Questions tagged [dimensionality-reduction]

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 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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Linear Discriminant Analysis Result

Even though I have set n_components=2, the result when performing LDA with scikit-learn seems to contain only one feature. What could be happening here? dataset_normnya = datasetLDANorm[index,:] ...
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Is there a way to find the n most distant vectors in an array?

I have an array of thousands of doc2vec vectors with 90 dimensions. For my current purposes I would like to find a way to "sample" the different regions of this vector space, to get a sense of the ...
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Dimensionality reduction (PCA) with nested cross validation

I know that the dimensionality reduction should only be performed on the training set (the test set will be set aside and not used in the PCA calculation). But what if I'm doing nested cross ...
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Clustering and regression with high dimensional, mixed type data [migrated]

I have been looking at several similar questions and answers discussing these issues but I cannot say there is a clear answer to what I am posting here. There seems to be a general confusion with the ...
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Autoencoders for dimensionality reduction: is overfitting a bad thing?

At work, I trained an Autoencoder to reduce the dimensionality of a very redundant dataset. I assume that, if your goal is to have a simplified version of your initial dataframe (and only in this case)...
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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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K-means finds a singleton cluster when I standardize features (Wholesale customers dataset)

I am studying the Wholesale customers dataset. Running the elbow method I find that k=5 seems to be a good number of clusters. Unfortunately, when I standardize my features I get a singleton cluster, ...
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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 way to use the model is to transform() (i.e., ...
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Selecting the most informative categorical features for a multi-class ML classification model

I have a dataset on all the software installed by a large group of users. I would have to classify the users into one of 4 categories based on which software they installed (each user can install up ...
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PCA: Variance explained by a subset of variables

I'm runing a PCA analysis from 20 variables and 1200 individuals principally to look at variables relationships. I then selected only 5 variables as they seems to be representative of different groups ...
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Value Error eps=0.100000 as I try to reduce data dimensionaity. What could be the reason for this?

I am trying to use scikit's GaussianRandomProjection with my dataset which has a shape of 1599 x 11 as follows: transformer = random_projection.GaussianRandomProjection() X_new = transformer....
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Why does dimensionality reduction improve unsupervised clustering performance of movie posters?

I am writing a paper where I am trying to cluster movie posters based on their visual features. The goal is to cluster movie posters which look similar. To get a quantitative description of how ...
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37 views

How can i diagonalize the Covariance Matrix through the svd?

I'm just a bit confused about how to diagonalize the Covariance Matrix through the svd. Lets define X the data matrix and U,S,V as its svd decomposition. C the covariance matrix, C = 1/n-1 Y * Y' I ...
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37 views

getting TSNE work on data other than MNIST

I have this code: # # tsne.py # # Implementation of t-SNE in Python. The implementation was tested on Python # 2.7.10, and it requires a working installation of NumPy. The implementation # comes ...
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How can I use compressive sensing as a dimensionality reduction technique

Let us suppose that we have data of n instances where each instance is composed of d features. If we have 1000 features, we want to reduce it to 10 (more or less) features by applying compressive ...
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Reconstructing after SparseRandomProjection and LinearDiscriminantAnalysis

I have used SparseRandomProjection and LinearDiscriminantAnalysis in Python to develop a projection on the MNIST dataset (using fit_transform). In sklearn, PCA and FastICA offer an inverse_transform ...
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fourier transformation as a dimensional reduction technique in python

My dataset has 2000 attributes and 200 samples. I need to reduce the dimensionality of it. To do this, I am trying to use Fourier transformation as a dimensional reduction. Fourier transformation ...
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1answer
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Saving an Auto-encoder trained to reduce dimensions

I made an autoencoder for dimensionality reduction, I wanted to save it to be used in the reduction of the test dataset. Here is my code dom_state = seed(123) print('Rescaling Data') y = minmax_scale(...
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Prince package for Factor Analysis of Mixed Data - Can't get row_contributions()

I am trying to use Prince package to apply Factor Analysis of Mixed Data (FAMD). I have a pandas dataframe with sample names as index and features as columns, and some columns are numeric and other ...
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Reducing the dimensionality of a big adjacency matrix m x n (m = 25k)

Here's the problem in details: so for natural language processing, we have a computational model that explicates how world knowledge and linguistic experience are integrated at the level of ...
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What does mean affinity='precomputed' in Feature Agglomeration dimensionality reduction?

What does affinity='precomputed' mean in feature agglomeration dimensionality reduction (scikit-learn) and how is it used? I got much better results than by using other affinity options (such as '...
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1answer
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Is there any support for BiPlots when using PCA in spark.ml?

