**-1**

votes

**0**answers

8 views

### 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 ...

**-1**

votes

**0**answers

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 ...

**0**

votes

**0**answers

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 ?

**1**

vote

**1**answer

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 ...

**-2**

votes

**0**answers

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, ...

**0**

votes

**0**answers

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.
...

**0**

votes

**0**answers

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 ...

**-1**

votes

**0**answers

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.
...

**0**

votes

**0**answers

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 ...

**0**

votes

**1**answer

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 ...

**0**

votes

**0**answers

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,
...

**0**

votes

**0**answers

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 ...

**0**

votes

**0**answers

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 ...

**-3**

votes

**0**answers

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- ...

**1**

vote

**1**answer

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 ...

**-1**

votes

**0**answers

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**

votes

**1**answer

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**

votes

**1**answer

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. ...

**0**

votes

**1**answer

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, ...

**1**

vote

**1**answer

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:
...

**0**

votes

**0**answers

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 ...

**0**

votes

**1**answer

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 ...

**0**

votes

**0**answers

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 ...

**0**

votes

**0**answers

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 ...

**0**

votes

**0**answers

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 ...

**3**

votes

**0**answers

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 ...

**0**

votes

**0**answers

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.
...

**0**

votes

**0**answers

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 ...

**0**

votes

**0**answers

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**

votes

**2**answers

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 ...

**-1**

votes

**0**answers

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 ...

**0**

votes

**1**answer

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 ...

**-1**

votes

**1**answer

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 ...

**0**

votes

**0**answers

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 ...

**0**

votes

**0**answers

23 views

### How to use the components from PCA in discriminant analysis?

Any clue on how to do this in SAS Enterprise Guide?

**0**

votes

**1**answer

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**

vote

**1**answer

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 ...

**0**

votes

**1**answer

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 ...

**0**

votes

**0**answers

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 ...

**1**

vote

**1**answer

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 ...

**0**

votes

**0**answers

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**

votes

**0**answers

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 ...

**0**

votes

**0**answers

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**

votes

**1**answer

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**

votes

**1**answer

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 ...

**0**

votes

**0**answers

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 ...

**1**

vote

**1**answer

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 ...

**0**

votes

**0**answers

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 ...

**0**

votes

**0**answers

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 ...

**1**

vote

**0**answers

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 ...