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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 ...

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30 views

Different result of PCA using python's sklearn and matlab's pca

I generate the same matrix in matlab and python: 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 Then I apply ...
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19 views

Computing eigen values and eigen vectors using PCACompute2

Im using the following code to compute eigen vectors together with eigen values. mean, eigenvectors, eigenvalues = cv2.PCACompute2(data_pts, mean) but why am i getting the following error? ...
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1answer
33 views

Single value decomposition(SVD) issue on 3D data (Python)

I have a trajectory which contains several frames of some 3D data, which looks like the following (I am posting the whole frame for the sake of reproducibilty of my problem): data1= [[ 89.29, 57....
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18 views

I have PCA matlab testing image recognition failed

I'm working on PCA image recognition about image recognition, my code run well when testing with 1 image. When I tried to make a testing with multiple images (I tried 3 images in one folder as ...
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22 views

Only want score and latent from pca in Matlab to save memory

Is there a way to assign the coefficient variable NULL when running PCA? I'm only interested in the score and latent values but it's too big of a file to just run [coeff, score, latent] = pca(myData);...
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4 views

Transition between PCA and factor analysis Eviews

I have 8 financial variables that vary across sectors (see attached file). In total I have 30 observations. I want to run a PCA analysis in order two scores (one score for profitability and the other ...
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23 views

testing PCA with multiple images

please help me :( Codes down here are image recognition about testing with one image, the question is how to make testing with multiple images from this code. I tried make a looping from this code, ...
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1answer
19 views

Understanding ``components_`` of PCA (sklearn)?

Might someone explain me the variable components_ of PCA(sklearn). The official URL of sklearn (http://scikit-learn.org/stable/modules/generated/sklearn.decomposition.PCA.html) does confuse me. So I ...
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17 views

Is it possible to run a principal component analysis if I have eight variables that vary across time?

So, I understood that my question was not well-written. So, I am going to try again. I understood from videos and Websites that PCA is normally applied for cross-sectional data. However, some people ...
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20 views

python-3: How to get contribution of each parameter in PCA (sklearn)?

I would like to compute the contribution percentage of each original feature to PCA-values. The question is exactly as Principal Components Analysis - how to get the contribution (%) of each ...
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1answer
24 views

Issue with the results of PCA component values

I am performing PCA on a dataset of (28 features + 1 class label) and 11M rows (samples) using the following simple code: from sklearn.decomposition import PCA import pandas as pd df = pd.read_csv('...
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7 views

Can we apply PCA to ANN

Can we apply Principal Component Analysis feature extraction technique to Artificial Neural Network machine learning algorithm? I have applied PCA to all other machine learning algorithm. But here ...
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1answer
36 views

PCA doesn't reduce the dimensionality of my data

I would like to apply PCA on heatmaps of 18 dimensions. dim(heatmaps)=(224,224,18) Since PCA takes only data of dim <= 2. I reshape my heatmaps as follow : heatmaps=heatmaps.reshape(-1,18) ...
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23 views

opencv how to reduce image sift descriptor dimension to speed up image retrival

This is a image retrival example, get image sift descritprs which is n rows 128 cols, then call flann function to match, I want to speed it up, so I am using PCA to reduce vector dimension such as 64 ...
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2answers
26 views

using dimension reduction before real data classification

I have a dataset containing 13 features and a column which represents the class. I want to do a binary classification based on the features, but I am using a method which can work only with 2 ...
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0answers
23 views

PCA, prcomp() function, how to pick the most important variables? [duplicate]

I am trying to use PCA to reduce the dimension of my dataset with 100 dimensions (variables). The function procomp() tells that 8 components explain around 98% variance in my dataset. So using PCA I ...
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1answer
34 views

What is the semantic relationship expected between word vectors which are scalar multiples of each other in word2vec?

