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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Image compression using PCA

not sure if this is the place to ask this question. I have a question about PCA with regards to storage space. If we were to use PCA to compress images, We would at least have to store 1) The ...
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error continuous value supplied to discrete scale ggbiplot

Im a bit new to R and having a problem with this error when using PCA - ggbiplot. How will I have different colors in my plot? ir.pca <- prcomp(Q1[, 2:4], center = TRUE, scale. =...
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28 views

PCA plot, dimensions plot

I have found good tutorial about PCA One question is not clear me currently. I want to know, how is it possible to visualize not only Dim1 vs Dim2 results, but actually all possible pairs of ...
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1answer
29 views

Turn off axes in r

I've generated a plot of an RDA using R. When I add my biplot on to the RDA, it adds new axes that I would like to turn off. Here is some example data: Site<-c(1,2,3,4,5,6) inv1<-c(34,67,78,45,...
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Should outliers be removed from Principal Components Analysis? [migrated]

I have calculated Hotelling's T2 statistic for detection of outliers in PCA analysis in Matlab. However, I am unsure as to whether or not it is a robust approach to remove these outliers? The output ...
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PCA in video processing

I'm a beginner in video processing. I'm working on a dataset that used two cameras for observation.I extracted features of the frames by a descriptor and it has resulted in a (1*500) dimensional ...
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11 views

How to draw N-D cloud of dots in projection onto 2D space in Python?

I have a table of numeric data, with 40 columns in each row, and approx 1000 rows in total. I would like to regard each row as coordinates in 40-dimensional space and draw this "cloud" of dots on the ...
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30 views

PCA: how to make equation from pcrcomp?

Example: #loading data data(iris) #PCA ir.pca <- prcomp(iris[,1:4],scale=T,center=F) #date frame to check dt <- data.frame(1,0,0,0) names(dt) <- names(iris[,1:4]) #prediction how it is ...
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21 views

Does PCA in Spark do mean vector subtraction?

Does pyspark.ml.feature.PCA perform mean vector subtraction before running PCA ? If yes, is there a way to access the mean vector from the model ? Didnt find any of this information in the ...
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13 views

How to reconstruct image from transformed by PCA with MNIST data in python

I'm trying to plot reconstructed image from transformed by PCA. The data is MNIST. I have a problem to index matrix(list of list) where eigenvalue>1. I've succeeded to get eigenvectors with ...
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face detection from video in matlab

How should I do face detection from a video such that I can perform PCA for face recognition.The code used for detection performs well but at the recognition phase I get same image for all the ...
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1answer
29 views

Removed k rows containing missing values

So I had the following issue resolved in this thread : R: Explain ggplot2 warning: "Removed k rows containing missing values" Like this : Warning: Removed 1763 rows containing missing ...
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2answers
38 views

How to remove columns which have zero sum from list of files

Below is the code for applying PCA on multiple dataframes country wise stored in myfiles. ## Get file names for a working directory ### temp = list.files(pattern="*.csv") ## Read files ### myfiles = ...
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29 views

How to train a SVM by using LDA

I am using C++ with OpenCV 3.0. I have a training data matrix with features that I have extracted of some images (trainData). The size of this matrix is 2750x1104 because I have 2750 images (positive ...
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14 views

Using PCA to perform a 3D reconstruction

I have several 3d vertebra structures data, and what I have done so far is: calculate parameters as: Thickness, Connectivity and Space distance using Bonej on several ROI. Calculate PCA model of ...
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9 views

How do we choose the value of copy and whiten of PCA in scikit-learn

I am the beginner in machine-learning. When I want to use pca in scikit-learn. There are two parameters, copy and whiten. Here is the explaining by scikit-learn copy : bool If False, data passed to ...
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1answer
35 views

Scikit-learn PCA .fit_transform shape is inconsistent (n_samples << m_attributes)

I am getting different shapes for my PCA using sklearn. Why isn't my transformation resulting in an array of the same dimensions like the docs say? fit_transform(X, y=None) Fit the model with X and ...
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1answer
42 views

R code automation

I am doing PCA. Here is the code for the same- ### Read .csv file ##### data<-read.csv(file.choose(),header=T,sep=",") names(data) data$qcountry #### for the country-ARGENTINA####### ...
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33 views

Memory Error in multiplying large pandas dataframe with transpose of itself

I have a pandas dataframe with 10 rows and 22411 columns. Each row has data corresponding to a particular timepoint. The dataframe is indexed according to timepoints time_point = [0, 0.5, 1, 2, 4, 6, ...
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16 views

Varimax Rotation in sklearn

I searched sklearn, but can't find a class/method for doing varimax rotation on a matrix. If anyone knows such a class/method existing in sklearn, please share with me.
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26 views

R 3d plot using RGL, different shapes [duplicate]

I have the following code below to plot a 3d pca where I have assigned different colours to each variable. As there is 26 variables it would be easier to view the differences if I could use some ...
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19 views

PCA in apache spark - java

I am using PCA for dimension reduction, its working great, but the issue is, the matrix returned has negative values as well. When I train this data, it gives an error. double[][] array = {{1.12, 2....
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19 views

MDS plot with s.class - add sample labels

I have a question related to the R function s.class. Currently I'm trying to add a labeling for the sample names. I already found a post about this topic (Add sample names to PCA plotted with s.class) ...
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25 views

PCA for Matlab not working?

Somthing super weird going on in here, I try to replicate the website Matlab example for PCA: load hald coeff = pca(ingredients) coeff = -0.0678 -0.6460 0.5673 0.5062 ...
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8 views

how to use opencv4android pca to input image?

I want to know how to use PCA on input image so I can use the output to predict the image class using svm trained model? take note that I am using opencv4android ver 3.0 and android studio Thanks in ...
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52 views

How to find the real datatype of a variable in R?

