**0**

votes

**0**answers

4 views

### spark - MLlib: transform and manage categorical features

For big datasets with 2bil+ samples and approximately 100+ features per sample. Among these, 10% features you have are numerical/continuous variables and the rest of it are categorical variables ...

**0**

votes

**0**answers

11 views

### Joining individual factor scores to data frame in R is deleting many observations

I'm trying to join individual factors scores to my data frame in R from a PCA, using the psych and GPA rotation libraries and and using the following:
ParPCA<-cbind(ParPCA, Parp6$scores)
where ...

**0**

votes

**0**answers

12 views

### Factor-Volatility Model

So I'm reading Analysis of Financial Time Series and found a Volatility model for high dimensional processes. It uses Principal Components Analysis to reduce the dimension of the multivariate ...

**0**

votes

**0**answers

12 views

### How to unmask Caret package variable importance names

Using Caret package - after training a random forest model with PCA applied at preprocess stage, listing the variable importance with (varImp(model1) the variable names are masked with PCx - is there ...

**0**

votes

**2**answers

51 views

### What are the centroid of k-means clusters with PCA decomposition?

From a dataset in which I am using PCA and kmeans, I would like to know what are the central objects in each cluster.
What is the best way to describe these objects as iris from my original dataset ...

**0**

votes

**0**answers

17 views

### PCA trick with the covariance matrix

I am using vectors of 148000 components, and I need to reduce the dimensionality to 500 components to improve efficiency. I am using PCA with a covariance matrix but I'm getting bad results comparing ...

**0**

votes

**1**answer

20 views

### how to plot 2D “first principal component”

I have a 2D set of random data let's say :
m=[5,20]; % mean
sigma= [10,2;2,5]; % covariance matrix
points = mvnrnd(m,sigma,200); //generating random set
[coeff pc l] = pca(points);
how to use ...

**0**

votes

**1**answer

25 views

### Displaying PCA with different colors

I have this data:
Desc ALL1 ALL2 AML1 AML2
Gene1 -214 -342 87 -172
Gene2 -153 -200 -248 -122
Gene3 -58 41 262 38
Gene4 88 328 295 31
We have two types of ...

**2**

votes

**1**answer

40 views

### Could PCA be used to combine multiple rankings?

I have n (in my case just 9) different ranking of the same items. Now, I'm trying to find a combination using PCA (Principal Component Analysis), in order to improve the accuracy of my ranking. The ...

**1**

vote

**0**answers

53 views

### Speeding up the classification process - PCA combined with SVM?

I have a cyclic method running which collects a data set of 15.000 feature vectors with 30 dimensions (every 200ms). My current setup simply feeds all raw feature vectors to a SVM with RBF (Radial ...

**0**

votes

**0**answers

32 views

### Finding closest points in 3d space in R

I have this dataframe mydf with three eigenvectors from my PCA. I want to determine which rowname is close to one another based on three eigenvectors (columns e.1,e.2 and e.3). Mathematically, I could ...

**0**

votes

**0**answers

6 views

### Shellfish: PCA tool generating error

I am using this shellfish.py to perform PCA. However, I am getting this error shown below. Can someone please explain me the reason for this and way around this?
shellfish version 0.0.8
22:47:25 ...

**0**

votes

**1**answer

28 views

### How to extract centroids coordinates in variables scales from OMI analysis

I am using OMI analysis from ade4 package, which works fine. i get species centroid coordinates (sp1, sp2, sp3, sp4) on the 2 axes (axis1, axis2), and the variables coordinates (Var1, Var2, Var3), ...

**1**

vote

**2**answers

36 views

### Labeling the centroids of a PCoA based on betadisper() multivariate dispersions in R

I've used the function betadisper() in the vegan package to generate multivariate dispersions and plot those data in a PCoA. In this example I'll be looking at the difference between the sexes in a ...

**0**

votes

**0**answers

27 views

### Python: PCA + k-means not working

I have a set of abundances as a function of time for a list of molecules. To begin with I am starting with a small sample of 99 time steps and 20 molecules, but I will want to expand this much further ...

**1**

vote

**2**answers

48 views

### PCA Plots in ggplot2: Changing point colors and changing the color of frame/ellipse around points

I want to start by saying that I am a novice user of R and especially of this website, so if it is necessary that I clarify anything here, please let me know! I don't quite understand everything yet, ...

**0**

votes

**0**answers

9 views

### Why is PCA for facial recognition sensitive to light and pose?

I understand that these are two disadvantages of using eigen-faces for facial recognition, but why? Can someone give me a mathematical explanation of the cause of this?