Let's say you have a word vector for the word queen. Some of its scalar multiples would be x = queen + queen , y = queen + queen + queen and n * queen for any real value of n ( so we're also ...
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2answers
33 views

import renders statement throws “No such module” error

I am trying to run PCA on my dataset. I came across a tutorial by Ritchie Ng: https://www.ritchieng.com/machine-learning-project-customer-segments/ and i am trying to recreate it on my dataset. ...
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36 views

How to do PCA with Spark Streaming Dataframe

Just curious to know, how can we run a Principal Component Analysis on streaming data in distributed mode? If we can, is it mathematically valid enough? Have anyone done that before? Can you guys ...
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20 views

rank based on principal component score

I have a dataset for IPL cricket tournament from 2012, I am performing principal component analysis on it. I need to rank players using principal component scores. Please help. I am attaching the ...
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0answers
24 views

Incremental Pca large dataset

I have a large dataset saved as (.csv). samples, features = 20000, 4000 here is my code, import numpy from sklearn.decomposition import PCA X = numpy.loadtxt(open("D:\\pycharm\\correct.csv", "rb"), ...
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15 views

use correlation matrix in robust PCA functions R

I want to perform robust principal component analysis (PCA) on the correlation matrix. Namely, rrcov::PcaHubert. I know that if I give to the function cor=TRUE, rrcov:CovMcd calculates the robust ...
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1answer
46 views

How to retrieve name of features that are chosen by PCA?

I'm trying to run PCA in R for dimension reduction. As a result of this procedure I choose 25 out of 2000 features. but I cannot figure out how to map these selected features to the ones of the ...
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1answer
14 views

Reverse generation of RGB PCA image not working

Shakira.jpg I am trying to compress the above image but the output that I am getting is an improper image. I think I am doing the PCA steps correctly, but something is going wrong at the final step. ...
1
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1answer
63 views

Why does performance suffer when fitting a Random Forest model after reducing with PCA?

This question has to do with comparing speed between a Random Forest Classifier model on a full set of features vs a Random Forest model on a reduced number of components after doing PCA. I'm using ...
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14 views

kernel PCA in R - error: cannot allocate vector of size 1.1 Gb [duplicate]

I'm trying to perform kernel PCA in R using the function kpca from the kernlab package. However, it seems that my data is too big to be used for this function. This is the kernel PCA command I'm ...
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14 views

Dimension reduction by identifying important Variables

I have a np.array with 400 entries, each containing the values of a spectrum with 1000 points. I want to identify the n most interesting indices of the spectrum and return them. So I can visualize ...
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23 views

Computing eigenvectors in feature space

Im curious how to compute the eigenvectors of the covariance matrix in feature space without evaluating the feature map. Kernel PCA implicitly computes the projection of each point onto the ...
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1answer
17 views

Getting one dataframe by mutiliplying columns of one dataframe with rows of another dataframe

I have two dataframes, of shape m*5 and 5*n. The column names of the 1st dataframe with 5 columns is same as the index of the 2nd dataframe with 5 rows. I want to multiply each element of each row in ...
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29 views

PCA on mixed data

I know that the the Prince package of python allows to reduce dimensions of a multidimensional database. PCA : for numerical data MCA : for categorical data What about mixed data ? I know that the ...
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0answers
26 views

Find contribution of various features/input variables to the variance of the dependent variable / Attribute variance of dependent variable to features

I am working on this problem where I have 20 odd features (input variables) and two dependent variables. The objective is to find the variance structure of one of the dependent variables. More ...
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1answer
24 views

Can I overlay the coordinates of variables of one PCA over the coordinates of individuals from a second PCA and still interprete the results?

I do have two sets of data: Abundance data and environmental data and need to "link" them or "overlay" them in a PCA: I want to conduct a PCA in R which gives me the individuals Ciliate species as ...
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1answer
52 views

change labels in a plot in R

I am trying to add a different label to my points in a cca plot. Here it is a reproducible example: ## load vegan require("vegan") ## load the Dune data data(dune, dune.env) ## PCA of the Dune data ...
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49 views

How to conduct PCA on a table with abundance data BUT overlay it with vectors of environmental parameters of the sites in R?

