In machine learning and statistics, dimensionality reduction or dimension reduction is the process of reducing the number of random variables under consideration, and can be divided into feature selection and feature extraction.

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How to get `skbio` PCoA (Principal Coordinate Analysis) results?

I'm looking at the attributes of skbio's PCoA method (listed below). I am new to this API and I want to be able to get the eigenvectors and the original points projected onto the new axis similar to ....
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35 views

Scikit-learn PCA .fit_transform shape is inconsistent (n_samples << m_attributes)

I am getting different shapes for my PCA using sklearn. Why isn't my transformation resulting in an array of the same dimensions like the docs say? fit_transform(X, y=None) Fit the model with X and ...
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23 views

How to obtain the eigenvalues after performing Multidimensional scaling?

I am interested in taking a look at the Eigenvalues after performing Multidimensional scaling. What function can do that ? I looked at the documentation, but it does not mention Eigenvalues at all. ...
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36 views

Perform clustering using t-SNE dimensionality reduction

The question is a matter of which should come first: a) the clustering or b) the dimensionality reduction algorithm? In other words, can I apply a pseudo (as it is not really) dimensionality reduction ...
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23 views

SVD for String values

I want to perform singular value decomposition on a large event data. Lets say I have 300+ attributes. And atlas 50% of them are string values. Like a city name and other possible string values. SVD, ...
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Validate correspondence analysis results

I have implemented correspondence analysis for dimension reduction of categorical variables.How can I validate the results of the algorithm as there is no notion of variance preservence in categorical ...
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25 views

What is the length of sliding window in dimensionality reduction

I am interested in dimensionality reduction using hashing technique. For document and image hashing, where the feature vector is represented as a binary string, how does one determine the length of ...
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34 views

When using ICA rather than PCA?

I know that PCA and ICA both are used for dimensionality reduction and in PCA principal components are orthogonal (not necessarily independent) but in ICA they are independent. Can anybody please ...
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4answers
210 views

Convert a bivariate draw in a univariate draw in Matlab

I have in mind the following experiment to run in Matlab and I am asking for an help to implement step (3). Any suggestion would be very appreciated. (1) Consider the random variables X and Y both ...
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13 views

Does (non-metric) multidimensional scaling reduce noise?

Perform PCA can reduce noise from data. Is this similar with (non-metric) multidimensional scaling ?
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22 views

How does ALS and SVD differ?

Do both ALS and SVD involve dimensional reductionality, and if so, how do the two methods differ? At a glance, I'm not sure why they're not the same.
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145 views

Rotation argument for scikit-learn's factor analysis

One of the hallmarks of factor analysis is that it allows for non-orthogonal latent variables. In R for example this feature is accessible via the rotation parameter of factanal. Is there any such ...
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Isomap “nonlinear dimensionality reduction” numbre of points

I have a question please , it's about 'Isomap' nonlinear dimensionality reduction, in normal cases when I introduce a matrix distance of 100 * 100 and I apply Isomap [http://isomap.stanford.edu/][1] ...
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23 views

RGB to grey using scikit-learn manifold

I am trying to reduce the dimensions to turn a RGB image to grey using manifold learning methods. I have converted an image into a numpy array (image_array) import numpy as np from sklearn.datasets ...
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94 views

Dimension Reduction (TSNE/PCA) on Sparse Matrix

I want to perform Dimension Reduction(DR) technique to visualize my data and how related they are to each other. I am planning to use Barnes-hut tsne but I am not able to get how to provide input to ...
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30 views

Matlab : Dimension reduction

LEt x_t = F(x_{t-1}) be a discret in time one dynamical system in chaotic regime. Starting from an initial condition x_0, we can generate a time series = x_t where t =1,2,...,T indicates the ...
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Dimension reduction on categorical variables based on values of continuous variable

I am interested in predicting a continuous variable reflecting vegetative production using a collection of land use categorical variables. The dataset is a pixel-level dataset, where each pixel has a ...
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110 views

Strange iteration results “error is nan” and RuntimeWarning using t-SNE

I am using t-SNE python implementation for dimensionality reduction on X which contains 100 instances each described by 1024 parameters for cnn visualization. X.shape = [100, 1024] X.dtype = ...
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26 views

Data loss (or percentage explained) in dimensionality reduction

I am trying to apply dimensionality reduction using PCA, LDA, and FA. I think I can successfully produce reconstructed data and mapping matrix that makes the reconstructed data from original matrix. ...
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130 views

Visualizing distance matrix using tSNE - Python

I've computed a distance matrix and I'm trying two approach to visualized it. This is my distance matrix: delta = [[ 0. 0.71370845 0.80903791 0.82955157 0.56964983 0. 0. ]...
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95 views

Scikit learn: How Totally random Trees embedding works?

I am trying to understand how scikit-learn uses Totally Random Trees Embedding (TRTE) and singular value decomposition (SVD) to perform unsupervised dimensionality reduction (manifold learning): http:...
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71 views

how to use LSA for dimension reduction in text analytics with R

I am a beginner at data science, and I am working on a text analytics/sentiment analysis project with tweets. what i have been trying to do is to perform some dimension reduction on my tweets training ...
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36 views

Why sklearn TSNE failed to reduce dimensions for large values?

I am trying to reduce dimensions of vectors to a specific size like (1,300) to (1,50) etc, using TSNE reduction technique. I have fixed set of word vectors present in a model, where i pass it a word ...
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41 views

ProClus cluster analysis in R

For my thesis assignment I need to perform a cluster analysis on a high dimensional data set containing purchase data from a retail store (+1000 dimensions). Because traditional clustering algorithms ...
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Kernel PCA increases dimensionality compared with PCA to achieve same variance explained?

