Questions tagged [pca]

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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How to calculate Square Prediction Error after PCA of two dimensional variable using Python?

Given data: [TC4: 213.6 213.8 214.3 214.6 215 215.2 215.3 215.5 215.7 215.8 216 216.1 216.2 216.3 216.4 216.6 216.8 216.9 217 217.1 217.3 217.5 217.5 217.3 217.2 217.2 217.2] [TC24: 154.2 154.3 154....
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22 views

Plot printed in ggbiplot is turning out to be too cluttered with variables names

I am using the ggbiplot function to make a plot of two principle components. https://github.com/vqv/ggbiplot/blob/master/R/ggbiplot.r#L171 I have added a picture of my actual graph. As you can see ...
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36 views

Applying PCA using R

I have a dataset (dt) whose dimensions are 8077 x 60483 (rows x columns). This dataset has only numerical values. When I am using the following line: pc <- prcomp(dt, cor = TRUE, score = TRUE). ...
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12 views

Pipeline PCA, Can I extract loading vector from this built-in function

I am trying to find the most efficient PCA/PLS algorithm with Python/R/ or others. I found the useful function Pipeline in python, which calculates score vectors for large size data very quickly. ...
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28 views

Sklearn's PCA gives 'wrong' output for last row

I am trying to run data through sklearn's PCA (n_components=2) and find that the y-value of the last row is different to the other values of the same input values. Notably, the input data only consist ...
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11 views

How can you create a correlation matrix in PCA on Python?

How do I create a correlation matrix in PCA on Python? Below, I create a DataFrame of the eigenvector loadings via pca.components_, but I do not know how to create the actual correlation matrix (i.e. ...
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Principal Component giving one component for each variable [migrated]

I have a total of 50 variables (150 rows of data). Prior to putting the values into prcomp () (in R) I logged the data. When I do prcomp(log.data, center=TRUE, scale=TRUE), I still get 50 PCs for the ...
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17 views

How to apply Dimensionality Reduction to HOG features? [closed]

How can I reduce HOG features that can be used for Support Vector Machine (SVM) training? I receive 20,000 HOG features for one image and I have 1451 images. The number of features are more than ...
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18 views

Reconstruction of RGB faces from Thermal image

I am following this paper for reconstruction of thermal image to color image. The paper has three steps Training, Reconstruction and Fine tuning. I use 15 people in my training. My image size is ...
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13 views

Principal component analysis using python

I am trying to rewrite the code of my previous code. pca_data= pca.components_ Tdata=np.zeros((len(df),len(pca_data))) for i in range(0,len(scaled_data)): for j in range(0,len(pca_data)): ...
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1answer
29 views

Matching Largest Eigenvalues to Eigenvectors

In Python I've calculated the eigenvectors and eigenvalues of my data matrix X through eig(). I'm looking to find the top 2 principal components of the data (U = [u1 u2]). I know the top 2 components ...
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17 views

Principal component analysis with grouped data and few replicates [migrated]

I am relatively new to principal component analysis so I am hoping someone can help me a bit. I have a dataset in which I have measured 6 yield components (total yield, grain yield, no spikes, no. ...
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17 views

How to use principal component analysis for logistic regression

I'm interested in using logistic regression to classify opera singing (n=100 audiofiles) from non opera singing (n=300 audiofiles) (just an example). I have multiple features that I can use (i.e. MFCC,...
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15 views

fit_transform() shows ValueError

import word2vec from sklearn.decomposition import PCA vector = word2vec.load('Model1.bin') x = PCA(n_components=2).fit_transform(vector) I'm pretty sure the label numbers and the vector numbers are ...
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17 views

Enforce specific type of predict function in R (MFA FactoMiner)

I am using the FactoMiner package to perform MFA (Miltiple Factor Analysis). This works fine, until I want to use this for prediction. I am calling library(FactoMineR) mfa_group = c(1, 8, 5, 6, ...
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41 views

Plotting PCA biplot with autoplot: modify arrow thickness

I am using the autoplot function from ggfortify as illustrated by the code below using iris.pca. This example only has three variables (hence 3 loadings) but my data set has a lot more variables so I ...
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14 views