**1**

vote

**1**answer

50 views

### Performing PCA on large sparse matrix by using sklearn

I am trying to apply PCA on huge sparse matrix, in the following link it says that randomizedPCA of sklearn can handle sparse matrix of scipy sparse format.
Apply PCA on very large sparse matrix
...

**0**

votes

**0**answers

6 views

### Emgu PCA not executing

I am trying to do PCA on FV set consisting 102 samples and having dimensions of 8192 each .
Matrix orig is 102 by 8192 in following code which is input matrix.
Matrix<float> avg = new ...

**0**

votes

**0**answers

19 views

### Display Fisherface after reducing dimensions using PCA in Matlab

I'm learning to implement the Fisherface algorithm using Matlab. I understand that to deal with the singularity issue of Sw, I can project Sb and Sw onto the PCA space of r dimensions, with r ≤ ...

**0**

votes

**0**answers

12 views

### K-Means benchmarking results for PCA reduced data

I am following the example given for k-means which benchmarks the performance for k-means with PCA.
However I've noticed that the code to print the benchmarks of PCA analysis uses the initial data ...

**0**

votes

**1**answer

31 views

### How to structure dataset to run a PCA?

basically my problem is that I want to run a PCA analysis, but my data is not structured properly. Hopefully this image will let you understand what I mean:
trial.one.two <- na.omit(trial.one.one)
...

**0**

votes

**2**answers

46 views

### Dimensions Reduction in Matlab using PCA

I have a matrix with 35 columns and I'm trying to reduce the dimension using PCA. I run PCA on my data:
[coeff,score,latent,tsquared,explained,mu] = pca(data);
explained =
99.9955
0.0022
...

**0**

votes

**1**answer

43 views

### Spark PCA top components

In the spark mllib documents for Dimensionality Reduction there is a section about PCA that describe how to use PCA in spark. The computePrincipalComponents method requires a parameter that determine ...

**1**

vote

**0**answers

30 views

### PCA applied to MFCC for feeding a GMM classifier (sklearn library)

I'm facing a (probably simple) problem where I have to reduce the dimensionality of my features vector using PCA. The main point of all of this is to create a classifier that predicts a sentence ...

**0**

votes

**1**answer

45 views

### Plotting PCA results including original data with scatter plot using Python

I have conducted PCA on iris data as an exercise. Here is my code:
#!/usr/bin/env python
# -*- coding: utf-8 -*-
import numpy as np
import matplotlib.pyplot as plt
from matplotlib import style
...

**3**

votes

**1**answer

65 views

### Principal Component Analysis with Eigen Library

I'm trying to compute the 2 major principal components from a dataset in C++ with Eigen.
The way I do it at the moment is to normalize the data between [0, 1] and then center the mean. After that I ...

**0**

votes

**1**answer

14 views

### sklearn PCA - Calculate % of variance retained for choosing k

I am using scikit learn PCA and trying to choose the minimum number of components that satisfies 1-(sum i 1 to k Sii)/(sum j 1 to n Sjj) <= 0.01 where S is the svd diagonal matrix, in order to have ...

**0**

votes

**0**answers

19 views

### Ho to compare 2 SVD and PCA algorithms?

I becnchmarking some SVD and PCA(via SVD) code, and some of the method use aproximate solutions.
So my questions are:
What are general tests, to test SVD and PCA(via SVD) code? for example some ...

**2**

votes

**1**answer

32 views

### Different type of ellipse in PCA analysis

What are the differences between ellipses computed when working with individual factor map in R with coord.ellipse (from FactoMineR package) and ordiellipse (from vegan package) ?
Below some ...

**1**

vote

**0**answers

35 views

### Face recognition using PCA on Matlab

I'm trying to classify a set of images using PCA on Matlab. The training set contains ~1800 images of 380 persons, each image with the person's unique label (ID). The testing set contains ~750 images ...

**3**

votes

**1**answer

23 views

### How to plot as PCA scatter with different color of clusters after K-means algorithm by using matlab?

I'm trying to build implementation code for k-means algorithm by using matlab. I'm learning and new to use matlab here. Somehow I built the implementation code for k-means algorithm by googling ...

**3**

votes

**2**answers

143 views

### Pyspark and PCA: How can I extract the eigenvectors of this PCA? How can I calculate how much variance they are explaining?

I am reducing the dimensionality of a Spark DataFrame with PCA model with pyspark (using the spark ml library) as follows:
pca = PCA(k=3, inputCol="features", outputCol="pca_features")
model = ...

