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 allows PCA to be used for dimension reduction, i.e. to identify the most important variables from amongst a large set possible influences.

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Trying to remove the gridlines and background in a PCA using ggbiplot in R

I have made a PCA in R using ggbiplot(PCA.model,ellipse=TRUE,labels=PCA_data $label,groups=PCA_data$Month) [image of PCA][1] but i need to remove the grey and the gridlines. I have tried ...
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How to apply PCA on train and test set? [closed]

I applied the PCA on a dataset to get the train set using matlab: [Coeff mu score]=PCA(X); Xtrain=score; How to apply the PCA on the dataset to get the test set
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Principal Component Analysis (collinear predictors) and predict function in R

I have a dataset which has 3 collinear predictors. I end up extracting these predictors and use a principal component analysis to reduce multi-collinearity. What I want is to use these predictors for ...
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How to do feature selection using PCA and python

I am learning PCA and here I am using the dataset https://archive.ics.uci.edu/ml/machine-learning-databases/iris/iris.data I am applying PCA because I want to learn feature selection. I do the ...
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Manual Implementation of PCA produces a wrong plot, where eigenvectors are not orthogonal

I need to plot my eigenvectors that I calculated like this: def fit(self, X): ''' fits sorted eigenvalues and eigenvectors to class attributes. same goes for variance and explained ...
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How to apply PCA on a dataset and print the relevant features

I have a dataset with 23 rows and 48 columns. I am applying PCA to reduce the number of column dimensions. I use the following codes examples and I see that only 23 are required features: #first ...
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How can I resolve a *constant variable* error?

I am trying to perform a PCA in R, however I am getting an error using the princomp function. The error message says: cannot use “cor = True” with a constant variable. If anyone can help me understand ...
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Can PCA be used for row reduction

I had a doubt about Principle Component analysis. If the variables are along the row: delhi| kolkata| up| mp| bihar| assam| popolation 1.2 | 2.2 | 1.3| 1.4| 2 | 1.1 | ...
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PCA applied to mixed values

I have a question about how to perform a PCA algorithm with mixed data in Python. I have a table with several columns. The first one is a number, and all the others are booleans values, represented as ...
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Why is population data missing from PCA?

I'm doing PCA on microsatellite data for animals from different populations. I have a basic data matrix which reads as a genind object and I get expected output when I look at the Eigenvalues. The ...
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Why is PCA in WEKA making more features than what I had at the start? [closed]

So, I have a dataset with 84 features and 5000 rows. When I perform PCA on the dataset, it somehow makes more attributes than actually reducing the features. It ends up making 4590 attributes. The ...
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PCA with superimposed factors in addition to variables

I have to do a PCA of a certain number of individuals and variables in R. I know that it's possible to plot a biplot of variables and individuals in R for example, using FactoMineR or prcomp. In ...
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How to set n features of a spark Dataset using the VectorAssembler?

I'm trying to run PCA on a matrix that contains n columns of unlabeled doubles. My code is: SparkSession spark = SparkSession .builder() .appName("JavaPCAExample") ...
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MNE-Python; tfr_morlet time-frequency analysis; possibly improper use of arguments; How to make tfr_morlet graph work appropriately?

I apologize for the vagueness of the subject. It is a reflection of my lack of understanding of the behavior of the tfr_morlet graph output. To specify. I am working with 64 channel EEG data. I have a ...
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principal component analysis (PCA) in python, loading plot

I have been using SPSS before to plot principal component analysis. But now I have to use PYTHON to do the same job. I checked multiple sites to plot the figure of my desire but found nowhere. This is ...
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PCA scores for only the first principal components are of “wrong” sign

I am currently trying to get into principal component analysis and regression. I therefore tried caclulating the principal components of a given matrix by hand and compare it with the results you get ...
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Getting a null score vector using princomp funtion in R

