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 ...

-2
votes
0answers
13 views

How to visualise 7 PCA in python [on hold]

I want to visualize 7 PCA with python Ive written pca = PCA(n_components = 7) pca.fit(XX) X_pca = pca.transform(XX) principalDf = pd.DataFrame(data = X_pca, columns = ['pc1','pc2','pc3','pc4','pc5'...
0
votes
0answers
5 views

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.
0
votes
1answer
17 views

Convert a “loadings” object to a dataframe (R)

I am trying to convert an object of type "loadings" to a dataframe in R. However, my attempts to coerce it via as_tibble() or as.data.frame() have not worked. Here is the code: iris_pca <- prcomp(...
1
vote
1answer
28 views

How to choose the number of components PCA scikitliear

I'm trying to decompse my columns using PCA . I'm finding some difficulties about how to choose my n_components of the function PCA using scikit learn in python. I did this sc = StandardScaler() Z ...
0
votes
0answers
15 views

Nipals and prcomp differences and data size relationship [on hold]

I'm pretty new in R and data analysis and I found a strange behaviour which I wanted to discuss with you. I had a 486 observation of 5000+ variables and I want to cluster them with Mclust. Each value ...
0
votes
1answer
19 views

Cannot cast array data from dtype('float64') to dtype('int64') according to the rule 'safe' ! astype function between int and float

I want to plot x,y with PCA but i get this problem of casting, despite my list is int and (y,x) are float : csv = np.genfromtxt ('main_contentieux_IPLSCRS_dataset.csv', delimiter=";") ...
-1
votes
0answers
30 views

IndexError: index 4 is out of bounds for axis 1 with size 4

csv = np.genfromtxt ('main_contentieux_IPLSCRS_FiltredByVariable.csv', delimiter=",") y = csv[:,0] x = csv[:,1:] fig = plt.figure(1, figsize=(18, 16)) plt.clf() ax = Axes3D(...
0
votes
0answers
30 views

Small problem of legend color in PCA, is it a bug or my script miswriting?

I ran a PCA and customized it via ggplot (on DESeq2 RNAseq data). Everything looks well excepted the legend that appears all black for the 2 genotypes (see the Genotype legend on right of the picture) ...
0
votes
0answers
26 views

Scaling data after CCA or PCA [on hold]

I was wondering if it's a good practice to scale data that has been transformed by PCA or CCA to remove negative values if present before training. I have read sklearn documentation and it only ...
0
votes
0answers
56 views

Unable to impute missing values in my PCA

I have a character matrix for some different plant species, in which most species are missing data for at least a few characters. I want to do a principal components analysis, so I tried to impute the ...
0
votes
0answers
16 views

How can I get a matrix table from rasterPCA in r?

Helloo everybody.. I am performing rasterPCA with 5 variable using R. Now, I would like to get a matrix table from rasterPCA analysis so that I can evaluate how much each variable is influencing every ...
-2
votes
1answer
33 views

PCA results on imbalanced data with duplicates

I am using sklearn IPCA decomposition and surprised that if I delete duplicates from my dataset, the result differs from the "unclean" one. What is the reason? As I think, the variance is the same.
1
vote
0answers
23 views

Is there any library with kernel pca implementation on spark or hadoop? [closed]

I'm trying to run some dimensionality reduction techniques, such as PCA, SVD and so on, in a distributed way. But, unfortunately, I cannot found a KPCA implementation (on Spark or Hadoop). Is there ...
0
votes
0answers
44 views

How to change 2D array into 1D array in Python

Getting an error message, Expected 2D array, got 1D array instead: array=[0.00127552 0.00286695 0.00135289 ... 0.00611554 0.02416051 0.00977264]. Reshape your data either using array.reshape(-...
0
votes
1answer
53 views

Error trying to apply algorithms to data set in Python, using SKlearn [closed]

Trying to run my data set through PCA using SKlearn for a machin learning assingment. Not sure what i'm doing wrong? https://imgur.com/a/NQIGCJU edit: import numpy as np import matplotlib.pyplot ...
0
votes
0answers
14 views

How to select components instead of projecting them?

