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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Solved numerical on how AutoEncoders are used for dimensionality reduction

I could not find any solved example on how to use autoencoder to reduce dimensions. There are many numerical examples for PCA but I could not find it for autoencoder. Please, if someone could share a ...
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Extracting or computing "Component Score Coefficient Matrix" from PCA in SPSS using R

I am using example data "mtcars" to compute a PCA in R: pca <- principal(mtcars, nfactors = 2, rotate = "varimax") There is no deeper meaning behind the specification, just an ...
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Inverse transform of PCA (EOF) with varimax rortation

I predicted the principal components of the climate index in the US for multiple years. Principal components and transformation matrix were received with df_eof() function from https://github.com/...
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Can anyone give me an explanation for these question attached in the image [closed]

Question is based on this graph
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Python: How can Kernel PCA be performed via SVD?

Since standard PCA can be performed via either eigenvalue decomposition (numpy.linalg.eig) or Singular Value Decomposition (numpy.linalg.svd) how can I perform numpy - based PCA via SVD? Say I have ...
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opencv pca Is it possible to change the reference point(center point) when extracting eigenvectors? I don't want to center point

In the opencv pca function, can I extract the eigenvector by grabbing the starting point I want, not based on the center point? For example min (x, y) point in 2d coordinates. opencv Introduction to ...
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Python: How to perform PCA with promax rotation?

How can I perform PCA in python, from SVD and eigenvalue decomposition with promax rotation? I've implemented a function that returns a rotation matrix such that the rotated loadings are and the ...
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plot scree plot in matlab

How to plot scree plot in matlab using Singular Value Decomposition(SVD)? I have already calculate first and second factor and loadings. [U,S,V] = svd(x); ls1 = S(1,1)*V(:,1)'; ls2 = S(2,2)*V(:,2)';
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How to do an MCA analysis on a binary dataset?

I've asked this question on stack exchange, but no luck. I'm looking to do an EDA with some binary data as seen below and I was recommended to use MCA. However, I'm not sure about how to go about ...
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A few doubts on PCA and HCA analyses on bivariate Raman Spectroscopy data

I'm an undergrad working on a project, trying to replicate(imitate to be precise) the dendogram and PCA scatterplots as noted from other reference papers. I have 265 columns of Raman spectra ranging ...
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How can I reverse .reshape() and get back to a 3D array?

I have a dataset of shape (256, 180, 360). I reshaped it to 2D, removed the 0 values, and applied PCA using: data = data.reshape(data.shape[0], data.shape[1] * data.shape[2]).T data = data[~np.all(...
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Am I interpreting K-means results correctly?

I have implemented k-means elbow plot to find the optimum K for my data (after doing PCA). I have gotten the elbow plot shown below. My question is: I think the optimum K is 3 in my case (this is ...
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PCA: Reverse engineer dataset

I have done PCA on a dataset with 840 features and got 460 components to give a variance of 70%. I have applied this into PCA and got the tansformed PCA features. What is the next step to get dataset ...
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ValueError: Input contains NaN, infinity or a value too large for dtype('float64') despite dropping NA

I want to create a PCA plot, where X are the columns with column names that start with cg (i.e., location [:,9:-1]). Color is the survival column. I dropped NA values using meth_exp = sub_nt.iloc[:,9:-...
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Plotting arrows in ggplot2 for pca

I want to plot arrows in a pca. I can do that with nmds. But for unknown reasons I cannot do it with the pca. First I tried this: library(AMR) ggplot_pca(pca_resources) The plot is nice but I want ...
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How to get contributions and squared cosines in sklearn PCA?

Working primarily based on this paper I want to implement the various PCA interpretation metrics mentioned - for example cosine squared and what the article calls contribution. However the ...
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if my explained variance is low in my PCA component, is it still useful for clustering? [migrated]

I am trying to use PCA to reduce my dimensions but encountered low variance in both PC1 and PC2. How should I proceed and are they still useful for un-supervised clustering?
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Not supported type: <class 'numpy.float64'>

While trying to create dataframe from a dictionary, I am getting type not supported error key in dictionary is number of components and variance is the output from pca var = list(np.cumsum(100 * pca....
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"inverse_transform" individual components of a PCA result

I want to check if my approach for the following problem is right, and if there is perhaps a better solution to it. Problem: I have a number of greyscale images. I performed a PCA to reduce the ...
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PCA sums only up to 50%, whats wrong with the technique

I have just followed this tutorial in order to try to understand PCA. https://towardsdatascience.com/pca-using-python-scikit-learn-e653f8989e60 However I used a different dataset (Water potability). ...
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using PCA in Transfer learning and functional API

I want to implement PCA on output of Inception model which has Global average pooling in the last layer (so the output shape is (none,2048) ) but I got this error : Subshape must have computed start &...
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Explanation from this study that performed PCA on data with variables measured differently

This study: https://www.sciencedirect.com/science/article/pii/S0006320716308278 conducted a PCA from the "novel object" data and I'm trying to figure out how they did this when the data is ...
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How to calculate the specificity of a kernel-PCA statistical shape model?

I'm trying to create kernelPCA-based statistical shape model (or active shape model) in MATLAB. Although I found a couple of functions to do this, I'm unable to test the specificity of my model since ...
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Found array with dim 3. StandardScaler expected <= 2,Unable to allocate 15.5 GiB for an array with shape (34997, 244, 244) and data type float64

I am trying to normalise the pixel values of all the images contained in a folder at once but the error shows up def resize(): data = [] img_size = 244 data_dir = r'C:\...
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Which Scaling method should I use when my features have outliers before PCA in Python?