Datatypes in R have always confused me, and I'm sorry if this is an elementary question. I know that the $loadings attribute in R is supposed to be a matrix. even the documentation says that if you ...
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Reducing LBP Features With PCA - Matlab

I have 704x5120 Feature in LBP , I want to reduce fecture for example to 300 features by PCA, Anyone can help me how to do it ?
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1answer
64 views

Reading data only once and apply same function for different variables [closed]

Dataset I am working on looks like-DATA there are 6 different countries and r_1..r_13 specifies the reasons. I want to apply PCA on this dataset to find out the significant reasons for each country ...
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20 views

error in opencv pca code in android?

the code bellow is to get the feature vectors from set of images and using them to train the svm model. but the problem is that it just stop as it reach pca part and it doesn't display any errors so ...
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30 views

how to use opencv4android pca to train svm model?

classification problem is static hand gesture recognition for android smart phones. my problem is I am new in openCV so can anyone give an example on how to use PCA to get feature vectors?so i can ...
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1answer
38 views

Principle Component Analysis Error in R

I'm trying to run a PCA on the "training1" data set created below: library(AppliedPredictiveModeling); data(AlzheimerDisease); library(caret) adData <- data.frame(diagnosis, predictors) inTrain &...
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1answer
45 views

Simple plots of eigenvectors for sklearn.decomposition.PCA

I'm trying to understand how Principal Component Analysis works and I am testing it on the sklearn.datasets.load_iris dataset. I understand how each step works (e.g. standardize the data, covariance, ...
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23 views

How to deal with missing data when doing a factor analysis?

I am trying to do a factor analysis with survey data but I have some missing values in the dataset. The missing data is throughout the dataset. This is my code: data1 <- data.frame(data) #convert ...
2
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1answer
53 views

C++ inheritance of private functions while using PCL

I've been trying to use the PCA module from PCL in C++, but it's been a pain. At one point I want to switch the current indices of points that need to be operated on using the setIndices() function, ...
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33 views

Revisit: Change loadings (arrows) length in PCA plot using ggplot2/ggfortify

Change loadings (arrows) length in PCA plot using ggplot2/ggfortify? This question was asked in March and has not been answered. I am in the exact same conundrum but cannot find an answer anywhere. I ...
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1answer
27 views

how to do text clustering from cosine similarity

I am using WEKA for performing text collection. Suppose i have n documents with text, i calculated TFID as feature vector for each document and than calculated cosine similarity between each of ...
2
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1answer
48 views

Adding subscripts to the variable names of a PCA using ggbiplot?

I have the following PCA plot with 7 variables (see data and code below), where I want the variable names to be put in subscript. In ggbiplot() however, the variable names are automatically taken ...
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1answer
378 views

Sparse input for LS-SVM

I am trying to use the features from Deep Neural Networks (DNN) to train the Lease Squared SVM. The standard procedure to solve the LS-SVM is to inverse the kernel matrix. However, the kernel matrix ...
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1answer
62 views

Principal component analysis on PCL

I am using PCL with C++ and want to perform PCA on an already clustered pointcloud (that is on every individual cluster). The idea is to eliminate all clusters that are too large/small by measuring ...
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1answer
28 views

Quality of PCA in scikit-learn

I use PCA to transform my features in oder to reduce the number of dimensions. In order to tune the number of dimensions I need to know how well the original features are described by the PCA. How can ...
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1answer
26 views

Why the number of PCA's changed?

I was doing PCA on a dataset. In order to find the optimal number of PCA's, I used the number of features as the number of PCA. However, when I looked at the explained variance ratio, I noticed that ...
1
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1answer
27 views

Specifying and plotting PCA site symbols according to zone

I'm creating a PCA in the example below, I know to to get the plot to vary the symbol according to another variable (I've just used a set of zones from 1 to 5 for example). I would like to know how ...
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10 views

How to reduce dimension m*n*o matrix using PCA in Matlab

I have a hyper-spectral image that is (295x295x33) array/matrix and I want to perform PCA over it using matlab to reduce dimension to 295x295x1. However, there is no particular place on the web that ...
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19 views

Multi SVM classification against reduced feature space of Principal Component Analysis

I want to apply Multisvm classifier over reduced feature set, which is extracted by using PCA. But, I am getting wrong results. As I reduce the feature space by 10% to perform some tests, it ...
1
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1answer
60 views

Plot a Correlation Circle in Python

I've been doing some Geometrical Data Analysis (GDA) such as Principal Component Analysis (PCA). I'm looking to plot a Correlation Circle... these look a bit like this: Basically, it allows to ...
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12 views

Validate correspondence analysis results

I have implemented correspondence analysis for dimension reduction of categorical variables.How can I validate the results of the algorithm as there is no notion of variance preservence in categorical ...
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1answer
39 views

Finding and utilizing eigenvalues and eigenvectors from PCA in scikit-learn

I have been utilizing PCA implemented in scikit-learn. However, I want to find the eigenvalues and eigenvectors that result after we fit the training dataset. There is no mention of both in the docs. ...
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198 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 ...
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1answer
81 views

Principal Component Analysis in R, ggbiplot

I'm a biologist trying to use R, and I'm struggling with it. I'm trying to generate a Principal Component Analysis for this data: 1,26.96,37.31,35.74 1,24.27,38.48,37.24 1,23.58,35.64,40.78 1,24.29,...
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1answer
52 views

Difference in Matlab results when using PCA() and PCACOV()

Closest match I can get is to run: data=rand(100,10); % data set [W,pc] = pca(cov(data)); then don't demean data2=data [W2, EvalueMatrix2] = eig(cov(data2)); [W3, EvalueMatrix3] = svd(...