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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TypeError: PCA() got an unexpected keyword argument 'n_components'

Hi I was trying to implement the PCA(), but I'm getting an error, ' TypeError: PCA() got an unexpected keyword argument 'n_components'. from sklearn.decomposition import PCA #Principal component ...
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An NGO dataset where I need to Categorize countries using PCA and Kmeans Python

I have an NGO dataset where I need to cluster countries using some socio-economic and health factors that determine the overall development of the country. The task is to perform PCA on the dataset in ...
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How to select the records depend on PCs to reduce dimensionality in Rapidminer?

I am a new in Rapidminer, so i have a huge dataset and i use Principle component analysis to reduce dimensionality, the problem is when i get the PCs i do not know how to select the records depend on ...
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Replace old pc with old PCA card with newest PC [on hold]

I have one old pc on the cnc machine with 2 old PCA card inside. I think that now is problem with some of them. I cannot find new one to replace it. So I am thinking to use new PC Desktop but question ...
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Computing Eigen vectors with a data frame containing “Nan” [duplicate]

I have the data like this a b c d a 1.32549 0.184661 NaN 0.0896751 b 0.184661 1.29026 NaN 0.156959 c NaN NaN NaN NaN d 0....
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Why is my princomp plot empty despite returning no errors?

Princomp has been used to summarise a large data set, the summary, screeplot and loadings are all functional and all of the code has been repeated from an earlier pca. The code for the plot is also ...
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Running PCA on a point cloud after ransac gives strange results

I have the following dataset http://www.mediafire.com/file/f8tz1zbpxvyvko7/Waltersdorf_F3.csv/file The original dataset looks like that: enter image description here I try to run ransac on it using ...
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Cluster Size is too big after BIRCH clustering

I have a data of 2,4million row and about 56 variables. I was doing sampling of 10000 data and do PCA into 10 dimensions Then I use BIRCH clustering as k-means and hierarchical were showing bad ...
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Rotated component matrix in Python

I have a 10 components and would like to know the loading of each component (from 56 variables used) as I use pca.components_ and compare the highest correlation score with all 56 variables, there ...
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Difference between PCA , ICA and Autoencoder

I am working on PCA, ICA, and Autoencoder. I am trying to figure out the intuitive difference between these 3 ideas. PCA tries to find the direction (linear) by looking at the maximum variance. ICA ...
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Fitting PCA using the model.matrix function in R

So I am working with a data-set involving data regarding the passengers on the Titanic which you may find here. So here I am using the train data provided. I would like to create a model matrix of ...
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performing correspondence analysis on a dataset?

I have the dataset below to perform complete analysis on it including Principal components analysis, correspondence analysis, Multiple correspondence analysis. https://archive.ics.uci.edu/ml/datasets/...
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How does our Prediction model handle new incoming Unseen-data which is not scaled , not one hot encoded nor PCA has not been done on it? [closed]

Let's say I have a training set with a dataframe.shape of (1000,500) with numeric, nominal and ordinal variables. Now I scale, One-Hot-Encode and do PCA on the data. I find that the first 6 components ...
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How to color PCA results according to a factor?

I am working with a dataset of multiple numerical variables (here called Env_) of which I have created a PCA. All these variables represent environmental factors. I further have a number of ...
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13 views

R:Difference between using prcomp(,center=T,scale=T) and scale data then using prcomp()

I'm doing PCA on a gene matrix, which is generated by, data.matrix <- matrix(nrow=1000,ncol=10) colnames(data.matrix) <- c(paste("wt",1:5,seq=""),paste("ko",1:5,seq="")) rownames(data.matrix) &...
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Calculating Distance to Nearest Neighbors of Each Classes on T-SNE space(2 or 3 D)

In the link below; Kaggle winning solution with XGBoost used distances to nearest neighbors in T-SNE space(3 dimensions). How can we calculate the euclidean or other metric distance to nearest ...
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How samples should be included in principal component analysis