I have a dataset with only numerical features that requires doing PCA. Most of the features do not have Gaussian Distribution and also some have outliers. Which methods is highly recommend before PCA? ...
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converting Matlab code to python: SVD, PCA

I am trying to convert a Matlab code which uses a "Orthogonal Procrustes problem" to a python code (via tensorflow 1.14) Maltab code: [Ux,~,~] = svd(X,0); Ux = Ux(:,1:r); Yproj = Ux'*Y; ...
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recover column details after PCA and Kmeans

I did KMeans clustering after reducing numerical columns in my DataFrame from 5 to 2 using PCA and plotted scatterplot pc=PCA(n_components = 2).fit_transform(scaled_df) scaled_df_PCA= pd.DataFrame(pc, ...
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apply a function on only one value of dictionary [duplicate]

I have a dictionary which looks like this: {'image': array([[[173, 179, 201], [173, 179, 201], [171, 179, 200], ..., [180, 191, 213], [179, 190, 212], [...
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When to filter data during dimensionality reduction of image data?

I am extracting numerical data from biological images (phenotypic profiling of fluorescently labelled cells) to eventually be able to identify data clusters of cells that are phenotypically similar. I ...
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Plotting only selected loadings in R

I have a PCA with more than 150 variables, when plotting the loadings the PCA become obviously a mess. Is there a way to plot only selected loadings? As an example: with iris I end up with 4 loadings, ...
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Explained Variance Ratio versus Calinski Harabasz ratio

I'm currently working on a PCA and when I use sklearn PCA I can ask it to show me the explained variance ratio and I had initially used that to create an elbow plot. I then came across the very cool ...
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Getting ValueError on Prediction after PCA and K-Means

I first applied PCA to my dataset as a dimension reduction method. then K means clustering has been performed on the PCA dataset. As the final step of my project, I need to predict the cluster of new ...
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How do I change the "str" ​labels in a function to "int" and return a plt.legend() that concatenates the two labels in an "int, str" format?

I have a function that allows me to display the circle of correlations of my pca. The problem with this function is that the labels of my variables (column names) prevent me from reading my results ...
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How to change loadings.label in PCA plot using ggplot2?

I am plotting a PCA analysis in ggplot2 and loadings.label overlap with the arrows. I want to move the labels a little to make more accessible the reading of the plot, but I can't find a way to do it. ...
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How do you filter out individuals on a figure after creating a PCA plot in Factoextra?

I am a research student coming to grips with R for the first time. I am trying to make a PCA plot from a series of body measurements, the specimens names and a subspecies tag (BIN) are in sperate ...
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minisom python package pca initialization code

Copied PCA initialization code from minisom package shows below. def pca_weights_init(self, data): """Initializes the weights to span the first two principal components. ...
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how to cross validate pca in sklearn pipeline without overfitting?

My input is time series data. I want to decompose the dataset with PCA (I dont want to do PCA on the entire dataset first because that would be overfitting) and then use feature selection on each ...
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Finding variance of n features explaining target Python

I am looking for a way to find how much of the total variance the top n features explain regarding the target variable in a dataset. The datasets I am working with have anywhere between 50-180 ...
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PCA explained variances based on the size of dataset

I have a dataset of 600000 rows by 262 columns, I am applying PCA to the whole dataset to get the first N components that can explain 95 % of the variances, which turns out to be 140. I then did a ...
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Scikit-learn PCA issue: cannot finish, kernel dies

I have a dataset with all numeric data as the shape of: (1873, 64) There is no NaN, inf, and -inf values exist in the dataset: X.replace([np.inf, -np.inf], np.nan, inplace=True) X.dropna(inplace=True) ...
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Uniquenesses component of explorator yfactor analysis

I am applying an Exploratory factor analysis on a dataset using the factanal() package in R. After applying Scree Test I found out that 2 factors need to be retained from 20 features. Trying to find ...
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Adding group information to 3d plot in FactoMineR

My code this is what Im running library(FactoMineR); library(factoextra) res.pca <- PCA(t(data),ncp = 10, graph = FALSE) res.hcpc <- HCPC(res.pca, graph = FALSE) fviz_dend(res.hcpc, ...
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dimdesc() error from FactoMineR package in the building of PCA

Using the data available on FactoMineR package: (http://factominer.free.fr/book/orange.csv), I created a PCA and after a PCA with supplementary information. The latter step when I used the function ...
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How to highlight a particular variable or individual in a PCA space in R

I am currently working on a large dataset (count data with species x samples) from which I performed a PCA. What I get is a massive cloud of points, and I would like to color one given species to show ...
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Adding ellipses to different treatments in a PCA plot in R? (treatments are different columns)

I'm rather new to R and have been trying to analyze some of my proteomic data with it. In particular, I'm trying to make a PCA plot so that I can see some of the similarities/differences between my ...
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Dimensionality reduction of 2D array and plotting

I have a 60x2000 sized 2D Float array. I need to visualize it in 2D Plot. First the dimensionality should be reduced to 60x2, so that it can be visualized. I want to use a from-scratch implementation, ...
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What package is Scatter_Density from [closed]

I want to apply the Scatter_Density function so I can do PCA with Density Plots per Component
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pca.fit.transform or pca.transform on test data for Random Forest classification

I am carrying out a PCA analysis to do a feature reduction process before going into a Random Forest classification. For the PCA reduction I use: X_train = pca.fit.transform(x_train) After fitting ...
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Adding 95% condifence ellipses to PCA in python

I have peformed a PCA of my experimental data, however i would like to add 95% confidence ellipses to the plot, one for each set of points. Could you help me? This is the code I developed for the PCA. ...
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How to label specific data points on a PCA plot in r using ggplot

enter image description here I want to pick out 5 specific IDs and add labels to them so I can see where they are located on the PCA plot. I have used library(tidyverse. thank you
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