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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Principal component analysis in Python

I'd like to use principal component analysis (PCA) for dimensionality reduction. Does numpy or scipy already have it, or do I have to roll my own using numpy.linalg.eigh? I don't just want to use ...
21
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5answers
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Principal Component Analysis (PCA) in Python

I have a (26424 x 144) array and I want to perform PCA over it using Python. However, there is no particular place on the web that explains about how to achieve this task (There are some sites which ...
21
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5answers
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Plotting pca biplot with ggplot2

I wonder if it is possible to plot pca biplot results with ggplot2. Suppose if I want to display the following biplot results with ggplot2 fit <- princomp(USArrests, cor=TRUE) summary(fit) biplot(...
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5answers
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How to find the closest 2 points in a 100 dimensional space with 500,000 points?

I have a database with 500,000 points in a 100 dimensional space, and I want to find the closest 2 points. How do I do it? Update: Space is Euclidean, Sorry. And thanks for all the answers. BTW this ...
13
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2answers
8k 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) ...
13
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1answer
8k 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 ...
12
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6answers
3k views

What is the fastest way to calculate first two principal components in R?

I am using princomp in R to perform PCA. My data matrix is huge (10K x 10K with each value up to 4 decimal points). It takes ~3.5 hours and ~6.5 GB of Physical memory on a Xeon 2.27 GHz processor. ...
12
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3answers
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Recovering features names of explained_variance_ration in PCA with sklearn

I'm trying to recover from a PCA done with scikit-learn, which features are selected as relevant. A classic example with IRIS dataset. import pandas as pd import pylab as pl from sklearn import ...
11
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3answers
5k views

Apply PCA on very large sparse matrix

I am doing a text classification task with R, and I obtain a document-term matrix with size 22490 by 120,000 (only 4 million non-zero entries, less than 1% entries). Now I want to reduce the ...
11
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2answers
2k views

Classifiying a set of Images into Classes

I have the problem that I get a set of pictures and need to classify those. The thing is, i do not really have any knowledge of these images. So i plan on using as many descriptors as I can find and ...
11
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2answers
2k views

PCA and KNN algorithm

I am using KNN to classify handwritten digits. I also now have implemented PCA to reduce the dimensionality. From 256 I went to 200. But I only notice like, ~0.10% loss of information. I deleted 56 ...
10
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2answers
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Matlab - PCA analysis and reconstruction of multi dimensional data

I have a large dataset of multidimensional data(132 dimensions). I am a beginner at performing data mining and I want to apply Principal Components Analysis by using Matlab. However, I have seen that ...
10
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6answers
4k views

Principal Component Analysis (PCA) on huge sparse dataset

I have about 1000 vectors x_i of dimension 50000, but they are very sparse; each has only about 50-100 nonzero elements. I want to do PCA on this dataset (in MATLAB) to reduce the unneeded extreme ...
9
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2answers
12k views

PCA first or normalization first?

When doing regression or classification, what is the correct (or better) way to preprocess the data? Normalize the data -> PCA -> training PCA -> normalize PCA output -> training Normalize the data -...
9
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4answers
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What's wrong with my PCA?

My code: from numpy import * def pca(orig_data): data = array(orig_data) data = (data - data.mean(axis=0)) / data.std(axis=0) u, s, v = linalg.svd(data) print s #should be s**2 ...
8
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4answers
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Difference between PCA (Principal Component Analysis) and Feature Selection

What is the difference between Principal Component Analysis (PCA) and Feature Selection in Machine Learning? Is PCA a means of feature selection?
8
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3answers
5k views

MATLAB is running out of memory but it should not be

I'm trying to do a PCA on my data using princomp(x) that has been standardized. The data is <16 x 1036800 double>. This runs our of memory which is too be expected except for the fact that this is ...
8
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1answer
2k 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 ...
8
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2answers
8k views

R function prcomp fails with NA's values even though NA's are allowed

I am using the function prcomp to calculate the first two principal components. However, my data has some NA values and therefore the function throws an error. The na.action defined seems not to work ...
8
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3answers
2k views

Visual Comparison of Regression & PCA

I'm trying to perfect a method for comparing regression and PCA, inspired by the blog Cerebral Mastication which has also has been discussed from a different angle on SO. Before I forget, many thanks ...
8
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4answers
8k 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 = svmtrain(...
8
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1answer
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How to use princomp () function in R when covariance matrix has zero's?

While using princomp() function in R, the following error is encountered : "covariance matrix is not non-negative definite". I think, this is due to some values being zero (actually close to zero, ...
7
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2answers
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R - 'princomp' can only be used with more units than variables

I am using R software (R commander) to cluster my data. I have a smaller subset of my data containing 200 rows and about 800 columns. I am getting the following error when trying kmeans cluster and ...
7
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2answers
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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 ...
7
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1answer
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Principal Component Analysis in MATLAB

I'm implementing PCA using eigenvalue decomposition for sparse data. I know matlab has PCA implemented, but it helps me understand all the technicalities when I write code. I've been following the ...
7
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2answers
3k views

Scikit-Learn PCA

I am using input data from here (see Section 3.1). I am trying to reproduce their covariance matrix, eigenvalues, and eigenvectors using scikit-learn. However, I am unable to reproduce the results as ...
7
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1answer
842 views

Python: Why are eigenvectors not the same as first PCA weights?