Prince package for Factor Analysis of Mixed Data - Can't get row_contributions()

I am trying to use Prince package to apply Factor Analysis of Mixed Data (FAMD). I have a pandas dataframe with sample names as index and features as columns, and some columns are numeric and other ...
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22 views

How can I adjust the dimension of the axes fviz_pca

I'm trying to put the two axes of my biplot exactly equally scaled (i.e., 1 cm on the vertical axis must represent the same 1 cm on the horizontal axis). How can I do that with fviz_pca? or there is ...
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34 views

Using Naive Bayes after data transformation with PCA

I have implemented a Naive Bayes classifier that works well enough with unprocessed image data since pixel values are all 0 to 255. However, after applying PCA to reduce the dimension of the data, the ...
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60 views

Difference in PCA implementation between numpy only vs sklearn

from tensorflow.examples.tutorials.mnist import input_data mnist=input_data.read_data_sets('data/MNIST/', one_hot=True) numpy implementation # Entire Data set Data=np.array(mnist.train.images) #...
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Bug in Scikit-Learn PCA or in Numpy Eigen Decomposition?

I have a dataset with 400 features. What I did: # approach 1 d_cov = np.cov(d_train.transpose()) eigens, mypca = LA.eig(d_cov) # assume sort by eigen value also/ LA = numpy linear algebra # ...
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35 views

Perform pca on replicate treatments instead of parameters

I have a dataset in form that column 1 contain treatments name and remaining columns contain values for those treatments and there are three replicates for each treatment. For illustration I have ...
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1answer
9 views

nsprcomp(): enforcing non-negativity for principal component analysis in R

My goal is to do a non-negative PCA using nsprcopm() (version 0.5.1.2 ) on my data and extract the values of PCs. I do it as follows in R version 3.5.0: nnpca <- nsprcomp(mydata[,10:16], center = ...
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How to iterate PCA over rolling windows in R? [duplicate]

I currently have a set of monthly time series data going back to 1993 for 16 variables. I wrote the script to run PCA over the entire time period, but I need to run the calculations over rolling 12 ...
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33 views

“Result not set” error while using PCA from scikit-learn

I have Numpy array with the shape (774743, 135), and when I run pca.fit() with this data, I get Result not set error during the SVD process. What should I fix to remove this error? Here’s the code: ...
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23 views

ValueError: could not convert string to float: [Standardising the data for PCA] [duplicate]

I am trying to apply Principal component analysis on the given dataset using Scikit-learn and find out dimensions. But before applying PCA when i am standardizing the data, i am getting this error ...
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36 views

PCA with several time series as features of one instance with sklearn

I want to apply PCA on a data set where I have 20 time series as features for one instance. I have some 1000 instances of this kind and am looking for a way to reduce dimensionality. For every ...
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26 views

Spark Java PCA score vectors

I'm using the Java Spark API and computePrincipalComponents() to compute k principal components. As a result, i get a RowMatrix containing the principal component loadings. Apart from the loadings i ...
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1answer
10 views

Based on the visualised plots, which features data matrix is better for PCA, “X_scaled” or “X”, Why?

The first graph is a plot by transfer a 25 features feature matrix and the second graph is transformed from the same feature matrix but be scaled by StandardScaler(). I am very confused about this ...
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How can I write the resulted new representation of data, using LDA, from WEKA to an arff file?

Linear Discriminant Analysis (LDA) is a supervised dimensionality reduction algorithm, so from d dimensional data (input data) we want to obtain p new dimensions, where d>>p. It is the same principle ...
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27 views

How can you average out group observations in PCA with factor anlaysis in R?

I am trying to graph a PCA with factor analysis to show how groups of observations are located differently along the resulting dimensions. x = data.frame(v1=c(10, 20, 5, 26, 2, 30), v2=c(...
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12 views

how to make dataset for feature matching

I have a set of facial images that have been processed so that I already have a face dataset using PCA for feature selection, which I asked, how to process an input image to produce a dataset that ...
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1answer
32 views

How to plot large dataset with multiple dimensions in Python?

