2,734
questions

0
votes

3
answers

61
views

### What does `fit_transform` do in the context of Scikit Learn PCA?

I don't understand what fit_transform does compared to fit in the context of Scikit Learn and PCA.
https://scikit-learn.org/stable/modules/generated/sklearn.decomposition.PCA.html#
PCA takes some ...

0
votes

1
answer

21
views

### Prince column_correlations error: DataFrame is not callable

The code is basic and should function on google colab but I have an error.
import pandas as pd
import prince
# Example data
data = {
'Feature1': [1, 2, 3, 4, 5],
'Feature2': [5, 4, 3, 2, 1],
...

0
votes

0
answers

33
views

### Low variance in FAMD (Component Analysis) and theoretical questions about building the dataset

I'm working with a dataset of 350 plant species, their invasion status (native to the country, established or invasive) and 11 categorical traits of them (leaf shape or flower colour, for example). My ...

0
votes

0
answers

13
views

### Principal Component Analysis and Information Gain for feature selection

I am currently undergoing a project for credit risk assessments with a dataset with 24 features and over 1 million lines. I have performed all the necessary exploratory data analysis and pre-...

1
vote

1
answer

52
views

### Handling missing values using missMDA? [closed]

I am working on an SNP dataset for fish. The SNP data has a lot of NA values due to rare alleles in each population. I want to handle the NAs using the missMDA package. However, when I run my code, I ...

0
votes

0
answers

19
views

### I faced an error when I used PCA with LSTM model

I have a time series dataset with 20 classes, but they are imbalanced; when I tried a method like "RandomOverSampler", I got an error because of the 3D of our data so could you suggest a ...

0
votes

1
answer

39
views

### When to use PCA(n_components=0.95) and when to use PCA(n_components=2), what is the difference between them?

For the Principal Component Analysis (PCA) model training
when to pass variance as PCA(n_components=0.95) and when to use PCA(n_components=2) with pipeline having Standardscaler for standardizes the ...

0
votes

0
answers

23
views

### Factor Analysis with Multiple Imputation

I have a dataset with 49 Items of a questionnaire (ordinal; 0,1,2,3,4) with 5 diagnostic group of samples (n1: 50, n2: 25; n3:30, n4:23, n5:60). However, the dataset have missings like for 10-12 ...

2
votes

1
answer

93
views

### How to weight principal componets by their variance?

I'm following the paper New ECOSTRESS and MODIS Land Surface Temperature Data Reveal Fine-Scale Heat Vulnerability in Cities: A Case Study for Los Angeles County, California, and I quote:
In ...

0
votes

0
answers

21
views

### Supplementary qualitative variable labels in FactoMinR?

Does anyone know how to work the quali.sup labels on a biplot in FactoMinR / FactoExtra?
The manual says it is possible to specify these variables on the labels with label = "quali" but it ...

0
votes

0
answers

51
views

### Clustering multi-dimensional dataframe

I am trying to perform a cluster analysis to address the true nature of investment strategies using Python.
To do so, I performed some rolling regressions using different indices as regressors and ...

0
votes

0
answers

15
views

### In package `factoextra` PCA , in given varialbe , how to know which individual's contribution is high

In package factoextra Principle Component Analysis (PCA),facto_summarize can get variable or individual summary information . How can I get variable and individual summary in one step ?
I mean , want ...

0
votes

0
answers

34
views

### ggPlotly PCA hover row names

I would really appreciate some help solving this issue with ggplot/ggplotly in R
I'm trying to feed into ggplotly() a ggplot made with autoplot(), specifically, a PCA.
The goal I have is for plotly to ...

1
vote

1
answer

61
views

### Which PCA results are correct?

I aim to find which directions in my data have "vary greatly". To do that, I understand a method called PCA, which uses the eigenvectors of the covariant matrix to find them.
I used ...

0
votes

1
answer

45
views

### PCA in Python: Reproducing pca.fit_transform() results using pca.fit()?

I have a data frame called data_principal_components with dimensions (306x21154), so 306 observations and 21154 features. Using PCA, I want to project the data into 10 dimensions.
As far as I ...

0
votes

0
answers

40
views

### How come the PC1 loadings in my RDA are all zero?

I have a dataset of some 130 ponds that were sampled for species presence and environmental variables. I have tried to run an RDA (based on the Vegan package) to find which habitat variables have a ...

0
votes

1
answer

80
views

### Why do we need to standardize data before PCA?

I tried to understand what we should do before PCA: standartization (x-m)/s or normalization (scale into [0, 1] interval). In the sklearn tutorial they use standardization and show that PCA with ...

