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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PCA Pre Processing [on hold]

I am using the following code for pre-process my data prior to making the model. xTrans <- preProcess(training4, method="pca") training5 <- predict(xTrans, training4) testing5 <- ...
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10 views

PCA (Principal Component Analysis) set number of components and threshold

I'm working on Object Registration and Object Classification. I'm using PCA and the question is how to set 'number of components' and 'threshold' that are suitable for all objects I'm a beginner so ...
3
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1answer
2k views

How can I use the princomp function of Matlab in the following case?

I have 10 images(18x18). I save these images inside an array named images[324][10] where the number 324 represents the amount of pixels for an image and the number 10 the total amount of images that I ...
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13 views

Does it matter if I use principal component analysis on the transpose instead of the original matrix?

My data set is a 60x10 matrix. I performed pca of this matrix with MATLAB using princomp(AdjustedData) after I adjusting my original data set by subtracting the mean of each column. Because I was ...
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21 views

reduce variables in PCA biplot prcomp R [closed]

Say I have a data of 15 samples and 20 variables. I did pca using prcomp and plotted a biplot. In the biplot I only want to show the top 5-10 variables that can separate the groups. The other ...
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20 views

Matlab pca dimension change

I'm trying to use Matlab's pca function (pca, not princomp) to derive scores and coefficients for a dataset with more variables (columns) than observations (rows). My understanding is that the ...
0
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2answers
36 views

Face recognition in MATLAB

I am having an error, saying: Subscripted assignment dimension mismatch. Error in facerecognition (line 14) images(:, n) = img(:); Can anyone help? The code I have written is below: ...
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0answers
6 views

PCA for high dimensional matrix

I have 20 4D matrix and I want to perform PCA on them to get may be 2 or 3 4D matrix that explains most of the variance. I think this means I have 20 observations, but how do I organize my 20 ...
0
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0answers
21 views

Problems with variable loading in prcomp()

I am using methylKit to perform an analysis on my MethylCAP-bisulfite data. The prcomp() function has been used in "PCASamples" (a command in methylKit) to do PCA analysis on the data and I have a ...
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2answers
465 views

raise LinAlgError(“SVD did not converge”) LinAlgError: SVD did not converge in matplotlib pca determination

code : import numpy from matplotlib.mlab import PCA file_name = "C:/Documents and Settings/862629/My Documents/53135/programs/store1_pca_matrix.txt" ori_data = numpy.loadtxt(file_name,dtype='float', ...
1
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1answer
32 views

how to use pca in Matlab

According to the manual, it says [coeff,score,latent,tsquared,explained,mu] = pca(X). In my opinion, PCA is same as truncated SVD. But for the outputs of pca, which one is truncated eigenvectors and ...
1
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2answers
66 views

excluding the scatter points from a feature

I have a set of data points that are supposed to sit on a locus and follow a pattern but there are some scatter points from the main locus that I would like to discard, since I need a neat locus to ...
0
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0answers
16 views

Principal component Regression Using R [migrated]

Can anyone explain principal component regression with the help of an example and the code in R? How to interpret the result of a principal component regression? How to find the individual effect of ...
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3answers
2k views

Classifying handwritten digits using PCA

Classify handwritten digits using PCA. Use 200 digits for the train phase and 20 for the test. I have no idea how PCA works as a classification method. I've learned to use it as a dimension ...
0
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1answer
48 views

Detecting Outliers When Doing PCA

I am new to data analysis and trying to better understand how I can identify outliers when doing PCA analysis. I have created a data matrix with 5 columns to represent my variables of Math, English, ...
0
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2answers
1k views

OpenCV Write PCA eigenvectors to yaml file, losing precision?

I need to store the OpenCV PCA object (eigenvalues, eigenvectors) for a set of training images to a persistent store, that I can reload for testing later. I am using the OpenCV 2.4 feature XML/YAML ...
0
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1answer
17 views

PCA plots with labels and different colors

I have a correlation matrix, that looks like this: A B C D E A 1.00000000 0.08076432 -0.11462447 -0.10395283 -0.27033234 B 0.08076432 1.00000000 ...
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1answer
58 views

The eigenvalue of opencv and matlab are different, why?