I intend to use PCA to identify the sources of contaminants in environmental samples. We have data from both environmental samples and suspected sources. We want to use PCA to check which sources have ...
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How to replace all character variables to numeric in R? [duplicate]

dbt <- structure(list(`glimepiride-pioglitazone` = c("No", "No", "No","No", "No", "No", "No", "No", "No", "No"), `metformin-rosiglitazone` = c("No","No", "No", "No", "No", "No", "No", "No", "No",...
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Type error: It is not possible to perform reduce with flexible type

I am applying pca for my dataset (all of them are x because I will use Kmeans afterwards). I am using Jupyter notebook for this. I tried to fix an issue I have with the visualisation of the ...
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20 views

Covariance of large matrix

I have a large Matrix (70000x784) that I want to compute the covariance Matrix (70000x70000) of. I tried using numpy.cov(), but I get a memory error because there are too many observations (and yes I ...
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Label the plot legend with the classes in that column [duplicate]

I can't label the plot, which shows the 1,2,3 attributes in the c=df["hypothyroid"] column. I tried legend(labels=[1,2,3]) and even gca().legend(labels=1,2,3]). print("Before PCA: ", df.shape) seed =...
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PC1 and PC2 values: original values

I just ran PC analysis in r on the iris data set. This has been discussed several times in the past but I am little confused on the output. I used prcomp and this is output for the loadings: ...
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How to use PCA (Principal component analysis) with SVM for classification in Mathlab?

The input data that I have is a matrix X (490*11) , where the rows of X correspond to observations and the 11 columns to correspond (predictors or variables). I need to apply the PCA on this matrix ...
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Singular values of a dataframe using R

I am trying to get the Singular values of a dataframe using R. The prcomp method displays the Standard Deviation and svd$d displays a vector. The values displayed are correct. But, I am not sure which ...
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How do I keep id variable in pca analysis in r after running factor loadings?

I am trying to run social capital data through a principal components analysis (pca) in r by using the following dataset: https://aese.psu.edu/nercrd/community/social-capital-resources/social-capital-...
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Set label font with Italic of the gene name only in PCA plot in r

library(factoextra) library(FactoMineR) dt <- data.frame(GM = c(1,1,0,1,0,1,0,1,1,1), CZ = c(0,0,1,1,1,0,0,1,1,1), efa1 = c(1,1,1,0,0,0,1,1,1,0), ...
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Do PCA transform/project functions from sklearn/opencv libraries retain the order of the original data set?

I was wondering if the transform() from sklearn.decomposition.PCA or project() from C++ opencv rearrange the results from the original data. pca.py: import pandas as pd from sklearn.decomposition ...
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36 views

Python singular value decomposition on images for noise filtering

I am trying to create a PCA script that goes through a set of images and decomposes them into PC's that are sorted by power/weight. As far as I understand you want to do M = U*S*V.T which I have done ...
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15 views

Inaccurate results while reconstructing covariance matrix from np.random.multivariate_normal

I have a need to simulate data from the 2-dimensional normal distribution along with a correlation parameter. To do this I have used np.random.multivariate_normal with a covariance matrix that has my ...
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supervised PCA in R

I am looking for supervised PCA to reduce dimensionality of my data. For this case, first, I need to fit my supervised PCA to trainining data, then I transform my test data with pca that is previously ...
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pca color augmentation python implementation

I'm trying to implement PCA color augmentation from AlexNet paper (2012) but following code doesn't seem to work. # original image is 400x600x3 of dtype uint8 scaled_img = np.reshape(img,(img.shape[...
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When running PCA on my dataframe, my computer bluescreens

I'm working on a data science school project for determining motions of certain dogs. I have a dataframe of extracted attributes (79 in total), plus a label that I'm trying to guess using a machine ...
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26 views

Why PCA works well while the total variance retained is small?