0
votes

0
answers

33
views

### Transformation of original data after PCA

Beginner here. I'm trying to calculate a state's infrastrucure index using different variables and I applied PCA.
At first I did a dot product of original data and the principal components.
pca = PCA(...

0
votes

0
answers

23
views

### PCA without data normalization performes better than after normalization, why?

I have this spotify dataset with around 100k records and 28 fetures mixed of numerical(descrete and continuous) and binary, some of the numerical variables have so many zero values.
I want to perform ...

0
votes

0
answers

14
views

### R: Set the point size of PCA supplementary variables according to their number in my dataset

I am using factoextra and FactoMineR to run a PCA.
p <- fviz_pca_ind(res.afdm, col.ind.sup = "blue", repel = TRUE, labelsize = 3, label="none", alpha.ind ="contrib")
p ...

0
votes

0
answers

65
views

### K-means in R: How to visualize clusters without using "fviz_cluster" function after preprocessing data using PCA

I am trying to write code in R that uses K-means clustering after preprocessing the data using PCA. I found the "fviz_cluster" function but it seems like the function uses the first two ...

0
votes

0
answers

45
views

### using PCA to filter outliers in MATLAB

A bit of a silly question (I suspect). I am using MATLAB to preprocess some bulk RNAseq data. I am calling PCA on my normalized counts just as an initial way to identify outliers I didn't ...

2
votes

1
answer

33
views

### Plotting an array with size n*512 to the PC components of another array with size n*256

I have an array a with size n*512, I first want to plot it using PCA.
Next, I have another array b with size n*256, I want to plot it on the PCA components obtained above...
How can I do it?

0
votes

0
answers

44
views

### Is it acceptable to apply Principal Component Analysis and K-means clustering to mixed numerical and dummy data?

I have a dataset with numerical (continuous and discrete) as well as categorical variables which I transformed into dummy (n-1) variables. I performed PCA to this data and then K-means clustering to ...

0
votes

1
answer

35
views

### Legend position in plotScores (Chemospec package)

I am working on infrared spectral data using the "Chemospec" package. I performed a PCA and now want to visualize the results, the function "plotScores" plots the PCA scores. I am ...

0
votes

0
answers

8
views

### calculating PCA for Raster

list.files("C:/Users/asus/Desktop/Temur/input/chelsea/Aggregated_chelsea/chelsa_aggregated/chelsa_aggregated", pattern="tif")
> bio <- raster::stack(paste("C:/Users/asus/...

0
votes

0
answers

32
views

### Applying PCA on a set of homogeneous transformation matrices

Let's say that I have a set of matrices which are in fact homogeneous transformation matrices coming from solvePnP applications. In other words, my dataset is given by a collection of 4x4 matrices.
My ...

1
vote

0
answers

79
views

### Understanding and Validating PLS Regression Coefficients

In this problem, the goal is to understand and validate the coefficients of a Partial Least Squares (PLS) regression model. The PLS regression equation is assumed to be in the form of y = b + b_1(X_1)...

0
votes

0
answers

33
views

### DESeq 2 error: Error in checkFullRank(modelMatrix) : the model matrix is not full rank

I'm trying account for two sources of variation when I did PCA in my data set. The two conditions look like this:
My table
My code:
data_matrix <-fread("/Users/claireweaver/Data/SRA/...

0
votes

0
answers

66
views

### Avoiding different shapes in PCA using fviz_pca_ind

I performed a PCA analysis using prcomp() function.
I`m trying the plot the PCA results using the function fviz_pca_ind() using the following code:
fviz_pca_ind(res_pca_nipals,
label = &...

1
vote

1
answer

33
views

### Vectors on "handmade" PCA don't match the output biplot

I used the R package PCAtools to generate a PCA of gene count metagenomic data. When visualizing the biplot using PCAtools, the loadings are "appropriately" sized for the data dispersion (I ...

0
votes

0
answers

72
views

### K-means Clustering problem on Whitewine Dataset

I'm currently grappling with clustering a dataset called Whitewine in R programming language and comparing the effectiveness of clustering before and after applying Principal Component Analysis (PCA). ...

0
votes

1
answer

65
views

### Troubleshooting factoextra (R)

My dataset has 25 columns, where cols 1-24 are numeric and have missing values and 25 is categorical (two factors, 'low' or 'high').
I am trying to show a PCA like this (image taken from here on sthda....

