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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PCA().fit() is using the wrong axis for data input

I'm using sklearn.decomposition.PCA to pre-process some training data for a machine learning model. There is 247 data points with 4095 dimensions, imported from a csv file using pandas. I then scale ...
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Controlling Servo with PCA9685 and Raspberry Pi

I am trying to control 2 servos from my pca9685 which is connected to my raspberry pi. I have written code that works with key inputs like I want, but I am only able to use one key input, and then I ...
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Why plt.quiver( ) doesn't show over seaborn.jointplot( )?

I have just starting learning Seaborn. Today am trying to plot the Eigen vectors (of the covariance matrix of a bivariate distribution) using plt.quiver() over a seaborn jointplot(). For some ...
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Automatically selecting features for anomaly detection using gaussian distribution

For certain data, we may need to manually create features which are combinations of earlier features to get a better algorithm. The below distribution (and any other where the distribution is an ...
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PCA returns duplicated features for different components

I performed (sklearn) PCA on a (1416960,140) pandas DataFrame. The resulting components_ attribute is a matrix where each principal component is associated to an array with the directions of maximum ...
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How to retrieve observation scores for each Principal Component in R using principal Function

pc_unrotate = principal(correlate1,nfactors = 4,rotate = "none") print(pc_unrotate) output: Principal Components Analysis Call: principal(r = correlate1, nfactors = 4, rotate = "none") Standardized ...
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PCA on Image Data

By applying PCA on image data, will we lose the spatial relationship between pixels? Justify your answer. I have tried finding answer to this question but I am stuck in the part where it talks about ...
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how to apply pca in matlab?

there is a matrix of 5100*720 dimension. each class includes 2550 sample. each row represents a sample of the classes. the pca is applied on each class. the problem is the output matrix is a 720*720. ...
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interpreting Principal Components Analysis results

I am trying to use the eigenvectors (or weights) to make sense on what features are primarily influencing the principal components. For this purpose, I use pca.components_ where pca results from ...
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Controlling focus of matplotlib image

I am trying to use PCA to annotate the words I modeled Word2Vec in 2d. The variable result contains the value below : array([[ 0.01632784, 0.01212493], [ 0.00070532, 0.01451515], [-0....
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When Should I use PCA? [closed]

I have been working on a data set of movies on IMDB. There is a column with movie genre. A single movie can have different genre, So I created dummy variables of all the genres which increased 20 more ...
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How to write this orthogonal projection formula in python? [duplicate]

projection of a vector π‘₯ onto a 1-dimensional subspace π‘ˆ with basis vector 𝑏 πœ‹π‘ˆ(π‘₯)=𝑏𝑏𝑇‖𝑏‖2π‘₯ And for the general projection onto an M-dimensional subspace π‘ˆ with basis vectors πœ‹οΏ½...
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One feature has high correlation with target [closed]

I have a data-set of size 8568x6 indicating six variables (var1 var2 ... var6) and 8568 observations. The data-set is forecasting precipitation based on the output of six climatological models. var1 ...
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PCA projection centroids and ellipsis

I'm currently working on my PhD, and I wondering if somebody using PCA projection have ideas on displaying some more information, that some library in R can print by default. See an example of STHDA ...
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k-means centroid labels change across runs of the same program?

I observe that subsequent runs of the same program deliver different labels for the k-means clusters, although the original features are the same. The program applies a set of transformations to an ...
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Understanding the output for PCA

I am using Weka to create PCA on a data set. Currently, I have 13 attributes. When I convert all the attributes into numeric values I input it into Weka's "Attribute Selection". My misunderstanding ...
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pca with iris dataset alongwith feature variability visualisation

I want to plot pca with Iris dataset along with that I want datapoints to have higher values of sepal width be dark in color and low values be light in color. How can I do that?
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Can I use Box's M test on PCA variables to choose between LDA and QDA?

I want to see if subspecies can be separate based on some morphological measurements I made. My plan is to use an LDA or QDA analysis on PCA variables. Performing the PCA first is to avoid correlation ...
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dudi.hillsmith error in x * w : non-numeric argument to binary operator

I'm re-running an RLQ & 4th corner analyses I coded about 6 months ago. However, an error is popping up with analysis of the Q table. I have been following Stephane Dray's (2013) tutorial and used ...
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Can PCA prediction guess the group of the new data numerically [migrated]

I'm wondering if there's a way to supply new data to a PCA prediction and have it "guess" which group the new data belongs to. In a case like the circled area in this image there are two species ...
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Dimension reduction for mixed data frame involving categorical(binary) values

Im working on a project for a machine learning class at the university. We were given an unknown data set, There were some categorical columns and I read online that I should convert them to binary ...
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Is normality test required for original data prior to the principal component analysis? [migrated]

for (i in 1:10){ qqnorm(df[, i], xlab='Quantiles of Standard Normal Distribution', ylab=colnames(df)[i]) } Most of variables are not satisfying the assumption of normality. If then, when I conduct ...
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Getting very low coefficients for PCA features in Cox linear model, but Z score is very high

've obtained some features that are predictive of survival from some medical images. I took these features and applied PCA to simplify the model and examine their effect and significance with a linear ...
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How to choose n components for PCA in face recognition algorithm

I am working on face recognition project using PCA and this is the link I am following. Code in the link simply loads up the face image dataset and divide it into train test and then perform PCA. Here ...
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How to display the number of records in each PCA component?

I am using PCA to reduce dimensionality. But I would also want to view the records in each PCA component. How can it be done?
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What does the ranker in Weka PCA tell us about feature selection?