I'm learning machine learning by looking through other people's kernel on kaggle, specifically this Mushroom Classification kernel. The author first applyed PCA to the transformed indicator matrix. He ...
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PCA Implementation on a Convolutional Neural Network

After applying PCA on MNIST data, I identified CNN model and layers. After fitting CNN model (X_train_PCA, Y_train) I end up with dimension problem at evaluation phase. Here is the message "ValueError:...
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59 views

Add regression line and ellipse to a 3D scatter plot in Python

I have a 3D scatter plot that displays a dataframe named data. It tipicaly generates a shape that could be fit with a single line or ellipse. from mpl_toolkits.mplot3d import Axes3D import matplotlib....
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PCA loading to data.frame [duplicate]

I have a dataframe: TreesPopulation = data.frame(Trees=c('oak','birch','pine','maple'),North=c(2,5,8,3),South=c(5,4,5,2)) My question is how can I calculate the PCA loading (PC1 and PC2 are enough) ...
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ActivityNet Dataset PCA Weights

ActivityNet DataSet offers PCA weights at last.below is the link http://activity-net.org/challenges/2016/download.html But the problem is that there's no specified way on how to extract to reduce ...
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Conflicting Results When Manually Calculating First Principal Component using prcomp

I am calculating the PCA for the iris dataset as follows: data(iris) ir.pca <- prcomp(iris[, 1:4], center = TRUE, scale. = TRUE) This is the first row of the iris dataset: head(iris, 1) #Sepal....
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How important are the rows vs columns in PCA?

So i have a dataset with pictures, where each column consist of a vector that can be reshaped into a 32x32 picture. The specific dimensions of my dataset is the following 1024 x 20000. Meaning 20000 ...
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Preparing image data for PCA

Hi I tried to apply PCA on a folder with many pics inside (.jpg). However, I stuck on converting it to the format that scikit-learn PCA accepts. It seems that PCA takes array data format. I read ...
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rownames do not show in pca ggbiplot

I wrote following codes in r, the code runs well, shows all points without name and arrows with names. The code read an excel file, and the structure of the file is that, all numbers starting from B2 ...
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68 views

R individual pca scores different than SAS and SPSS when scale is applied

I had previously posted this as a question to my original question regarding scaling but this was deemed inappropriate and deleted with a request to submit as a new question, so here we are! Myself ...
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Sign recognition using DFT and PCA

I'm creating trafic sign recognition system in C++ with OpenCV library. My current task is to recognize the properly found sign. I've been told that I should use Discrete Fourier Transform (DFT) in ...
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Anomaly Detection in Variables Through PCA and identifying the cause of Anomaly happened (Eg through:Hotelling T2)

PCA Anomaly detection and identifying which variable in the data frame is really contributing to the abnormal behavior in Principal component-1 at observation level.Example is shown in the link for ...
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Different order of eigenvalues computed with PCA and SVD

I really don't know why, when i computed the eigenvalues with PCA from my dataset i obtain a vector which have values in different order respect of SVD This is the result This is the code Thanks ...
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PCA or equivalent with mixed data [closed]

I have a mixed dataset of approximately 100.000 observations for seven different variables: three of them are quantitative (in fact, three components from a PCA that I performed previously to reduce a ...
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25 views

why zero mean in principal component analysis (PCA) dimensionality reduction method

I'm working on image retrieval in large datasets using VLAD method, then I needed to reduce dimensionality of features and i did it with PCA, when searched about PCA I understood that i should ...
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pca score/score_samples function throw ValueError when n_samples is less than n_features

When doing PCA on samples with n_samples The following codes will throw an error. n_samples is 5, error can be avoided by setting n_components<5. from sklearn.decomposition import PCA import ...
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130 views

scikit-learn pipelines: Normalising after PCA produces undesired random results

I am running a pipeline that normalises the inputs, runs PCA, normalises PCA factors before finally running a logistic regression. However, I am getting variable results on the confusion matrix I ...
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PCA with zero and high correlation in data

How would the eigen values look like when we apply PCA to a dataset with zero correlation between variables and when there is very high correlation between variables.