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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13 views

PCA SIFT gives the same image descriptor vector as SIFT

I am using the following two small codes for testing the working of PCA along with SIFT. The first code uses PCA while the second code doesn't. The problem is that when I write the descriptor vectors ...
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1answer
20 views

Calculating and Plotting Principal Components using Principal Component Analysis (PCA) in Matlab

I have an image. I need to identify the axis along which the variance of the image is the smallest. A bit of reading and searching led me to the conclusion that Principal Component Analysis(PCA) is ...
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20 views

PCA in EmguCV / OpenCV

I'm trying to perform PCA on a data set. This data set has 10 samples(each row one sample) and each sample has 1000 features(columns). Below is the code : Matrix<float> test = new ...
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25 views

clusplot - showing variables

I would like to add to a clusplot plot the variables used for pca as arrows. I am not sure that a way has been implemented (I can't find anything in the documentation). I have produced a clusplot ...
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31 views

Matlab - PCA, biplot and convex hull

I generate a random data array and I wish to perform on it PCA where I color differently each group and perform a convex hull but without successes. I will appreciate a lot if you can explain me how ...
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29 views

Constructing scores from principal loadings in R

I want to understand how the principal() function in psych package calculate the $score element. I want to try the covariance matrix rather than correlation matrix. model <- ...
2
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1answer
65 views

Higher Prediction Error in after Preprocessing using PCA with Neural Networks in Matlab

I am using PCA before feeding the training set into a neural network. It reduces 13 features down to 8 and trains over 2200 training sets. The MAPE I get with this is close to 2.5 - 2.6 %. If I train ...
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1answer
40 views

How to classify documents using Naive Bayes and Principal Component Analysis (C#, Accord.NET)

I'm working on an emailclassification project that will classify emails into a certain category. So far, we save interesting data (e.g.: subject and body) along with other information onto our ...
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31 views

Spark PCA OutOfMemory error on small number of columns and rows

I am attempting to perform Spark MLLib PCA (using Scala) on a RowMatrix with 2168 columns, and a large number of rows. However, I have observed that even with as few as 2 rows in the matrix (a 112KB ...
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1answer
49 views

Covariance calculation with CUDA

I am implementing Principal Component Analysis (PCA) based face recognition using CUDA. I used orl face database and calculated the mean image and normalized images. I'm facing a problem in ...
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15 views

scikit-learn: projecting SVM weights of Prinicpal Components to original image space

I did a PCA on my 3D image datasets, and used the first n PCs as my features in a linear SVM. I have SVM weights for each PC. Now, I want to project the PC weights into original image space to find ...
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26 views

Using Principle Component Analysis (PCA) for feature reduction (HOG-PCA)

Using Histogram of Ordered Gradients (HoG) I have computed features of 15 sample images. The feature vectors generated by these samples are very large (i.e. take up a lot of memory). To reduce these ...
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23 views

Make prediction with PCA function in R

I am using the PCA function from the "FactoMineR" packages to realise a PCA (on scaled data) and I have a problem to predict the correct values for new individuals: library(FactoMineR) data(iris) X ...
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3answers
58 views

Point Cloud - Principal Axes - Use of Inertia

I have got point clouds of different primitive objects (cone, plane, torus, cylinder, sphere, ellipsoid). The all vary in orientation, position and scaling. Furthermore all of them are initialized ...
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1answer
45 views

How to apply feature reduction using principal component analysis? (C#, Accord)

I'm trying to implement PCA via the Accord framework in order to achieve dimension reduction aka feature reduction. Basically, I have one big matrix containing over 23000 features. These are all ...
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1answer
16 views

I am applying Princomp function on kddcup99.