I'm trying to do PCA analysis on some data. I'm not given the raw data, just the correlation matrix in this way: Tmax Tmin P H PT V Vmax Tmax 1.00 0.70 -0.08 -0.41 -0.09 -0.23 ...
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Changing shapes on Factoextra

I'm a very new coder looking to change the shapes of my PCA Biplot. My PCA Biplot code is as follows: group <- c(rep("SHIME 1_Trt1", times=8), rep('SHIME 1_Trt2', times=6), rep("...
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Compute PCA with ITK in C++

I am working with some DICOM images and I use ITK for this. I would like to compute the PCA of a binary image of a tumor. I found and tried to use the ImagePCADecompositionCalculator class, but could ...
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Why does PCA result change drastically with a small change in the input?

I am using PCA to reduce an Nx3 array to an Nx2 array. This is mainly because the PCA transformation (Nx2 matrix) is invariant to the rotations or translations performed on the original Nx3 array. Let'...
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Sparse PCA using python

I am analyzing a dataset with 9 features and I used Sparse PCA to reduce the dimensionality of the dataset to 3. After that I standardized the dataset to have mean 0 and variance 1. I want to select ...
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Measure of Feature Importance in PCA

I am doing Principle Component Analysis (PCA) and I'd like to find out which features that contribute the most to the result. My intuition is to sum up all the absolute values of the individual ...
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What is the true difference between vst() and assay(vst())?

So I'm looking through some RNA-seq data and I'm trying to plot pairs of principle components. However, our current R-script uses the command vsd=vst(dds, blind=FALSE) but the only way I've been able ...
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Threshold of PCA

I have a large climate data set OF many variable i.e., Temp, preceptiation...etc. and after PCA and binning into small width. I need to select the threshold value for it. Can someone guide me how I ...
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Is there an R function for loading unprocessed observations into principal components?

I have performed PCA and obtained loadings for components on the training data. Now I would like to apply the loading values for each column for each observation in the testing data so that I have the ...
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Principal component analysis - remove features or not? [closed]

When I applied PCA to my dataset, PC1 accounted for only 25% variation and about 22% by PC2. When I'm applying random forests or any other machine learning model, do I still negate some mildly ...
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fviz_pca_biplot(): Biplot of individuals and variables

Hello I have this R code and I want to show sorting and species, but it only shows species, if there is something I'm doing wrong. Thank you library(vegan) library(tidyverse) library(factoextra) ...
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I can not figure out the problem in my coding with my scatterplot3D for PCA…what should I do now?

library(scatterplot3d) fmri.pr <- prcomp(fmri, scale=TRUE) all.loadings=fmri.pr$rotation loading.pc1=abs(all.loadings[, 1]) # take absolute value top300=sort(loading.pc1, decreasing=TRUE)[1:...
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Apply PCA on Multiindex for several dates

I am trying to perform PCA on a multiindex which gives a correlation matrix on several days. For each of those days I would like to perform PCA on the correlation matrices. Any help is appreciated. ...
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Using weight column in PCA analysis with R

I have a column in my data file which corresponds to weight of individuals. The data looks like > library(FactoMineR) > mydata <- read.csv('test.csv', header=T,row.names=1) > mydata ...
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Do you expect a linear classifier to separate the two classes in the 2D-PC space?

I have a total of 183 features and I already applied the PCA to reduce the dimensions then I made a scatter plot. Now the question is: "Analyse the scatter plot visually. Do you expect a linear ...
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Select a region in a PCA plot and thos points are marked in other plot

I hope you're very well... I need some help with this kind of code... I have a data set with n attribute and m samples... And I did Principal Component Analysis (PCA) on this dataset. I need to select ...
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Calculation of PCA Scores in Matlab

I'm having trouble understanding how scores are calculated by principal component analysis. If I perform PCA on a matrix X, by: [coeff score] = pca(X) then should dot(coeff(1,:) , X(1,:)) = score(1,1) ...
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How to take the value of n_components in PCA [closed]

My question is how to take the value of n_components in PCA (n_components=?). The background of the project is to use machine learning algorithms to predict the stage of the disease. I am using ...
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Standard scaler produces different values before PCA

I am doing a classification problem in biometrics. I am comparing with the euclidean distance each probe in the testing set with the gallery. Everytime I run the code I get different results. If I ...
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Align PCA component with cartesian axis with rotation

I'm trying to rotate my point cloud such that the least significant PCA component is aligned with z-axis but with little success. I first calculate the PCA components U, S, Vt = np.linalg.svd(vertices ...
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How to reconstruct tidy.prcomp output so that it display the connection between observation/sample and loadings/rotation?