I have a data set that is 31000 rows with 13 attributes. But because most are categorical I had to use NominalToBinary for those attributes so the attributes grew to 61. I have sampled the data to ...
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PCA with varimax rotation in R: comparison between the functions principal and prcomp

I try to do a PCA with varimax rotation. I compare the function "principal" of the "psych" package with the function "prcomp". Both work, but in the end (after the varimax rotation) I have for some ...
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1answer
25 views

How to inverse PCA without one component?

I want to denoise signals by applying PCA, then deleting one component and inversing PCA back to have denoised signals. Here's what I tried : reduced = pca.fit_transform(signals) denoised = np.delete(...
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Same values for PCA Loadings results

I've recently performed a Principle component analysis for my masters thesis where I have 25 network datasets, formatted into graphs and applied 5 measurements to each graph. The measurements were ...
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error in github “Analysis-of-DDoS-Attacks-in-SDN-Environments” in PCA algoritm

I run this project in github: https://github.com/aswanthpp/Analysis-of-DDoS-Attacks-in-SDN-Environments but when I run PSA I make a mistake fateme@fateme-VirtualBox:~/pox$ sudo ~/pox/pox.py ...
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How can I get a scatter plot matrix of principal components in R?

I'm learning PCA and I'd like to draw a scatter plot matrix with principal components. I calculated the principal components by using princomp function and $loadings but I don't know what I should do ...
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Can Linear Combinations of Principal Component become correlated?

I am calculating Principal Components Y1, Y2, Y3 & Y4 of a certain dataset. If Z1 <- aY1 + bY2 and Z2 <- aY3 + bY4 Is it possible to find real coefficients a and b such that Z1 and Z2 ...
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Interpreting analysis with PCA [closed]

The focus of this question is: What components should I keep? There is a dataset that has this structure: Each row is associated with an image in a directory. The variable confidence is a dummy ...
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Is it appropriate to use principal component analysis to show that each response groups' answers are strongly correlated?

I have a school survey dataset which asks teachers, pupils and parents to score (between 0 -10) such variables as; Academic Expectations Engagement Safety and Respect The dataset includes responses ...
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PCA Bounding box PCL

I have a problem where I have a 3D cloud in PCL pcl::PointXYZI and want to obtain the PCA boxes. There are some implementations being explained in other post but in my case the difference is that I ...
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PCA in R - Do we need to reassign the elements of “prcomp” by multiplying negative sign?

A trainer did this in a video. He just gave a quick explanation that he does this because of R's default nature. However, I have never seen this application before. Is it correct, and why he does this?...
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sklearn PCA, one feature in 2 components. Where's the error?

I'm doing a PCA and Extracting features based on max of explained_variance_ratio_ ERROR: in 15 of the components, the max components have the same indices, i.e., correspond to the same feature. In ...
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How to implement Random Search to optimize the number of principle components?

# PCA nof_prin_components = 200 # PARAMETER for optimisation in expereiments pca = PCA(n_components=nof_prin_components, whiten=True).fit(X) X_train_pca = pca.transform(X) parameters = { '...
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How to plot with fviz_pca_ind() without showing the legend?

I want the legend to disappear. Above is an example of what I did with the iris dataset in R. I could not find a variable in the documentation of fviz_pca_ind() to omit the legend. library(...
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When applying PCA to images for CNN, do I have to give it the grayscale image?

I am applying PCA to an image using compression. With the linear algebra techniques of this paper. I am trying to reduce the dimensionality of a dataset, to make an object detector with a ...
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1answer
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Kernel PCA Implementation in Julia

I am trying to implement the method of kernel principal component analysis (kernel PCA) in a Julia notebook. More specifically, I am trying to replicate the process done in this tutorial: https://...
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PC1 values very high still there is no clear separation between groups [migrated]

I have created a PCA plot for a dataset which has 6 groups. Post PCA I find very high values of PC1, but the groups are not clearly separated in the image. What could be the reason? Is there some ...
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1answer
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scatter3d(): chol.default(shape) error: leading minor of order not positive definite

I am currently trying to do a principle coordinate analysis (PCoA) in R. I am very new to R and am still trying to learn syntax and code. I was successful in running the PCoA and got it to plot, and ...
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2answers
35 views

Plotting select PCA loadings in R

I have just performed a PCA analysis for a large data set with approximately 20,000 variables. To do so, I used the following code: df_pca <- prcomp(df, center=FALSE, scale.=TRUE) I am curious ...
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Python PCA Plot (Parametric Ellipse) - Identify and Label Outliers

I am running some PCA analysis on some data using sklearn libraries. I am then doing a scatter plot of my PC1 and PC2 scores and I am adding a 95% confidence ellipse onto the same plot using the ...
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1answer
43 views

Z-standardization makes PC1 and PC2 exactly the same in this PCA analysis: Why?

I am trying to perform a PCA analysis using the psych package in R. I got two variables that I want to combine into one component displaying standard of living: slvpen: Standard of living of ...
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35 views

Application of methods for dimensionality reduction

I am a little confused when applying Latent Dirichlet Allocation and Principal Component Analysis. It turns out that I'm doing a project and I don't know if it is possible to apply this kind of ...
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2answers
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Performing PCA and knowing which columns were retained [duplicate]

When performing PCA on a dataset in Python, the explained_variance_ratio_ will show us the different variances for each feature in our dataset. How do we know which columnn corresponds with which of ...
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Color palettes in R for Kmeans clustering

set.seed(123) Km <- kmeans(res.ind$coord, centers = 30, nstart = 50, iter.max = 25) grp <- as.factor(Km$cluster) x<-sort(grp) fviz_pca_ind(PCA, col.ind = grp, repel = TRUE, label="none", ...
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1answer
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Performing PCA in R with many NAs

I have a large dataset of 10 variables and 12,000 observations, coming from 3 types of distinct systems (200 from small ponds, 600 from rivers and 11200 from lakes). I have a lot of NAs in my ...

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