I am trying a example of PCA and I find the eigenvalues using the MATLAB are different from the values using OpenCV, while the eigenvectors are same. Does anyone know why? What's the difference ...
0
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1answer
38 views

Inaccuracies w/ prcomp? R lang PCA for eigenfaces

My question is: in the case of having a matrix we want to do PCA on, where the number of features greatly outnumbers the number of trials, why doesn't prcomp behave as expected (or am I missing ...
4
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1answer
2k views

PCA Scaling with ggbiplot

I'm trying to plot a principal component analysis using prcomp and ggbiplot. I'm getting data values outside of the unit circle, and haven't been able to rescale the data prior to calling prcomp in ...
3
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1answer
244 views

Dimension of data before and after performing PCA

I'm attempting kaggle.com's digit recognizer competition using python and scikit-Learn After removing labels from the training data, I add each row in CSV into a list like this: for row in csv: ...
0
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0answers
27 views

Hotelling's T^2 scores in python

I applied pca on a data set using matplotlib in python. However, matplotlib does not provide a t-squared scores like Matlab. Is there a way to compute Hotelling's T^2 score like Matlab? Thanks.
0
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1answer
29 views

how to project new sets of data onto a pca space in matplotlib?

I have got a data set with 68 dimensions * 100 observations to create a pca space using matplotlib in python. Now I have got another set of data (x) with 6 dimensions * 100 observations. Is it ...
6
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3answers
4k views

SVM Visualization in MATLAB

How do I visualize the SVM classification once I perform SVM training in Matlab? So far, I have only trained the SVM with: % Labels are -1 or 1 groundTruth = Ytrain; d = xtrain; model = ...
10
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2answers
3k views

Adding ellipses to a principal component analysis (PCA) plot

I am having trouble adding grouping variable ellipses on top of an individual site PCA factor plot which also includes PCA variable factor arrows. My code: prin_comp<-rda(data[,2:9], scale=TRUE) ...
0
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1answer
27 views

PCA biplot one variables shown R

I ran a pca on a set of 45000 genes on 5 different samples, and when I perform a biplot, all I see is a mass of text (responding to the observation names), and cannot see the location of my samples. ...
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25 views

ALGLIB, Need an Assitance for PCA

I am trying to perform PCA on my dataset[712,68]. double[,] dataset = new VarianceAndCovariance().buildMatrix();//this statement just fetching data and moves it into dataset. int info; double [] ...
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35 views

How to do PCA on dataframe with binary input

I am trying to do PCA on a very large dataframe like this. The column name Qx.y, where x represents the question number, and y represents the answer number for a question. So person1 answers 1 on 3rd ...
4
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1answer
2k views

Finding the dimension with highest variance using scikit-learn PCA

I need to use pca to identify the dimensions with the highest variance of a certain set of data. I'm using scikit-learn's pca to do it, but I can't identify from the output of the pca method what are ...
1
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1answer
40 views

How does PCA gives centers for the Kmeans algorithm in scikit learn

I'm looking at this example code given on Scikit Kmeans digit example There is the following code in this script : # in this case the seeding of the centers is deterministic, hence we run the # ...
4
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1answer
236 views

Reproducing SPSS factor analysis with R

I'm hoping someone can point me in the right direction. First of all, I am not a statistician. I am a software developer that has been given the task of trying to reproduce the results of SPSS's ...
0
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0answers
12 views

Combine PCA with scale_size from ggplot

I have an expession matrix that I want to plot as a PCA. I would like to combine the points in the PCA with scale_size, where scale_size corresponds to the inverse p-value of the variable. mydata ...
2
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0answers
91 views

PCA multiplot in R

I have a data that looks like this: India China Brasil Russia SAfrica Kenya States Indonesia States Argentina Chile Netherlands HongKong 0.0854026763 0.1389383234 0.1244184371 ...
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1answer
45 views

Is my Matlab code correct for applying PCA to data?

