**0**

votes

**0**answers

11 views

### sklearn's PCA.fit_transform results don't match product PCA.components_ and input data

I'm attempting to use sklearn's PCA functionality to reduce my data to 2 dimensions. However, I noticed when I do this using the fit_transform() function the result does not match the result of ...

**0**

votes

**0**answers

17 views

### pca feature selection in matlab [duplicate]

I have my features in matrix m and I computed the principal component analysis as below:
[coeff, score, latent] = pca(m,'algorithm','svd','centered',true);
latent contains the eigenvalues and ...

**0**

votes

**0**answers

6 views

### Is there a memory efficient alternative to homals for performing NLPCA in R?

I want to perform a nonlinear PCA in R.
I have a quite big dataset with numerical, ordinal and factorial variables.
Usually I perform these kinds of PCA with the homals packages setting the nrank ...

**0**

votes

**1**answer

13 views

### Labeling Ponts on Individuals Factor Map (PCA) using FactoMineR

I am running PCA using FactoMineR and cannot seem to get the individual points labeled on the Individuals factor map. My dataset ("ExData.csv") contains values in a matrix with 13 rows (labeled A ...

**-1**

votes

**0**answers

15 views

### PCA implementation for face recognition in java [on hold]

I am looking for a face recognition code in java using pca algorithm, i have search alot to find it on opencv but did''nt have any success in it.

**0**

votes

**0**answers

17 views

### fitcdiscr for LDA (Linear Discrimation Analysis) in MATLAB

I have created a feature matrix of 72x25 size (X) from 72 images(36 of which are grass images and 36 of which are straw images) and 25 corresponds to the features I have calculated for each image. Now ...

**3**

votes

**0**answers

44 views

### classification: PCA and logistic regression using sklearn

Step 0: Problem description
I have a classification problem, ie I want to predict a binary target based on a collection of features (which is a mix of numerical and categorical variables), using ...

**0**

votes

**0**answers

28 views

### ggbiplot - trouble generating multiple plots

I am very new to R and PCA and I have hit a bit of a wall.
Basically, I have generated 5 different sets of data and for each, I have 4-5 PCs that I want to plot. My problem is, that it won't let me ...

**1**

vote

**1**answer

15 views

### Python scikit learn pca.explained_variance_ratio_ cutoff

Guru,
When choosing the number of principal components (k), we choose k to be the smallest value so that for example, 99% of variance, is retained.
However, in the Python Scikit learn, I am not ...

**0**

votes

**1**answer

14 views

### Matlab PCA for loop

so I've been working on PCA in matlab for anomaly detection in the dataset.
I have carried out the dimensionality reduction and the anomaly detection using the T^2 and Q statistics.
However I've ...

**0**

votes

**0**answers

11 views

### How to use Principle Component Analysis (PCA) for dimensionality reduction in matlab [duplicate]

I have 50 Matrices of data with 80*80 dimensions. I need to classify them, but before that I have to reduce the dimensionality of data. As I searched the web, the best tool is PCA.
I know that before ...

**1**

vote

**1**answer

21 views

### 3D Object Oriented Bounding Box using PCA

I am trying to compute the object oriented bounding box for a set of points. I'm using c++ and the Eigen linear algebra library.
I have been using two blog posts as guides yet still my bounding boxes ...

**0**

votes

**1**answer

35 views

### PCA inverse transform manually

I am using scikit-learn. The nature of my application is such that I do the fitting offline, and then can only use the resulting coefficients online(on the fly), to manually calculate various ...

**-2**

votes

**0**answers

22 views

### How to find more correlated variables to group them together using multivariate analysis in R? [migrated]

My dataframe consists of both categorical and numerical variables. The target variable is categorical. The data frame also has substantial missing values where I cannot omit them or use any suitable ...

**0**

votes

**0**answers

38 views

### Discriminant Analysis of Principal components and how to graphically show the distances of data points to its multivariate centroid

I have been attempting to graphically produce a scatterplot (similar to figure 1) showing the distance of data points to its multivariate centroid. The data contains two categorical grouping factors ...

**0**

votes

**1**answer

26 views

### Screeplot in R with psych package

I have computed a PCA with the principal function in the psych package in R. I would like to build a screeplot from the eigenvalues, but both scree(PCA) and screeplot(PCA) give me errors and no plot. ...

**0**

votes

**0**answers

16 views

### How to avoid variable labels overlap in ggbiplot?

I have a pca object (ir.pca) and a grouping variable coming from a kmeans analysis (group). I have created a plot using this code:
g<-ggbiplot(ir.pca, obs.scale = 1, var.scale = ...