0
votes

0
answers

65
views

### How to assign colors and shape for variables in fviz_pca_biplot

I am plotting the PCA using FVIZ_PCA_BIPLOT. My (temp) database has 55 groups, 4250 observations and 19 variables. An example of my df is:
temp <- data.frame(ind = c(AZ34, B546, C234, AC765, B498, ...

0
votes

0
answers

41
views

### How to use model.predict after PCA transformation in Python?

how can I make predictions with my model after use pca transformation and after the model is already trained? I'm a beginner in this world so please let me know if that question doesn't make sense
...

1
vote

1
answer

64
views

### R PCA: Why are some points in a biplot larger than others?

Why are some points in a PCA biplot larger than others? Unfortunately, I couldn't find an explanation in the help documentation.
Example:
# Load required library
library(factoextra)
# Perform PCA ...

0
votes

1
answer

21
views

### Can you specify a rotation in h2o's PCA function?

I'm running PCA in h2o (R version) and was wondering whether it's possible to specify/apply a rotation (like oblimin or promax). I'm looking for the rotated loadings, and the reason I'm using h2o ...

0
votes

0
answers

118
views

### Covariance estimation using the Factor Model

The Factor Model, covariance estimation
I'm currently working on replicating the factor covariance matrix estimation process in Python. However, I've encountered some doubts about my implementation.
...

0
votes

1
answer

134
views

### How to change the colors on fviz_contrib to match clusters/groups in R?

I am trying to visualize PCA results, and I want to have a quadrant plot (fviz_pca_var) showing the groups visually and then a bar plot showing the actual values of the contribution (fviz_contrib)
...

1
vote

0
answers

60
views

### My Principal components plotted using sklearn seems a bit rotated by some degrees. What have I missed? [duplicate]

import numpy as np
import seaborn as sns
import matplotlib.pyplot as plt
from sklearn.decomposition import PCA
# generate synthetic data with a linear relationship
np.random.seed(0)
mean = [0, 0] # ...

0
votes

0
answers

32
views

### Can the PC1 results from a PCA test be multiplied to the corresponding variable and added together to create a new variable column?

I've been added to a group project and I can't follow the reasoning, and this is my first time working with PCA. For an example let's say the study is on how feral cats impact smaller mammals (rats, ...

0
votes

0
answers

34
views

### Correlation matrix shrinkage causes matrix multiplication error for monte carlo simulation

I have list of 10 stocks and a correlation 10x10 correlation matrix for these stocks. I have to reduce the size of this matrix to 3x3 and use it for Monte Carlo simulation to simulate possible ...

0
votes

0
answers

20
views

### Searching for some individuals in a biplot in R

I'm working with biplot function to figure out some assumptions about certain individuals, the problem is that I have plenty of individuals and I can't find those I want to study. I've searched a lot ...

0
votes

0
answers

44
views

### TypeError: 'int' object is not iterable" and PCA Assertion Error in Python Clustering Function

I'm working on a Python function (cluster_articles) to perform document clustering and return a dictionary of results. However, I'm encountering the following test errors:
TypeError: 'int' object is ...

0
votes

0
answers

47
views

### PCA with BioClim Rasters - R language

I am trying to run a PCA with the BioClim variable rasters in R. raster_pca() was the old function for this, so I am looking for its replacement.
I don't want to turn it into a data frame because I ...

0
votes

0
answers

15
views

### Error code of error in force of length of variables in plot3d

I am trying to create a plot to compare the community composition of 3 sites. I have the code but it keepsreturning the same error of Error in force || length(c(xlim, ylim, zlim)) :
'length = 30' in ...

1
vote

1
answer

113
views

### Customise colour and shape of points in PCA using different qualitative properties

I'm quite new to R - I want to colour code my points according to qualitative variable called "Fraction" which I have achieved, however, simultaneously I also want to change the shape of the ...

1
vote

1
answer

269
views

### How to change the color of the border line of the circles at fviz_pca_biplot in R?

I am conducting principal component analysis (PCA) on my data.
This is the last part of the script where I am building the PCA biplot:
biplot <- fviz_pca_biplot(pca_result,
# ...

0
votes

0
answers

29
views

### PCA in Matlab with built-in function [duplicate]

I have a training data X_centered of size 120 x 1024, such that each row vector is a flattened 32 x 32 gray - scale image.
I'm trying to preform PCA with some K components that can be varied from 1 to ...

0
votes

0
answers

41
views

### Visualizing LFW Dataset with PCA: Plotting Face Images Instead of Points for Enhanced Pattern Analysis

I'm performing a PCA in the LFW dataset, now I want to plot the PCA scores of the first two components but instead of plotting just points I want to plot the faces images to analyze and visualize ...