I have, say, 50 vectors that are reduced by PCA(n_components=.99) to 5 (i.e., 99% of variance is explained by 5 principal components). The standard next step is to transform() (i.e., project) my 50 ...
0
votes
0answers
11 views

Py4JJava wrong columns error when calling PCA of pyspark.ml.feature

I am trying to visualize word2vec words using pyspark's PCA function, but I'm getting an unhelpful error message. Saying column features are of the wrong type, but they aren't. (Full message below) ...
1
vote
2answers
38 views

Keep csv feature labels for LDA pca

I am trying to use the 2000 topics' top 20 frequency data at https://github.com/wwbp/facebook_topics/tree/master/csv I would like to perform randomizedPCA on the data. From the documentation, X needs ...
0
votes
1answer
27 views

Low PCA loadings (especially on PC1 and most others)

I have a set of 100 variables and aim to reduce my data dimension for further subsequent analyses. There are about 300 observations. Upon prcomp() in R (with retx= TRUE), my PC1's loadings (abs) are ...
1
vote
1answer
30 views

Explained variance calculation

My questions are specific to https://scikit-learn.org/stable/modules/generated/sklearn.decomposition.PCA.html#sklearn.decomposition.PCA. I don't understand why you square eigenvalues https://github....
0
votes
0answers
26 views

Right dimension when computing pca on a set of images

I have a set of images (N around 200) where each image is formed by a 148x149 matrix, so I reshape each image to a 1-D vector 148*149 size. So I have a matrix X = [148*149 200], where each column ...
0
votes
0answers
47 views

PCA in large (p>>n) big data sets in R

I have a data set of n = 100,000 observations by p = 2 millions variables. I cannot load all the data at once in the memory and the covariance matrix would not fit either (2 millions x 2 millions). Is ...
1
vote
0answers
21 views

Adding arrows to pairs plot

I am doing principal component analysis. I got the pairs plot of PC components. However, I want to visualize all the plots. PC1 vs PC2, PC2 vs PC3, etc. I got 8 components. Is there a way I can add ...
1
vote
1answer
9 views

sklearn pipeline with PCA on feature subset using FunctionTransformer

Consider the task of chaining a PCA and regression, where PCA performs dimensionality reduction and regression does the prediction. Example taken from the sklearn documentation: import numpy as np ...
0
votes
0answers
11 views

R error Error in La.svd(x, nu, nv) : BLAS/LAPACK routine 'DLASCL' gave error code -4

I have a data for 29065 obs and 35636 variables I want to do pca with this data, but the error comes out like this. pca<-prcomp(data[,-1]) #first col is rownames La.svd(x, nu, nv) : BLAS/LAPACK ...
0
votes
0answers
28 views

Interpreting and using principal components of word embeddings

Imagine you have a set of semantically related words (e.g. restaurant, food, dish, waiter), along with a few relatively unrelated words (e.g. sad, angry, iphone). How would you go about finding these "...
-2
votes
1answer
47 views

What happens after creating PCA?

What happens after I create a dimensionality reduction algorithm (PCA) that has produced a matrix W? How do I now use it to predict real time data? Do I need to create a User interface or what? If ...
1
vote
0answers
18 views

sas clustering - how do I profile and interpret my clusters?

I have 77 variables and 27,000 observations. My goal is to find meaningful clusters out of it. I am finding it challenging to interpret the clusters!! What I tried so far is, I performed PCA (using ...
1
vote
1answer
26 views

After doing PCA decomposition, all the classifiers give me the exact same accuracy

I am running some machine learning code and part of the code looks like this: classifiers = [XGBClassifier(), DecisionTreeClassifier(max_depth=5), RandomForestClassifier(max_depth=5, n_estimators=10, ...
2
votes
1answer
55 views

Why are the eigenvalues of eig() sorted in ascending order?

I'm trying to find eigenvalues of a matrix with eig. I define the matrix with example data: A = magic(5) A = 17 24 1 8 15 23 5 7 14 16 4 6 13 20 22 10 ...
0
votes
1answer
50 views

Error when using scikit-learn PCA.score()

I am using PCA (Principal Component Analysis) from sklearn library. The training sets that I am working with have the following shapes: X_train: (124, 13), y_train: (124, ). The test sets have the ...
0
votes
1answer
43 views

3D PCA plotting error: the leading minor of order 3 is not positive definite

I have been trying to troubleshoot a problem for the past couple of hours with no luck. I have found one error message on another post that is similar here : Plotting Ellipse3d in R Plotly with ...
0
votes
1answer
85 views