[Fig 4 below is what I would need as outcome, the other 2 figures show what I get from my data: PCA on environmental data or on the abundance data No duplication ofR - how to make PCA biplot more ...
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0answers
17 views

Implementing a legend in a scatterplot with clusters

good day, I have a visualization of a scatter plot displaying clusters and their centers. I would like to create a legend which will make it easier to identify the clusters according to their color. ...
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0answers
27 views

How can I output the feature name along with the Principle component (PCA)?

I have a folder of 9 csv files of (features x Malware samples), each file for a different class of the 9 Malware families and am trying to obtain the Principle Components of each class. You can get ...
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34 views

Principal component analysis for detecting disease rate [migrated]

I have a disease dataset, and I need to do PCA for this dataset. disease_rate is the dependent variable and rest independant's. data <- read.csv("H:/uni/MS_DS/disease.csv") data > data ...
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9 views

PC2 of PCA by scikit-learn is unexpected

I simplified my case. from sklearn.preprocessing import StandardScaler from sklearn.decomposition import PCA import pandas as pd data = pd.DataFrame([ [1., 1., 1.,], [1., 1., 1.,], [-1.,...
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36 views

Splitting a PCA plot by groups - R or Python

I found this plot in the internet Which is mainly splitting the PCA plot by groups. Do you know if there is a package in R that can do some thing similar?
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1answer
36 views

Reduce range of function for functional PCA in R - Functional Data Analysis

I have discrete measurements of river flow spanning 22 years. As river flow is naturally continuous, I have attempted to fit a function to the data. library(FDA) set.seed(1) ### 3 years of flow ...
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0answers
14 views

How to rank call centre agent based on features?

I have a dataset for call centre employees having several features like:- 1)EXPERIENCE_IN_DAYs 2)Total_DEVICES 3)Total_Activities 4)Average_l1_support_time_peractivity_sec 5)...
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1answer
25 views

Cloud labels affecting % testing accuracy?

I have 96 features and the labels are represented by 1 and -1 for inputting to a deep learning model. 1- PCA Here the 3 axis represent the 3 first principal components. The blue cloud represents the ...
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2answers
176 views

How to programmatically determine the column indices of principal components using FactoMineR package?

Given a data frame containing mixed variables (i.e. both categorical and continuous) like, digits = 0:9 # set seed for reproducibility set.seed(17) # function to create random string ...
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72 views

Perform PCA on Pandas DataFrame

I am trying to perform PCA on this dataframe. This is all my regression code: # Create word matrix bow = df.Review2.str.split().apply(pd.Series.value_counts) rating = df['Rating'] df_rating = pd....
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0answers
21 views

how to build a model for 1 dimension data (data after pca/zca process) in keras?

I'm trying to make a binary classification model for color images, which contains to classes : a.intact b. damaged I build a model like below: model = Sequential() model.add(Conv2D(32, (3, 3), ...
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1answer
36 views

Plotting multidimensional data on a graph

I have a data which has 1700 rows, each with 9 features of houses and an array holding the prices corresponding to those features. I have built a linear regression model on this data, but I would like ...
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7 views

Scores, Loadings: intuitive definition?

Learning about PCA and PLSR. Because I'm lacking a proper algebra/stats background, even basic notions as scores and loadings have always eluded me. Now I'm trying to catch up and I just ...
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6 views

PCA Opencv - Get multiple PCA Configs from same PCA Object

I am reducing the feature space dimensionality for a classification problem using PCA. A part of the work is related to finding an PCA Configuration (i.e. the number of principal components) by doing ...
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1answer
37 views

How do I extract summary of PCA as a dataframe in R using Prcomp?

res.pca = prcomp(y, scale = TRUE) summ=summary(res.pca) summ Gives me the output Desired Output I want to change this Summary in to a Data Frame, I've Tried to use the do.call(cbind, lapply(res.pca,...
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1answer
24 views

sklearn's PCA inversion, dimension error

Trying to understand the sklearn.decomposition.PCA API and it's giving me a hard time. I divided my data (40features x 10 samples) into training (39 samples) and testing subsets (1 sample). I ...