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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Randomized PCA reduces dimensionality to 1 instead of 5 - Error

I am trying to classify image as good and bad quality image. I used RandomizedPCA from PIL python package and then used SVM as a classifier. Training set was already divided into train and test for ...
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16 views

How to: Inverse PCA Whitening in Python

I'm currently performing the following PCA-whitening in Python: data = data - data.mean(axis=0) cov = np.dot(data.T, data) / data.shape[0] # get covariance matrix eigs, eigv = np.linalg.eigh(cov) ...
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4 views

Principal component analysis on time series and acceleration data(ie. data from accelerometer)

Has anyone attempted Principal component analysis on time series and acceleration data(ie. data from accelerometer and sensors) and tried compressing it as well as regenerating back the data with ...
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15 views

Eport PCA Nugget output to html in SPSS Modeler 16 using Python

I'm trying to export PCA nugget to an HTML file using Python, but I get this error while trying to do so. Script error (Cannot export '"Factor_Analysis":factor[model@id5YWTDKXKEW9]' with the format ...
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1answer
13 views

Value error while generating indexes using PCA in scikit-learn

Using the following function i am trying to generate index from the data: Function: import numpy as np from sklearn.decomposition import PCA def pca_index(data,components=1,indx=1): corrs = ...
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16 views

How do I make approximate searches from a set with multiple dimensions?

Let's say I have Items, a large set of these objects: class Item { public float Cost; public float Size; public float Weight; public float Temperature; } I would like to repeatedly ...
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4 views

Laser version 2.02 PCA Mode ifstream Error genotypefile

I am trying to use Laser Version 2.02 for a PCA. But I always get following Error Message and I cant find out what it means: Reading reference genotypes ... Error: ifstream error occurs when reading ...
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16 views

filled.contour with interp R is not covering the entire area of my data

I want to construct a fitness landscape in two dimensions. This would take the shape of a topographic map (with colour). I have V1 that is the fitness value, and the PC1 and PC2 values in the dataset ...
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2answers
32 views

How to use Kernel PCA with neural network

My data set has a training set of 1000 input with 6 features. (data set size is 1000*6). I applied KPCA to the data set and reduced the number of features to 3. It means the dimension of the ...
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1answer
42 views

Dimensionality reduction in HOG feature vector

I found out the HOG feature vector of the following image in MATLAB. Input Image I used the following code. I = imread('input.jpg'); I = rgb2gray(I); [features, visualization] = ...
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1answer
11 views

Sklearn PCA automatically set n_components

I am trying to use Sklearn PCA with the following code to reduce my 5000-D data to 32-D from sklearn.decomposition import PCA import numpy as np arr = ...
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1answer
38 views

Eigen faces using PCA

I am trying to implement Principal Component Analysis (PCA) to extract the features from the image in MATLAB. I have implemented the following code. [Rows, Columns] = size(x); % find size of input ...
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16 views

Dimension reduction using PCA in matlab code

I have the matrix of [152 X 27578] 152 samples and 27578 features and I used the PCA function for the dimension reduction in matlab. X = load(dataset); coeff = pca(X); It generated a matrix of ...
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6 views

experience with muma package - Plot.pca.pvalues function

Does anybody have some experience with the "muma" package???? I am trying to run the function "Plot.pca.pvalues", but I need to run several other functions before that. Or does anybody have an input ...
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16 views

How to do data preparation for the dataset which contains strings and integers/floats?

I have a dataset in xlsx format which looks like: Sample dataset containing string and integers I would like to do feature subset selection like T-Stats or Dimensionality Reduction like PCA, but for ...
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1answer
26 views

Ploting loadings PCA vs Wavenumber

I have the matrix data Wavenumber 450.000000 451.00000 Sample 1.977876 1.977388 1.976533 Sample2 1.803184 1.802537 1.802181 ... ... Sample29 1.929462 1.928509 1.927309 I removed the first line ...
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27 views

Unstandardized factor scores in SPSS Modeler

I am working on an PCA analysis which involves binary data (multiple columns with 0s and 1s and few hundred observations). The end goal is to determine clusters of similar observations using iterative ...
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43 views

