating different PCAs in R

I want to use princomp() function in R in order to calculate Principle Component Analysis. In different papers, I have seen "PCA 1", "PCA 2", "PCA 11" , etc. Would you please tell me how can i ...
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13 views

Is there any measure to improve the performance of self organizing maps?

I have been working with SOM for a while now..I wud like to know is there any mechanism to improve SOM's performance like by modifying weight initialization strategies?..I have tried random ...
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15 views

number of independent components in ICA

Could we guess the number of independent components which produced by ICA algorithm. If I have a 14 variable, does it neccesarily produce 14 independent components ?
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1answer
30 views

Matplotlib PCA sample not working after altering dimensions

I am trying to learn how to use matplotlib.mlabPCA. Below I have the following code: import numpy as np from matplotlib import pyplot as plt from matplotlib.mlab import PCA as mlabPCA from ...
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33 views

Energy landscape in R

I have an n x n data matrix describing the pairwise differences between variables. I can make a heatmap or PCA to show clusters within the data. However, I would like to plot something akin to a PCA, ...
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32 views

X and Y axis changes when 95% confidence interval ellipses are added

I am trying to plot 95% confidence interval ellipses onto a PCA plot using ggplot2. One particular dataset has a plot with axis that changes when the ellipses are added but I am not sure why. ...
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26 views

PCA - Relation Between Variance of Eigen values and the effectiveness of PCA on the data

If the covariance matrix has eigenvalues λ1 ≥ λ2 ... ≥ λd > 0 why is the variance of the eigen values, a measure of whether or not PCA would be useful for analyzing the data (the higher the value ...
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11 views

Which feature selection technique should we use when we have mixture of qualitative and quantitative variables?

I have a data set of 300 instances and 35 variables. My data is mixture of qualitative and quantitative variables. I have to pick some of the variables(say top 25) which best explains the data. ...
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22 views

R: Plot a subset of principal component variables when you have too many variables

I am new to using Vegan for ecosystem level analysis. I have a dataset with over 4,000 taxa across ten sites, and another with 37 chem-based observations from all ten sites. I have analyzed both ...
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1answer
30 views

How to select top needed features(variables) after pca in matlab?

I have referred How to select top 100 features(a subset) which are most relevant after pca? I am using pca() instead of princomp() as it is removed in new release. I know that "The eigenvalues ...
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31 views

Why PCA gives vector as output for 294*40 matrix in matlab

I am new to stats and matlab too. I have to do feature selection in my project so I used principle component analysis(pca). I referred tutorial to use pca in matlab My code is given below, ...
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16 views

How to use Principal Component Analysis with ANN in MATLAB?

Variables used here: trainX: 1818x13 (Input Matrix with 13 features) trainY: 1818x1 (Output Vector) testX and testY are corresponding variables for testing the neural network. Now, I want to use ...
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9 views

How do I Get information from one dataframe to a PCA plot (colors)

I have a data set(data) looking something like this: rowname Patient 1 Patient 2 Patient 3 etc. Gene 1 4.5 6.7 5.6 Gene 2 6.6 10 8 Gene 3 3 4 ...
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37 views

different PCAs in Elman 1991 in R

I would like to replicate (Elman 1991, you can find this paper easily by googling). There i get the activations from the output layer. Then I would like to generate PCAs, according to Elman 1991. 1- ...
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1answer
25 views

kernel PCA with Kernlab and classification of Colon--cancer dataset

I need to Perform kernel PCA on the colon-­‐cancer dataset: and then I need to Plot number of principal components vs classification accuracy with PCA data. For the first part i ...
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30 views

R: PCA returns low p-value using Psych package [migrated]

I have been trying to carry out Principal Component Analysis (PCA) in R using the function Psych:principal. However the returned p-value has been very low in several attempts using different sets of ...
0
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1answer
28 views

How to do a PCA with 0 (zero) values

I want to do a PCA in R with monthly rainfall values. Since there is no rain during winter, quite a few values in my columns are 0. When I run the PCA, the following message appears in the console: ...
0
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1answer
12 views

Weka PCA how to select attribute

I have a dataset of family monthly spending distribution and I would like to test if the attribute 1 and/or attribute 2 affect the spending range (class). This is my first time using Weka with PCA. ...
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1answer
18 views

SNPRelate: how to give specific color to a population in PCA plot

I am using SNPRelate for PCA analysis. Its using default color for different populations but I want to color them according to me. Plotting commands are like this: plot(tab$EV2, tab$EV1, ...
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1answer
36 views

How to get “proportion of variance” vector from princomp in R

This should be very basic and I hope someone can help me. I ran a principal component analysis with the following call: pca <- princomp(....) summary(pca) Summary pca returns this description: ...
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16 views

Applying PCA gives nan values in reduced matrix; how to apply successful dimensionality reduction

I am using Python. I apply kernel PCA with 'rbf' kernels (I tried the other options as well) using Python's KernelPCA package from sklearn. When doing so, I get the warning "RuntimeWarning: invalid ...
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1answer
56 views

Why doesn't my PCA work? [duplicate]

I have a dataset with 200 rows and 20 columns where I would like to perform a PCA on using prcomp() in R. However this doesn't work because my first column is listed as integer when I do str(x). The ...
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29 views

Using pca Crashes Matlab

For this problem, I do not understand why my MATLAB crashes every time I run my pca line. I am using pca on a matrix containing the anomalous faces as described below: pics.mat contains a matrix ...
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44 views

R: PCA: Compute daily explained variance

I want to use R to estimate the daily explained variance for a fixed number of eigenvectors (which is the same as the "Absorption Ratio" defined by Kritzman et al in this article). I'm using this data ...
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8 views

Use values of time vector as features or use PCA

I have a vector of the form t=[value1,value2,...,valueN] where t goes from 1 to 100. This is a 2 dimensional vector, it can be plotted against an axis X. I want to match every value of t (1-100) to ...
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115 views

How many thresholds and distance matrix are in Eigenface?

I edited my question trying to make it as short and precise. I am developing a prototype of a facial recognition system for my Graduation Project. I use Eigenface and my main source is the document ...
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25 views

PCA analysis on a big matrix using scikit

Hello I'm trying to use the scikit package for the first time (and python as well) and need some help. Basically I have a huge 39x39 matrix and I need to do a Principle component analysis on them. ...
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27 views

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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23 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) ...
2
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2answers
71 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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9 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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1answer
31 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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1answer
26 views

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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28 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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23 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
21 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 ...
1
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1answer
58 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
26 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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0answers
10 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
33 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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30 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 ...
0
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0answers
21 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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59 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 ...
0
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1answer
10 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 ...
0
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1answer
63 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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75 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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1answer
37 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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90 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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31 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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55 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 ...