I'm trying to plot clusters from K Means method whereas dataset consists of one million records with 60 dimensions. To attain 95% variance, I've reduced dimensionality to 35 components by doing PCA ...
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17 views

Covariance and eigen

I have many datasets for PCA calculations, because the data is too large for the matrix covariance calculation. how can the results of the covariance matrix be stored in several matrix so that they ...
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15 views

Running PCA on temperature and strain data

I get the following error when applying PCA on temperature and strain data. T1 is the temperature, W_A1 is the strain data. Both are of length 6000. I get the temperature data from an excel using ...
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1answer
43 views

Error reproducing pca plot using scatter3D

I have performed principle component analysis on mtcars dataset and plotted it using scatter3D using the code given below: require(rgl) require(SciViews) require(plotrix) require(ggplot2) require(...
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1answer
58 views

What does fit, transform, and fit_transform do in PCA available in sklearn.decomposition?

I am trying to mimic the behavior of PCA class available in sklearn.decomposition. I have wrote a method which computes the SVD but I am not sure what does fit(), tranform(), and fit_transform() do ...
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10 views

package “fdapace” (R) - What is a “fitted sample path”

My question is about functional principal component analysis. More specifically it is about the CreatePathPlot function of the fdapace package in R. The function plots the "fitted sample path" based ...
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30 views

T2 Hotelling in PCA - how to choose covariance matrix after demensional reduction

I'm trying to use T-squared distribution (by hand) in my pca analysis. It's purpose is diagnostics after demensional reduction. M=self.PCA_red.shape[1] N=self.PCA_red.shape[0] F=scipy.stats.f.ppf(0....
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27 views

Font style inside PCA Graph (and ggcorrplot)

I am trying to prepare an article for publication and I am having trouble getting a consistent font style in my PCA charts. I am using the fviz_pca_var function. The code I am using is library(...
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1answer
52 views

Create a 3D pca using Kmean with points labelled

I want to make the plot given below on mtcars dataset.. For doing this I tried the code given here as follows: require(rgl) require(SciViews) require(plotrix) library(corrplot) require(ggplot2) ...
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1answer
22 views

How do I change the axis sizes in pca2d?

I'm using the pca3d package to plot principle components 1-5 of gene expression data. I was having a hard time standardizing the 3d plot, so instead I plotted PC1 vs PC2, PC2 vs PC3, etc. My code for ...
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1answer
15 views

Is there any support for BiPlots when using PCA in spark.ml?

I have used kmeans and PCA to attempt to visualise high dimensional k-means clusters in two dimensions but have lost the meaning of the clusters in 2D. Is there anyway to project the features onto to ...
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58 views

package “fdapace” (R) - create a functional plot of the first principal component

My question is about functional principal component analysis in R. I am working with a multi-dimensional time series looking something like this: My goal is to reduce the dimensions by applying ...
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6 views

how to allign pca projections between train and test data?

hello i use PCA algorithm but the test data after projection is different than train data from sklearn.decomposition import PCA pca = PCA(n_components=2) X_pca = pca.fit_transform(x_train) xTest_pca =...
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1answer
43 views

How change order of SVD using numpy python

I am using Singular Value Decomposition (SVD) for Principal Component Analysis (PCA) of images. I have 17 images of 20 X 20 so I created images matrix M = dim(400 X 17) and when I apply SVD ( M = ...
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1answer
41 views

package “fdapace” (R) - How to access the principal components of the functional principal component analysis

After aplying the FPCA() function of the "fdapace" package on a dataset, the function returns a FPCA object with various values and fields. Unfortunately I don't know wich of those fields contain the ...
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17 views

Apply the same transformation on separated arrays (without concatenating)

I have 2-D data of shape (?, n) where ? may differ from one sample to another. Each sample corresponds to one recording, each recording is of time-length ? and n is the number of features (same for ...
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9 views

P-adjustment (FDR) on Hierarchical Clustering On Principle Components (HCPC) in R

I'm working right now with "Hierarchical Clustering On Principle Components (HCPC)". In the end of the analysis, p-values are computed by the HCPC function. I searched but I couldn't find any function ...
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1answer
72 views

Consistent variable colours in factoextra across plots

I am trying to keep my plots with consistent variable colours while using the factoextra library to plot PCA results. Reproducible example below: data("decathlon2") df <- decathlon2[1:23, 1:10] ...