I am applying Princomp function on kddcup99 after removing attributes which are string, dataset but result of it is a matrix of dimension (37 X 37), the resulted matrix is very low in dimension than ...
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29 views

How to fit straight line, when both X & Y have known errors (Java)

I'm simply trying to make a line of best fit using four data points, each with a known error in both X and Y. (In Java, using a 2D cartesian coordinate system.) I've come accross PCA and TLS several ...
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1answer
42 views

R / caret: Pass pca preprocessing arguments to train()

I'm trying to build a predictive model in caret using PCA as pre-processing. The pre-processing would be as follows: preProc <- preProcess(IL_train[,-1], method="pca", thresh = 0.8) Is it ...
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1answer
22 views

Using Princomp() in R

After running Principal Component Analysis in R using princomp() and running summary() on the results I got a list of components, their proportion of variance, and their cumulative proportion. Is ...
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7 views

how can I get original value of “PC1”

R if those are my data o <- c(7,9,7,6,5) p <- c(9,3,8,8,3) mydata <- data.frame(o,p) my <-prcomp(~o+p,data=mydata, center=TRUE, scale=TRUE, na.action=na.omit) my$x question : how can I ...
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12 views

Active Appearance Model Matlab

My project is to build a statistical models of appearance for make-up (cosmetics) using an Active Appearance Models by using MATLAB but having alot of difficulty implementing, just wondering if anyone ...
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34 views

Unable to calculate scores for PCA manually that match what princomp is producing

Using this script: d <- iris[1:4] pca = princomp(d, cor=TRUE) d2 <- scale(d, scale = FALSE) m1 <- matrix(as.numeric(d[1,1:4]),1,4) m2 <- matrix(pca$loadings,4,4) mf1 <- m1 %*% m2 ...
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1answer
43 views

PCA projection on data in R

This is homework. I have to do a principal components analysis on a data set. I have done that using the princomp() function. I am then asked to visualize the data by a scatter plot, where I ...
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1answer
27 views

Why are the wrong clusters projected onto PCA using Sklearn ?

I am projecting my cluster centers onto 2 principal components, but the plot given is not in the correct central place of my 2 sets of data points. My code is given below. Does anyone see where I am ...
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48 views

Preparing data before doing Principal component analysis (PCA)

I have a data frame(200x300) which consists of mixed(character,numeric) variables and has lots of missing values(NA) my first problem is how to convert all data into numeric, I can use factors but ...
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1answer
38 views

How do I read multiple images into an array in MATLAB?

I am currently working on a PCA face recognition project and I am wondering how do I read multiple images into a matrix and then resize them to say 50x50. Im aware that I need to use Imread and pass ...
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27 views

PCA in SAS - Ellipse axes

I want to draw major and minor axes of a prediction ellipse in SAS Enterprise Guide. I use, for example, this procedure to generate a scatter plot and ellipse: proc sgplot ...
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40 views

Machine Learning -Issues with big dataset

I am trying to apply Machine Learning to a Kaggle.com dataset. The dimension of my dataset is 244768 x 34756. Now at this size none of the scikit algorithms work. I thought i would apply PCA , but ...
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25 views

Detect and Remove Multicollinearity in a high-dimensional time-series

I am working with a matrix of data, in matlab, with dimensions n-by-m where ('n' are the number of regressors = 61) and ('m' is the number of datapoints = 500). I have reasons to suspect that the data ...
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1answer
32 views

PCA with missing values in Python

I'm trying to do a PCA analysis on a masked array. From what I can tell, matplotlib.mlab.PCA doesn't work if the original 2D matrix has missing values. Does anyone have recommendations for doing a ...
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19 views

visualize hand written digits after PCA

I perform dimensionality reduction for hand written digits recognition problem using scikit learn PCA. The original data has (28*28) 784 features for each handwritten digits, PCA shows that the first ...
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2answers
204 views

Predict with SVD matrixes

I'm participating in programming contest, where I have data where the first column is a user, second column is a movie, and the third is a number in ten-points rating system. 0 0 9 0 1 8 1 1 4 1 2 6 ...
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24 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 whether there is any mechanism to improve SOM's performance like by modifying weight initialization strategies?..I have tried random ...
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22 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
35 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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0answers
41 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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30 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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41 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
52 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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33 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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0answers
21 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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11 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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1answer
49 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 ...
0
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1answer
41 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: ...
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1answer
22 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
29 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
46 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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24 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
60 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 ...