**0**

votes

**1**answer

24 views

### Does cv::PCA (openCV) calculate covariance matrix of data itself? or we should pass covarince matrix to it?

I trying to make face recognition using principal component analysis(PCA) combine with support vector machine(SVM). but I'm confused of cv::pca! according to this doc for calculating eigenvectors and ...

**1**

vote

**0**answers

27 views

### Should Reconstructed Image Matrix Values be too big?

I trying to implement face recognition with eigenfaces method on the MATLAB.However i controlled my code through head to tail , i does not find any mistake(I scanned lots of thesis,slides,videos to ...

**0**

votes

**1**answer

46 views

### Principal Component Analysis with Caret

I'm using Caret's PCI preprocessing.
multinomFit <- train(LoanStatus~., train, method = "multinom", std=TRUE, family=binomial, metric = "ROC", thresh = 0.85, verbose = TRUE, pcaComp=7, ...

**1**

vote

**0**answers

35 views

### MATLAB: Principal Component Analysis (PCA) and Classification Learner

I'm building a logistic regression model in Matlab with the Classification Learner Toolbox.
I ran PCA in Matlab:
[coeff, score, latent, tsquared, explained] = pca(CreditNumeric);
Here's the coeff, ...

**0**

votes

**1**answer

39 views

### PCA - low variable loadings on first component

I perform a PCA on 40 variables & keep all components with a min. eigenvalue of 1 (which results in a total of 5 components) - STATA gives me the following output:
>pca *all variables*, ...

**0**

votes

**0**answers

34 views

### Principle Components for categorical Variables

I have data that contains both continuous and categorical variables. I want to find principle components as one can find using prcomp function (in R) for continuous variables. I've seen the function ...

**1**

vote

**2**answers

44 views

### Analysis of PCA

I'm using the rela package to check whether I can use PCA in my data.
paf.neur2 <- paf(neur2)
summary(paf.neur2)
# [1] "Your dataset is not a numeric object."
I want to see the KMO (The ...

**0**

votes

**0**answers

32 views

### Gram schmidt orthogonalization in matlab without using norm

function [PCA] = mypca_small_updt_new(data,pca_colms,num_iter)
[rows,cols]=size(data);
Cov = cov(data',1);
psi=zeros(rows,pca_colms);
for p=1:pca_colms
...

**0**

votes

**1**answer

56 views

### Principal Component Analysis in r using prcomp()

My data is a [478 x 4200] matrix. I am considering 4200 elements as components and I want to reduce the number of components that I need to take care of.
I used prcomp() and somehow it always returns ...

**2**

votes

**1**answer

30 views

### Why are there differences in psych::principal between “Varimax” and “varimax”?

In a related question, I have asked why there are differences between stats::varimax and GPArotation::Varimax, both of which psych::principal calls, depending on the option set for rotate =.
The ...

**0**

votes

**0**answers

28 views

### Why are there differences between GPArotation::Varimax and stats::varimax?

There are (at least) two different ways to varimax-rotate a loadings matrix in R, GPArotation::Varimax and stats::varimax.
Oddly, even if the Kaiser-Normalization is enabled for both, they yield ...

**0**

votes

**1**answer

16 views

### Cannot reproduce varimax rotation from psych: order of factors is changed [duplicate]

I need to programmatically reproduce an automatic (varimax) rotation from psych::principal for testing purposes.
It turns out, for some data, I can't reproduce that rotation from psych, because ...

**0**

votes

**0**answers

49 views

### PCA plot not showing all data points

I have some data that looks like this:
Cluster_ID KO1 KO2 KO3 WT1 WT2 WT3
5 chr5:100947454..100947489,+ 3.31322 7.52365 3.67255 21.15730 ...

**-2**

votes

**1**answer

57 views

### Colouring a PCA plot by clusters in R

I have some biological data that looks like this, with 2 different types of clusters (A and B):
Cluster_ID A1 A2 A3 B1 B2 B3
5 ...

**3**

votes

**2**answers

96 views

### Using memmap files for batch processing

I have a huge dataset on which I wish to PCA. I am limited by RAM and computational efficency of PCA.
Therefore, I shifted to using Iterative PCA.
Dataset Size-(140000,3504)
The documentation ...

**0**

votes

**0**answers

37 views

### PCA//ggbiplot//R: Color point outline based on data

I have passed a dataset to prcomp() to create a fit for PCA.
I use ggbiplot() to plot the figure as follows:
pop_pca <- ggbiplot(fit,obs.scale = 1, var.scale=1,groups=Patients,ellipse=T,circle=T,
...