Let's generate an array: import numpy as np data = np.arange(30).reshape(10,3) data=data*data array([[ 0, 1, 4], [ 9, 16, 25], [ 36, 49, 64], [ 81, 100, 121], [...
7
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0answers
160 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 ...
6
votes
1answer
7k views

Basic example for PCA with matplotlib

I trying to do a simple principal component analysis with matplotlib.mlab.PCA but with the attributes of the class I can't get a clean solution to my problem. Here's an example: Get some dummy data ...
6
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4answers
6k views

Test significance of clusters on a PCA plot

Is it possible to test the significance of clustering between 2 known groups on a PCA plot? To test how close they are or the amount of spread (variance) and the amount of overlap between clusters etc....
6
votes
1answer
772 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 ...
6
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1answer
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principal component analysis (PCA) in R: which function to use?

Can anyone explain what the major differences between the prcomp and princomp functions are? Is there any particular reason why I should choose one over the other? In case this is relevant, the type ...
6
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1answer
3k views

How is the complexity of PCA O(min(p^3,n^3))?

I've been reading a paper on Sparse PCA, which is: http://stats.stanford.edu/~imj/WEBLIST/AsYetUnpub/sparse.pdf And it states that, if you have n data points, each represented with p features, then, ...
6
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4answers
4k 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', ...
6
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1answer
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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 ...
6
votes
2answers
3k views

OpenCV PCA Compute in Python

I'm loading a set of test images via OpenCV (in Python) which are 128x128 in size, reshape them into vectors (1, 128x128) and put them all together in a matrix to calculate PCA. I'm using the new cv2 ...
6
votes
2answers
107 views

scikit KernelPCA unstable results

I'm trying to use KernelPCA for reducing the dimensionality of a dataset to 2D (both for visualization purposes and for further data analysis). I experimented computing KernelPCA using a RBF kernel ...
6
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1answer
2k views

Factor Loadings using sklearn

I want the correlations between individual variables and principal components in python. I am using PCA in sklearn. I don't understand how can I achieve the loading matrix after I have decomposed my ...
6
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1answer
4k views

Principal component analysis in R with prcomp and by myself: different results

Where do I am wrong? I am trying to perform PCA through prcomp and by myself, and I get different results, can you please help me? DOING IT BY MYSELF: >database <- read.csv("E:/R/database.csv",...
6
votes
1answer
6k views

Matlab: how to find which variables from dataset could be discarded using PCA in matlab?

I am using PCA to find out which variables in my dataset are redundand due to being highly correlated with other variables. I am using princomp matlab function on the data previously normalized using ...
6
votes
1answer
691 views

Problem with Principal Component Analysis

I'm not sure this is the right place but here I go: I have a database of 300 picture in high-resolution. I want to compute the PCA on this database and so far here is what I do: - reshape every image ...
6
votes
1answer
192 views

How to interpret Singular Value Decomposition results (Python 3)?

I'm trying to learn how to reduce dimensionality in datasets. I came across some tutorials on Principle Component Analysis and Singular Value Decomposition. I understand that it takes the dimension ...
5
votes
3answers
6k 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 ...
5
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1answer
22k views

R - how to make PCA biplot more readable

I have a set of observations with 23 variables. When I use prcomp and biplot to plot the results I run into several problems: the actual plot only occupies half of the frame (x < 0), but the ...
5
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1answer
566 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: ...
5
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2answers
9k views

PCA Implementation in Java

I need implementation of PCA in Java. I am interested in finding something that's well documented, practical and easy to use. Any recommendations?
5
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1answer
3k views

doing PCA on very large data set in R

I have a very large training set (~2Gb) in a CSV file. The file is too large to read directly into memory (read.csv() brings the computer to a halt) and I would like to reduce the size of the data ...
5
votes
1answer
6k views

Principal component analysis

I have to write a classificator (gaussian mixture model) that I use for human action recognition. I have 4 dataset of video. I choose 3 of them as training set and 1 of them as testing set. Before I ...
5
votes
1answer
71 views

Selecting the components showing the most variance in PCA

I have a huge data set (32000*2500) that I need for training. This seems to be too much for my classifier, so I decided to do some reading on dimensionality reduction and specifically into PCA. From ...
5
votes
4answers
9k views

Matlab - how to compute PCA on a huge data set [duplicate]

Possible Duplicate: MATLAB is running out of memory but it should not be I want to perform PCA analysis on a huge data set of points. To be more specific, I have size(dataPoints) = [329150 132]...