I wanted to ask on how do you display the row column for broom::tidy(PCA, matrix="loadings") output? broom::tidy(PCA)'s first column showed a column I am expecting to show in the first ...
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how to pick most like items with PCA

I run a PCA component analysis: df <- tibble(green=c(1,5,6,5,4,3), blue=c(3,2,3,4,5,6), dark =c(1,1,2,4,4,3)) df.pca <- prcomp(as.matrix(df)) summary(df.pca) Now I need to find the two items ...
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Complex eigenvalues in Principal Coordinate Analysis (PCoA)

I'm sharing a problem related to complex eigenvalues in Principal Coordinate Analysis (PCoA). Any help much appreciated! The aim: perform PCoA on a matrix of phylogenetic distances -> include the ...
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problem to transform data into a sampling plan using 'svydesign'

I'm having trouble placing an extensive database in sample design. The database I am using has the following structure: tibble [, 13] [5,966,953 x 13] (S3: tbl_df / tbl / data.frame) $ States: ...
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How can I project a new point onto a space created by PCA in matlab

I have a dataset of 30 variables and 60 observations. I perform PCA and keep the first 2 components. I also perform PCA on another dataset and end up with a point that I need to project onto the space ...
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How should I interpret the output of pca.components_

I was reading this post Recovering features names of explained_variance_ratio_ in PCA with sklearn and I wanted to understand the output of the following line of code: pd.DataFrame(pca.components_, ...
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Video analysis: How can I apply PCA to each frame in a video using python?

How can I apply PCA to each frame in a video, then compare PCA values of each frame and delete the frames with converging values and keep one only?? (after converting and blurring the video) please ...
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R Error in cov.wt(z) : 'x' must contain finite values only - NO NA's present

I'm trying to run a PCA on a set of variables. There are no missing values in this dataset. I have even double check with the sum(is.na() function. There are 8 variables in this dataset. There is a ...
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Find eigen vector using Generalised Hebbian Learning (Sanger's rule) in python

I have python implementation to find eigenvector using Generalised Hebbian Learning (Sanger's rule). It is executing successfully. I want to edit the same code which takes 100*100 symmetric matrix as ...
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How to buld a loop for running PCA and K-means for different segment in pandas

I want to create a loop in running the PCA and K-means for different countries. However i am able to do it separately for each country and later combine or concatenate the result. I would like to do ...
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Is there an R function that allows me to combine 2 graphs?

#I'm trying to do a taste wheel, like the Meilgaard wheel. I'm not trying to do anything complex I only want to plot together a pie chart and a PCA plot. I would like to have the piechart bigger than ...
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How to map/return PCA output value to original data.frame with indirect references?

Suppose that we have data of metadata and feature count like the following (from GlobalPatterns of phyloseq R package): 1. metadata: > clipr::write_clip(knitr::kable(head(sample_data))) | |...
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ImportError: cannot import name 'PCA' from 'matplotlib.mlab'

According to this task: Principal Component Analysis (PCA) in Python I included this line import from matplotlib.mlab import PCA but I get the error message: cannot import name 'PCA' from '...
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mutating a column which takes the dotproduct of a row in a dataframe with a vector

I have a 102x3000000~ data frame, and I am trying to calculate PCA dimensions for each data point. For example, if the vector to be multiplied by each for is: 1, 2, 3, 4, 5 I want variables A B C D ...

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