I was trying to use sklearn to perform kernel PCA with 28*28 = 784 dims data. At first I used PCA to reduce dimensionality and I chose to reduce to k dimensions where k could explain 95% of the ...
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17 views

mapping a 2d trajectory to time series for segmentation

I have a 2d trajectory, as shown in pic one. I am looking for a way to project this trajectory to a one dimensional time series, so I can use the well-studied time series segmentation techniques to ...
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174 views

Can I use t-SNE when the dimension is larger than the number of data?

I am using t-SNE with the matlab code from this web site (https://lvdmaaten.github.io/tsne/). However, there is an error whenever I run this program with the data's dimension is larger than the number ...
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81 views

Selecting the components showing the most variance in PCA

I have a huge data set (32000*2500) that I need for training. This seems to be too much for my classifier, so I decided to do some reading on dimensionality reduction and specifically into PCA. From ...
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73 views

Dimensionality reduction for high dimensional sparse data before clustering or spherical k-means?

I am trying to build my first recommender system where i create a user feature space and then cluster them into different groups. Then for the recommendation to work for a particular user , first i ...
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84 views

Independent component analysis (ICA) in Python [closed]

Is there any available package in python to perform Independent Component Analysis (ICA)? please provide some pointers and links so that i can start with python for the same.
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48 views

Compare two objects by calculating a Min-Hash

I need to compare different states of Java/Type-script objects. These objects change during execution, so I can't compare them directly. I need to compare them according to an calculated 'hash value' ...
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117 views

Improve the speed of t-sne implementation in python for huge data

I would like to do dimensionality reduction on nearly 1 million vectors each with 200 dimensions(doc2vec). I am using TSNE implementation from sklearn.manifold module for it and the major problem is ...
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20 views

Sklearn PCA automatically set n_components

I am trying to use Sklearn PCA with the following code to reduce my 5000-D data to 32-D from sklearn.decomposition import PCA import numpy as np arr = np.random.randint(1,10,(10,5000)).astype(float)...
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26 views

Understanding the results of the factor analysis in R

I am doing a factor analysis on my data set (I have 85 attributes and data available for 20 participants). I am having some questions about the results. Here is the code I am using: fa<- fa(scaled,...
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How to do data preparation for the dataset which contains strings and integers/floats?

I have a dataset in xlsx format which looks like: Sample dataset containing string and integers I would like to do feature subset selection like T-Stats or Dimensionality Reduction like PCA, but for ...
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Is there a relation between factors in FA method?

I am doing a factor analysis on my data set (I have 85 attributes and data available for 20 participants), I have decide to use 19 attributes to cover 98 % of the variation, but my result with 19 ...
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55 views

Using dimensionality reduction on matrix

For supervised learning, my matrix size is really huge as a result of which only certain models agree to run with it. I read that PCA can help reducing dimensionality to a large extent. Below is my ...
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46 views

Deciding about dimensionality reduction, classification and clustering?

Could you please help me to understand it because I'm not sure if I got it correctly. Let's say I have a dataset, of persons, with 100 features, various characteristics like height, weight, age, etc....
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Why does Kernel PCA need normalize the eigen-vectors?

In the original paper of KPCA, we conduct the eigen-decomposition on the centered kernel matrix, and obtain its eigen-values and eigen-vectors. But in the paper, we should normalize the eigen-...
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26 views

ICA algorythm output with reduced dimension

I want to reduce dimension of a dataset using Robust ICA. using following function.[S, H, iter, W] = robustica(X, arguments); the function is in matlab and variables should be conventional. but i am ...
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Are these the irreconcilable cons of using DictVectorizer in Scikit learn?

I have 5+ million data to predict people's race. One textual feature gives rise to tens of thousands more. For example, name 'Smith' give rise to 'sm', 'mi', 'it'... etc. I then need to transform it ...
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282 views

Cannot make this autoencoder network function properly (with convolutional and maxpool layers)

Autoencoder networks seems to be way trickier than normal classifier MLP networks. After several attempts using Lasagne all what I get in the reconstructed output is something that resembles at its ...
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26 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 = []; ...
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98 views

Fuzzy clustering using unsupervised dimensionality reduction

An unsupervised dimensionality reduction algorithm is taking as input a matrix NxC1 where N is the number of input vectors and C1 is the number of components for each vector (the dimensionality of the ...
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110 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] = princomp(...
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60 views

dimensionality reduction algorithms

I have an data sheet with almost 2000 input parameters and 4 output parameters. I am to optimize the input parameters to define the output I am not sure whether the input parameters are linearly ...
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29 views

Feature Hashing / Avalanche Effect

I’ve been reading a bit about feature hashing for dimensionality reduction. I understand that it’s important to use a hash function that has a uniform output distribution (the chance of an input being ...
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16 views

How to use Principle Component Analysis (PCA) for dimensionality reduction in matlab [duplicate]

I have 50 Matrices of data with 80*80 dimensions. I need to classify them, but before that I have to reduce the dimensionality of data. As I searched the web, the best tool is PCA. I know that before ...
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67 views

Why too few features are selected in this dataset by subset selection method

I have a classification dataset with 148 input features (20 of which are binary and the rest are continuous on the range [0,1]). The dataset has 66171 negative example and only 71 positive examples. ...
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how to implement the example of letter 'A' in the wiki of nonlinear dimensionality reduction

When I read the wiki of nonlinear dimensionality reduction(https://en.wikipedia.org/wiki/Nonlinear_dimensionality_reduction), I found the interesting example of letter 'A', so I want to implement it ...