Doing PCA with varimax rotation in R

My code has gone south. I'm importing a data 578x17 sheet from csv using the: Data=read.csv("Data.csv", header=TRUE, sep=',', dec='.', row.names= 1 , stringsAsFactors=TRUE) My correlations and ...
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18 views

Error for nonlinear PCA in R: dims [product 5950] do not match the length of object [0]

I'm working on some R code which I need to perform nonlinear PCA on a dataset. The dataset contains 595 observations and 116 dimensions. I use the package 'homals' ...
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19 views

scipy.linalg.sparse.eigsh does not work for generalised eigenvalues

I'm working on a machine learning project which involves doing a Principal Component Analysis on some labeled data and using those labels to extract more valuable information from the data. To do ...
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1answer
44 views

New outliers appear after I remove existing ones using QQ Plot Results

I'm working on the PCA section from Michael Faraway's Linear Models with R (chapter 11, page 164). PCA analysis is sensitive to outliers and the Mahalanobis distance helps us identify them. The ...
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22 views

R: filled.contour with PCAs values and fitness values

I want to create a fitness landscape with 2 PCAs values (PC1 and PC2) plus a fitness component (survival). I want this graph to be in 2 dimensions for the moment. That's why I want to use ...
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1answer
21 views

Apply PCA on classification data, category wise or on complete dataset?

I have a classification related image data with 15 different classes and each class has five feature sets. Those five feature sets comprise of colour features, sift features etc.. upto 5 different ...
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33 views

The size of my PCA coefficients is not correct [duplicate]

I am trying to perform principal component analysis using pca and not princomp. My dataset consists of 303 samples each containing 3904 dimensions, which explains why I want to perform PCA. My data is ...
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13 views

Factor analysis: Is there any difference for the category in SAS?

set 1 category variable, like Gender 1 = Male, 2 = Female set 2 categories variable like: Male = Male 1, Female 0 Female = Male 0, Female 1 Is there any difference for the category in SAS?
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49 views

Using dimensionality reduction on matrix

For supervised learning, my matrix size is really huge as a result of which only certain models agree to run with it. I read that PCA can help reducing dimensionality to a large extent. Below is my ...
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30 views

PCA prcomp: how to get PC1 to PC3 graph

In my script for PCA (below), I always get a graph of PC1 vs PC2. mydata.pca <- prcomp(mydata.fixed, center = TRUE, scale. = TRUE) g <- ggbiplot(mydata.pca, obs.scale = 1, var.scale = 1, ...
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30 views

EEGLab: Number of ICA components

I have an EEG aquired through 238 channels. When I decide to perform ICA, I have no idea about how many indipendent components I should obtain. If I have understood well, when I perform ICA the number ...
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2answers
50 views

Sklearn: How to apply dimensionality reduction on huge data set?

Problem: OutOfMemory error is showing on applying the PCA on 8 million features. Here is my code snipet:- from sklearn.decomposition import PCA as sklearnPCA sklearn_pca = ...
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1answer
25 views

I did dimension reduction using PCA model on Spark, but it errors as follows:

16/01/13 15:34:07 INFO DAGScheduler: Job 3 finished: first at RowMatrix.scala:65, took 0.013421 s Exception in thread "main" java.lang.IllegalArgumentException: Argument with more than 65535 cols: ...
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13 views

relation between training set and eigenvector in pca eigenfaces

I am new to face recognition and I have a question regarding PCA Eigenfaces. What is the relation between the number of faces in the training set and the number of Eigenvectors? For example if I have ...
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2answers
50 views

is it possible Apply PCA on any Text Classification?

I trying a classification with python. I'm using Naive Bayes MultinomialNB classification for the web pages (Retrieving data form web to text , later I classify this text : web classification). Now, ...
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20 views

NIPALS how to get the eigenvector

I have implemented a NIPALS Algorithm for use in PCA. I implemented it according to this script: http://folk.uio.no/henninri/pca_module/pca_nipals.pdf My question: Is the i'th PC (eigenvector as I ...
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18 views

Why does Kernel PCA need normalize the eigen-vectors?