PCA analysis considering N-less relevant components

I am trying to learn the basics of PCA analysis in Python using scikit libraries (in particular sklearn.decomposition and sklearn.preprocessing). The goal is to import data from images into a matrix X ...
0
votes
0answers
12 views

How to Whiten my data before plugging it into PCA

I am applying PCA to some ECG features, that I extracted. I found some code and learned it from the Matlab website, to apply PCA. However, I would like to whiten my data before applying PCA to it. My ...
0
votes
0answers
10 views

python - How do I extract the id from an unsupervised text classification

So I have the following dataframe: id text 342 text sample 341 another text sample 343 ... And the following code: X = tfidf_vectorizer.fit_transform(df['text']).todense() pca = PCA(...
1
vote
1answer
43 views

PCA can't get color on scatterplot

I'm doing a mini project on my own. I'm trying this thing with PCA. After i have plotted my graph, I can't seem to get the color out. These are the steps below for my code. Before this i have scaled ...
0
votes
1answer
29 views

PCA for index construction. Problem with a sign

I am using R (RStudio) to construct an index/synthetic indicator to evaluate, say, commercial efficiency. I am using the PCA() command from factorMineR package, and using 7 distinct variables. I have ...
0
votes
0answers
31 views

Factor Analysis using R (In cor.smooth(R) : Matrix was not positive definite, smoothing was done)

I am doing factor analysis on a data set containing more than 100 variables using R, i.e. FA <- fa (r=co_fa_data, nfactors=20, rotate="varimax",fm = "minres") but it throws an error when I run ...
0
votes
1answer
36 views

How can I reverse the axis in a biplot

When I plot a PCA and then the corresponding biplot, the axis are not always in the same direction, just like in these pictures: These are the functions, I used: (pc <- prcomp(dat5, center=T, ...
0
votes
0answers
18 views

PCA for mixed data

I am performing analysis on a bunch of data of measurement readings. In the experiment, we have several factors which are of numerical and categorical. In order to find which of these are significant ...
-1
votes
0answers
24 views

PCA Dimension reduction for a Column Vector in MATLAB [duplicate]

I have a vector of size 8192x1 that I want to reduce to say 128x1. I am using MATLAB PCA code for that. What is wrong with this code? X = 8192x1 Now I call this PCA function in MATLAB below: % Find ...
0
votes
0answers
38 views

PCA and Hotelling's T2 in Python

I am trying to plot a Hotelling's T2 in Python and would like to plot like the one below in R. PCA and Hotelling's T^2 for confidence intervall in R And I saw a comment(link below) helping with ...
1
vote
0answers
39 views

what's so special about 80% threshold for PCA variance ratio?

Why is 80% of the PCA.explained_variance_ratio_ seem like a reasonable threshold? What can one say about the number of components required to explain 80% of the variance? According to the PCA ...
0
votes
0answers
33 views

when do the principle components of PCA form a basis for the dataset?

Suppose I do a PCA on a dataset and get k principles components that explains 100% of the total variance of the dataset. We can say any observation from the dataset can be reconstructed by the mean ...
0
votes
0answers
9 views

Does the data has to be centered if I use SVD to implement PCA?

I know that if I use covariance matrix, the data has to be centered. What about using SVD?
0
votes
1answer
50 views

Principal component analysis on a correlation matrix

Many functions can perform Principal Component Analysis (PCA) on raw data in R. By raw data I understand any data frame or matrix whose rows are indexed by observations and whose columns are ...
1
vote
0answers
20 views

Is it Necessary to De-Mean my Data before Applying PCA, or does pca(X) do that Automatically?

I am aware that a first step in performing PCA for dimensionality reduction is de-meaning the data. I have performed PCA after de-meaning manually with X=X-mean(X) and compared with plainly applying [...
0
votes
0answers
15 views

PCA with TSFRESH?

Recently I read about the benefits of Principal Component Analysis (PCA) to extract features. Does tsfresh use this technique already? If not, has someone used it with tsfresh (and if so, should it be ...
0
votes
0answers
20 views

Plot shape variables based on Principal Components Analyses R

I would like to visually show the shape changes represented by the principal components in a PCA analysis. Here is an example taken from a paper on leaf shape (Yoshioka et al. 2004) where the outline ...
0
votes
0answers
31 views

Different signs of Principal Components

I have implemented a PCA in python. I used MNIST-Data and have reduced the data to 2d. After that I used KNN to classify the data. The same I had repeated with Scikit. The result is, that I have with ...