**0**

votes

**0**answers

30 views

### Decomposing 3rd Order Tensor in Python

I have a tensor in the shape (n_samples, n_steps, n_features). I want to decompose this into a tensor of shape (n_samples, n_components).
I need a method of decomposition that has a .fit(...) so ...

**0**

votes

**0**answers

31 views

### PCA on huge (10 million+ features) datasets

I am looking to extract "principal components" from huge datasets (each data point has 10 million+ features). I have about 1000 such data points. PCA only requires the co-variance matrix, which would ...

**-2**

votes

**1**answer

33 views

### Difference between feature selection, clustering ,dimensionality reduction algorithm

Could someone indicate difference between feature selection and clustering and dimensionality reduction algorithms?
feature selection algorithms: allows to find the predominant variables either ...

**0**

votes

**1**answer

11 views

### Does data matrix passed into PCA function need to contain the response vector?

I have a training matrix of data (about 15 features and 500+ rows) and a result/response vector (500+ length) whose values correspond to the rows. Basically it's a matrix of android sensor data that ...

**0**

votes

**0**answers

5 views

### How to test two dimensional data by using one dimensional model

I use PCA to reduce the dimension of two dimension training data to one dimension, now I have new data, and I want to use this model to test this two dimensional data, what should I do, use PCA to ...

**-3**

votes

**0**answers

43 views

### On entry to SGESDD parameter number 12 had an illegal value

When I use scikit-learn to do PCA.
If the data type is np.float32 (import numpy as np).
I got this error On entry to SGESDD parameter number 12 had an illegal value.
When I change the data type to ...

**0**

votes

**0**answers

12 views

### PCAgrid (pcaPP package) does not predict correctly with scale option

I discovered a weird problem in the pcaPP package for robust PCA. When using the PCAgrid() function with a scale option, the positions of the points withing the PC-space cannot be predicted correctly ...

**0**

votes

**1**answer

31 views

### Don't understand the output of Principal Component Analysis (PCA) in Python

I did a PCA in Python on audio spectrograms and face the following problem: I have a matrix, where each row consists of flattened song features. After applying PCA it's clear to me, that the ...

**1**

vote

**0**answers

27 views

### PCA with prcomp gives unexpected results

I'm trying to understand what prcomp does in R, as it uses SVD under the hood. Here's a simple example using a unit matrix:
xdim <- 4
arr <- array(0, dim=c(xdim,xdim))
for(v in 1:xdim) { ...

**1**

vote

**1**answer

28 views

### Principal component analysis and feature reductions

I have a matrix composed of 35 features, I need to reduce those
feature because I think many variable are dependent. I undertsood PCA
could help me to do that, so using matlab, I calculated:
...

**4**

votes

**2**answers

236 views

### PCA in matlab selecting top n components

I want to select the top N=10,000 principal components from a matrix. After the pca is completed, MATLAB should return a pxp matrix, but it doesn't!
>> size(train_data)
ans =
400 ...

**1**

vote

**1**answer

29 views

### PCA on the targets with sklearn?

I am doing multiple target regression, so I want to predict several numbers simultaneously. The numbers are highly correlated, so I think predicting their PC's is a more sensible approach.
Using ...

**1**

vote

**1**answer

24 views

### Dimensionality reduction in exhaustive channel/feature selection

My data consist of 16channelsx128samplesx400trials. I wanna perform exhaustive channel selection in this dataset. Where should I apply PCA?
unsortedChannelIndices = [1:16]
sortedChannelIndices = [];
...

**1**

vote

**0**answers

98 views

### ggbiplots - PCA: colour and shape of points according to groups

I have modified the iris data to provide an example of what I would like to do. I add an extra column to the iris data as provided in the link below. This extra column has also some groups based on ...

**1**

vote

**1**answer

42 views

### What is meant by PCA preserving only large pairwise distances?

I am currently reading up on t-SNE visualization technique and it was mentioned that one of the drawback of using PCA for visualizing high dimension data is that it only preserves large pairwise ...

**0**

votes

**1**answer

24 views

### Using PCA to project onto a lower dimensional space in Octave

I have the following matrix of size 300 x 2, which contains min-max normalised data:
# Pre-Process data
scaled_acc = preprocess(mtx_accuracy);
# PCA on mtx_accuracy
[pcvars pcvecs] = ...

**0**

votes

**0**answers

14 views

### Matlab principal components regression

i'm trying to figure out how regression using pca works in Matlab...I have standardised my variables, performed pca on them, and then done a regression on the principal components, but what is not ...