I have following code for calculating PCA in Matlab: train_out = train'; test_out = test'; % subtract off the mean for each dimension mn = mean(train_out,2); train_out = train_out - ...
2
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3answers
47 views

R: backwards principal component calculation

I would like to perform a backwards principal component calculation in R, meaning: obtaining the original matrix by the PCA object itself. This is an example case: # Load an expression matrix ...
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5answers
172 views

Why is the accuracy coming as 0% ? MATLAB LIBSVM

I extracted PCA features using: function [mn,A1,A2,Eigenfaces] = pca(T,f1,nf1) m=mean(T,2), %T is the whole training set train=size(T,2); A=[]; for i=1:train temp=double(T(:,i))-m; A=[A ...
0
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2answers
112 views

Using Numpy (np.linalg.svd) for Singular Value Decomposition

Im reading Abdi & Williams (2010) "Principal Component Analysis", and I'm trying to redo the SVD to attain values for further PCA. The article states that following SVD: X = P D Q^t I load my ...
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0answers
35 views

Principal component analysis (PCA) assumptions

I used PCA to reduce a 180 dimensions feature space in 3 principal components. Afterwards I used k-mean clustering to cluster the data according to the 3 principal components of PCA. I read in ...
2
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1answer
66 views

Randomized PCA .explained_variance_ratio_ sums to greater than one in sklearn 0.15.0

When I run this code with sklearn.__version__ 0.15.0 I get a strange result: import numpy as np from scipy import sparse from sklearn.decomposition import RandomizedPCA a = np.array([[1, 0, 0, 0, 0, ...
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0answers
11 views

How to treat complex eigenvalues in PCA?

I'm building a recommender system and PCA is one of the preprocessing techniques I am using on my dataset of documents and features. I want to use the preprocessed result to apply similarity ...
0
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1answer
31 views

What does it mean to have zero mean in the data?

I'm trying to find ways to normalize my dataset (represented as a matrix with documents as rows and columns as features) and I came across a technique called feature scaling. I found a Wikipedia ...
0
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0answers
22 views

PCA and SVM (support vector machine): apply feature rescaling / renormalization to principal components?

I am using PCA (principal component analysis) to reduce the dimensionality of my feature set. Before implementing PCA, I already normalized the feature set. However, the resulting principal components ...
0
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0answers
23 views

PCA scores and loadings differ between 32 and 64 bit

I am experiencing a strange phenomenon. I am doing a PCA on data extracted from GPS coordinates and coinciding bioclimatic variable raster data. I do the analysis in R (64 bit) at my university. Then, ...
0
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0answers
39 views

Matlab - processpca out of memory error

I have to calculate a pca using processpca (lecture excercise, not able to user alternatives here I think) from the Neural Network Toolbox of a 400*60000 matrix (on a 64bit 8gb ram machine). The error ...
0
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1answer
44 views

PCA calculation using SVD vs EIG

PCA can be calculated using SVD and EIG, but SVD is considered more numerical stable(and seems it used more often in mature machine learning projects). So I need some comparision of this two methods ...
3
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2answers
3k views

How to whiten matrix in PCA

I'm working with python and I've implemented the PCA using the following tutorial http://www.cs.otago.ac.nz/cosc453/student_tutorials/principal_components.pdf Everything works great, I got the ...
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0answers
39 views

Predict values of some numerical vectors by using other numerical vectors with all these vectors in the same vector set

I need to solve a problem about predicting values of some numerical vectors by using other numerical vectors with all these vectors in the same vector set, which is generated by one or more black box ...
2
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2answers
203 views

Inversing PCA transform with sklearn (with whiten=True)

Usually PCA transform is easily inversed: import numpy as np from sklearn import decomposition x = np.zeros((500, 10)) x[:, :5] = random.rand(500, 5) x[:, 5:] = x[:, :5] # so that using PCA would ...
1
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3answers
86 views

Selecting multiple odd or even columns/rows for dataframe in R

Is there a way in R to select many non-consecutive i.e. odd or even rows/columns? I'm plotting the loadings for my Principal Components Analysis. I have 84 rows of data ordered like this: x_1 y_1 ...
0
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1answer
91 views

Principal Component Analysis on Weka

I have just computed PCA on a training set and Weka returned me the new attributes with the way in which they were selected and computed. Now, I want to build a model using these data and then use the ...