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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Can you help me to understand the code about Find2DRigidTransform?

I am learning the code about calculate the 2DRigidTransform from two sets of points.The code is here. In this code,when after using Kabsch algorithm to get the optimal rotation matrix R.The ...
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1answer
20 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 ...
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22 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 ...
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1answer
10 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 ...
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42 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 ...
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1answer
46 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
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2answers
80 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 ...
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18 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, ...
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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 ...
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25 views

Fastest PCA Algorithm for huge dataset [closed]

Using normal PCA (sklearn)on huge dataset is very slow. Is there an implementation of below available somewhere in python? ...
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2answers
31 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 ...
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3answers
53 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
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2answers
61 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 ...
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30 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 ...
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59 views

Making coloured and labelled PCA plot in R

I am making a PCA plot of my data, which should be coloured and labelled according to the 2 data sets (PC1, PC2 and PC3 is for data set A, and PC4, PC5, PC6 is for data set B.) The data appears as ...
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1answer
21 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
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1answer
23 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
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1answer
20 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 ...
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20 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 ...
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1answer
50 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 ...
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19 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 ...
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2answers
43 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 ...
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1answer
60 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 ...
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1answer
32 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 ...
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1answer
20 views

Why eigenvectors of covariance matrix represent the maximum variance directions?

Can anyone tell me where do i find reference to "eigenvectors of covariance matrix" concept. Every explanation i find gives me same answer that eigenvectors of covariance matrix are max variance ...
3
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1answer
74 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 ...
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18 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
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1answer
102 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 ...
0
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1answer
16 views

OpenCV PCA project returning cv::Mat with only 1 column

Trying to compress some image descriptors with some difficulties, take this example: #include <cstdio> #include <cstdlib> #include <iostream> #include <opencv2/core.hpp> int ...
3
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1answer
46 views

Getting old data back after executing PCA using SPARK

I'm using PCA to reduce a matrix m*n to a matrix m*2. i'm using the snippet inside apache spark site into my project, and it works. import org.apache.spark.mllib.linalg.Matrix import ...
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31 views

Subscript out of bounds - loop that plots data in R

I am trying to plot a perceptual map in R but I encounter an error, due to the operation on the matrix I guess. Here is my perceptions data and preferences data. For the perceptions data, there are ...
0
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1answer
93 views

PCA Analysis in PySpark

Looking at http://spark.apache.org/docs/latest/mllib-dimensionality-reduction.html. The examples seem to only contain Java and Scala. Does Spark MLlib support PCA analysis for python? If so please ...
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21 views

Plot Principal Components onto Original Coordinate System (3D dataset) using R

I have a 3D dataset (x,y,z coordinate system), on which I've performed PCA. I know how to transform the x,y,z data to fit on a PC1, PC2, PC3 coordinate system. But what I want is to plot the PC's as ...
2
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1answer
22 views

Why different result with PCA and SVD in Matlab?

I have implemented my PCA function in Matlab in the following way: function e = myPCA(X) [D, N] = size(X); m = mean(X, 2); X = X - repmat(m, 1, N); [e, ~, ~] = svd(X,'econ'); end When I use now the ...
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1answer
18 views

Turning a list into a diagonal matrix

I have a list of singular values as a result of an SVD of a data matrix. Python outputs as a list rather than the diagonal matrix. Combining the matrices to find regression coefficients is then ...
0
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1answer
30 views

R Distance Matrix

I have the following data: > df <- data.frame(Sample = c("C1", "C2", "K1", "K2"), Abundance=c(345, 280, 250, 562)) > df Sample Abundance 1 C1 345 2 C2 280 3 K1 ...
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1answer
19 views

Sorting columns of a Matrix based on values in a different Matrix

I am writing java code to implement Principal Component Analysis. I am modeling my matrices using Apache Commons Math3's RealMatrix class. As part of the procedure, the eigenvalues and eigenvectors ...
0
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1answer
43 views

ZCA whitening (MATLAB) - out of memory

Currently, I am doing texture classification by using Convolution Neural Networks. I am trying to implement the ZCA whitening to preprocess my images by using the Matlab code here. Note that the size ...
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1answer
24 views

Different Valuse Returned from Using PCA Function

Can someone explain to me how these are different? #First Type of PCA. Scales and Transposes manually pr.data <- prcomp(scale(t(data))) #Second Type of PCA pr.data <- prcomp(data, retx=TRUE, ...
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1answer
70 views

How to implement ZCA Whitening? Python

Im trying to implement ZCA whitening and found some articles to do it, but they are a bit confusing.. can someone shine a light for me? Any tip or help is appreciated! Here is the articles i read : ...
2
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1answer
20 views

OpenCV Principle Component Analysis terminology - what actually is a 'sample'?

I'm working with Principle Component Analysis (PCA) in openCV. The constructor inputs for the case I'm interested in are: PCA(InputArray data, InputArray mean, int flags, double retainedVariance); ...
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2answers
116 views

how do I find the angles between an original and a rotated PCA loadings matrix?

Suppose I have two matrices of PCA loadings loa.orig, and loa.rot, and I know that loa.rot is a rotation (by-hand or otherwise) of loa.orig. (loa.orig might also have been already orthogonally ...
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1answer
35 views

Dimensionality reduction being way too slow using PCA and a small dataset

I have the following data set stored using numpy: https://www.dropbox.com/sh/ppseiv9skqlhljr/AACQEWZh11oszL5-Z_NHqre3a?dl=0 There is a different numpy file for the training and development partitions ...
0
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1answer
29 views

Principal Component Analysis being too slow (MLPY Python)

I am using the PCAFast method from the MLPY API in python (http://mlpy.sourceforge.net/docs/3.2/dim_red.html) The method is executed pretty fast when it learns a feature matrix generated as follows: ...
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30 views

Principal Component Analysis is too slow (MLPY Python)

I am using the PCAFast method from the MLPY API in Python. The method is executed pretty fast when it learns a feature matrix generated as follows: x = np.random.rand(100, 100) Sample output of ...
5
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1answer
173 views

customer segmentation in retail [closed]

I have a large sales database of a 'home and construction' retail. And I need to know who are the electricians, plumbers, painters, etc. in the store. My first approach was to select the articles ...
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8 views

How to keep original order of eigenvalues in JMAT

I have a program that counts occurrences of all words in a given scope (let's say, an article). My idea is that I can use several steps from the PCA method- calculate the covariance matrix and then ...
2
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1answer
75 views

Incremental PCA on big data

I just tried using the IncrementalPCA from sklearn.decomposition, but it threw a MemoryError just like the PCA and RandomizedPCA before. My problem is, that the matrix I am trying to load is too big ...
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17 views

Error while running ggbiplot on PCA analysis output

I am doing PCA analysis on some files and while am trying to plot the pca result using ggbiplot I got the following error: Error in $<-.data.frame(*tmp*, "groups", value = c("factor_1", : ...
0
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1answer
14 views

What exactly is returned from PCA in MatLab?

I = double(image1Cropped); X = reshape(I,size(I,1)*size(I,2),3 ); coeff1 = pca(X); What exactly is happening in the above 3 lines of code? Why covert an image into double before passing into ...