In the original paper of KPCA, we conduct the eigen-decomposition on the centered kernel matrix, and obtain its eigen-values and eigen-vectors. But in the paper, we should normalize the ...
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18 views

MDS in R - how to i create the data to become distance mean?

returns, sharpe, risk, volatibility 7.433193 , 0.94 , 6 , 7.75 14.214304 , 1.18 , 7 , 12.13 13.948246 , 1.22 , 7 , 11.73 12.372482 , 0.74 , 7 , ...
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1answer
67 views

RDA analysis in R gives error “attempt to set an attribute on NULL”

I'm running an analysis in R with the Vegan package. It's really simple in the way that I only want the summary to extract some values. But it keeps telling me an error message. Why? I have this ...
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1answer
27 views

How to fix this PCA in R

I am creating a PCA plot from data: label <- read.table('label_clusters.tsv') mydata <- read.table('raw_clusters.tsv') GP.svd = svd(mydata) dat = data.frame("pc1"= GP.svd$u[,1], ...
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1answer
23 views

trouble importing csv file in matlab to perform pca

I have a problem , when i import a CSV dataset into Matlab , the separator doesn't work and Matlab showing me everything in one Column this is a picture of the problem
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1answer
28 views

Extracting Principal Components in FactoMiner R

I am trying to extract the principal components for a covariance matrix using PCA in FactoMiner. However, for some reason , I only see n-1 components in the var-->coord variable library(FactoMineR) x ...
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1answer
43 views

Can I use the eigenvectors values as columns weight for a machine learning model?

The output of PCA are the eigenvectors and eigenvalues of the covariance (or correlation) matrix of the original data. Let's say the are $x_1,...,x_n$ columns, then, there are $z_1,...,z_n$ ...
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88 views

How to retrieve features after PCA-LDA classification in matlab?

I need to classify spectral data, e.g. FTIR spectra, into three groups using LDA. My data is high dimensional (451 dimensions == 451 wavenumbers) and strongly correlated. I mean, the value in one ...
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12 views

Performance issue doing FAMD(Factor Analysis for Mixed Data)

not sure if it goes here or on crossvalidated, tell me. I code in R. I have a huge dataset, ~150 variables and 250k rows, ~20 qualitative, 130 quantitative. I want to perform a dimension reduction to ...
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31 views

Principal Component Analysis - loadings*scores!=data [duplicate]

I know I'm playing with fire by using statistical functions that I'm not that familiar with, however... I'm trying to use the principal component analysis function prcomp and I'm following a recipe ...
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2answers
33 views

Alternative to numpy's linalg.eig?

I have written a simple PCA code that calculates the covariance matrix and then uses linalg.eig on that covariance matrix to find the principal components. When I use scikit's PCA for three principal ...
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1answer
17 views

Evaluating unseen samples using KPCA (Kernel PCA) for Eigenfaces

I have a question concerning unseen samples which I want to qualify (face or not for). Using the ordinary Eigenface method (that is not reproducing kernel substituting the inner product of the PCA), ...
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1answer
29 views

Vectorization in PCA

i am doing Principal Component Analysis,and want help to know if can represent summation from i to m (X(i)*X(i)^T) in terms of data matrix..direct multiplication of two matrices. Can this be ...
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26 views

Why use separate mean values for each image in PCA?

In the PCA exercise of UFLDL tutorial: Step 0b: Zero mean the data First, for each image patch, compute the mean pixel value and subtract it from that image, this centering the image around ...
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16 views

PCA loadings at different scales

I'm looking to use PCA to "condense" multiple environmental variables (% cover of litter, moss, sand, etc.) into a single measure of habitat heterogeneity for a given site. However, I collected data ...
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3answers
61 views

PCA in 2D calculate center point in original data

I'm trying to create a bounding box around a given dataset. My Idea therefore was to use a PCA. I read that it won't always find optimal solutions but this doesn't matter. What I've done so far is ...
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50 views

Python: sklearn PCA mean convert to opencv2 RGB image

Iam trying convert PCA mean to RGB, but i get error: cv2.error: /build/buildd/opencv-2.4.8+dfsg1/modules/imgproc/src/color.cpp:3642: error: (-215) depth == CV_8U || depth == CV_16U || depth == CV_32F ...