**0**

votes

**0**answers

33 views

### Apply operations memmap

Code:
def wavelet_features_compute_memmap(X_train):
temp_train_data=X_train[1000:]
final_train_set=[]
num_axis1=temp_train_data.shape[0] #the no the samples
...

**0**

votes

**2**answers

43 views

### How to do PCA and SVM for classification in python

I am doing classification, and I have a list with two sizes like this;
Data=[list1,list2]
list1 is 1000*784 size. It means that 1000 images the have been reshaped from 28*28 size into 784.
list2 ...

**1**

vote

**3**answers

87 views

### Plotting RDA (vegan) in ggplot

I'm still new to R, trying to learn how to use the library vegan, which I can easily plot in R with the normal plot function. The problem arises when I want to plot the data in ggplot. I know I have ...

**3**

votes

**2**answers

77 views

### Python PCA on Matrix too large to fit into memory

I have a csv that is 100,000 rows x 27,000 columns that I am trying to do PCA on to produce a 100,000 rows X 300 columns matrix. The csv is 9GB large. Here is currently what I'm doing:
from ...

**0**

votes

**0**answers

33 views

### Python improve SVM or better with PCA

I want to do classification for 3D point cloud by SVM. I used python sklearn SVM directly. But the result seems very unreasonable. So I wonder if I should do segmentation firstly? May do the PCA ...

**0**

votes

**1**answer

26 views

### how can I retrieve / impute the underlying rotation matrix (rotmat) from psych::principal?

I'm using psych::principal in another function, with various rotate functions passed to principal.
(principal offers many rotation options and passes them on to different other functions).
I need to ...

**0**

votes

**1**answer

32 views

### Truncated SVD vs Partial SVD

Can somebody tell me the difference between truncated SVD as implemented in sklearn and partial SVD as implemented in, say, fbpca?
I couldn't find a definitive answer as I haven't seen anybody use ...

**0**

votes

**2**answers

33 views

### Interpreting the PCA Vector WEKA

I have done a Select attributes PCA in WEKA explorer, but I have troubles interpreting the output because new attribute output vector does not add up to 1.
My understanding is, given some attributes ...

**0**

votes

**0**answers

46 views

### Error encountered: Plotting PCA figure via ggbiplot

I am very new to R and trying to plot a PCA figure of my data using ggbiplot. So please bear with me if my question does not make any senses to you. Basically, I was following the tutorial I found ...

**0**

votes

**1**answer

51 views

### Pincipal component analysis with R

So I run PCA on my data and always find this error: Error in svd(x, nu = 0) : infinite or missing values in 'x'
I've removed the NAs, removed the duplicated rows, but I still get the error
log.neur ...

**1**

vote

**0**answers

25 views

### PCA with psychology data using Python and scikitlearn

I am trying to reduce a set of 10 columns in my dataset called "benhomo1, benhomo2, ... benhomo10". I don't have an a priori assumption about how many dimensions I'll find, but I do want to retain any ...

**0**

votes

**2**answers

61 views

### PCA for dimensionality reduction before Random Forest

I am working on binary class random forest with approximately 4500 variables. Many of these variables are highly correlated and some of them are just quantiles of an original variable. I am not quite ...

**0**

votes

**1**answer

82 views

### R and PCA Explanation for machine learning

I am taking the Practical Machine Learning on Coursera and I am confused with one of the assignments. I want to be very clear that I am not posting because I want someone to give me the answer -- I ...

**0**

votes

**1**answer

41 views

### Reducing a matrix of feature vectors to a single, meaningful vector

I have matrices of feature vectors - 200 features long, in which the feature vectors within a matrix are temporally related, but I wish to reduce each matrix to a single, meaningful vector. I have ...

**3**

votes

**1**answer

87 views

### Obtain eigen values and vectors from sklearn PCA

How I can get the the eigen values and eigen vectors of the PCA application?
from sklearn.decomposition import PCA
clf=PCA(0.98,whiten=True) #converse 98% variance
...

**0**

votes

**0**answers

22 views

### Sub scripted text in PCA loading plot to change the dimnames for plotting purposes

I want to keep the subscript numbers with the variable in this PCA plot.
The MWE is below
data <- replicate(5, rnorm(20))
header <- c('V1','V2','V3','V4','V5')
colnames(data) <- header
...

**4**

votes

**1**answer

129 views

### What does selecting the largest eigenvalues and eigenvectors in the covariance matrix mean in data analysis?

Suppose there is a matrix B, where its size is a 500*1000 double(Here, 500 represents the number of observations and 1000 represents the number of features).
sigma is the covariance matrix of B, and ...