I have used kmeans and PCA to attempt to visualise high dimensional k-means clusters in two dimensions but have lost the meaning of the clusters in 2D. Is there anyway to project the features onto to ...
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1answer
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Graphing multi-dimensional K-means cluster NLP python

I have a multidimensional vector designed for an NLP Classifier. Here's the dataframe (text_df): I used a TfidfVectorizer to create the vector: from sklearn.feature_extraction.text import ...
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2answers
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Clustering of Tags

I have a dataset (~80k rows) that contains a comma-separated list of tags (skills), for example: python, java, javascript, marketing, communications, leadership, web development, node.js, react ... ...
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Conv1D as dimensionality reduction for LSTM

I was hoping to use CNN as a dimensionality reduction for my LSTM layers. I have a panel dataset as the following: sequence of days = 5065 lags = 14 days (those are time series lags) features = 2767 ...
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What does it mean by “t-SNE retains the structure of the data”?

I was learning about t-SNE when I was told that t-SNE retains the structure of the data in the embeddings. What exactly does this mean ? How does the algorithm achieve this ? So far I have ...
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How does bringing all the features in same range as target variable impact performance?

Suppose I have the following dataset. (The data is completely random) Colour Size Shape Pre booking number Price White 24 Square 600 1400 Blue 35 ...
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1answer
57 views

convolutional autoencoder to analyse long 1-D sequences

I have a dataset of 1-D vectors each 3001 digits long. I have used a simple convolutional network to perform binary classification on these sequences: shape=train_X.shape[1:] model = Sequential() ...
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3answers
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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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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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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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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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Accessing reduced dimensionality of trained autoencoder

Here is a autoencoder trained on mnist using PyTorch : import torch import torchvision import torch.nn as nn from torch.autograd import Variable cuda = torch.cuda.is_available() # True if cuda is ...
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Limitations of sklearn Truncated SVD (LSA) Implementation

I have the following scenario: I must analyze a big collection of text documents (around 3,000) and perform some clustering technic to gain some insight over it. To extract features I'm using tf-idf, ...
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rpca function in rsvd package: how to decide for its arguments

I am using randomized principal component analysis (rpca) within the rsvd package and am uncertain how to decide on its arguments. Decisions on arguments I have made already: k: I am following the ...
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Unsupervised learning reduce dimensionality/clustering

I am trying to understand how can I split my data into clusters using unsupervised learning. For example, k-means method. I have 20 columns of data and how can it be projected on 2D surface without ...
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1answer
326 views

How to analyze the t-SNE(KMeans) result in Python?

I have used the t-SNE for KMeans clustering but after getting the t-SNE result, I couldn't understand how can I relate this with my original data. Can someone please help me to understand the result ...
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How is the topological data analysis related to the reduction in dimensionality?

I have tried to find the key ideas of TDA which are related to Dimensionality Reduction, but could not find any sources for that.
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113 views

Kmean text clustering using latent semantic Analysis

while doing text clustering, I understand that high dimension vector does affect the performance and normal trend is to apply dimensional reduction techniques before the clustering. Following this, I ...
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1answer
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I am getting unexpected NaN value when trying pd.concat. How to deal with this? PCA vs T-SNE

I am trying to reduce the dimension of the data using PCA, however, when I use concat, it automatically generating a NaN value. Also the customer age has become float while it was int. Can someone ...
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2answers
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Dimensionality reduction using (multivariat) Singular Spectrum Analysis

I have given a time-series in various channels. There are two major oscillations "hidden" in the time-series and distributed over all channels. I want to extract these oscillations using multivariate ...
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Which are the best methods to reduce the number of variables in R? [closed]

Which are the best methods to reduce the number of variables? What are the R functions to perform the same?
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68 views

Project vector w onto vector v and draw perpendicular line - preparation for PCA

I want to do vector projection as preparation for PCA where I followed This tutorial for the calculation of the vector projection. w is the vector which 'points' onto the data points, v is the ...
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2answers
337 views

Word2vec tsne plot

I am trying to visualize word2vec i created from amazon reviews corpus.....i sampled about 5k positive and 5k negative rows....the score column contain whether the reviews are positive or negative.... ...
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1answer
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Dimensionality-reduction by specific methods

I'm working on feature extraction of facial image using local binary pattern. How to reduce the dimensions of my feature vector?which method should I use for feature reduction?
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Group feature subset selection

I am trying to perform feature subset selection for a classification problem to determine the relative priority of each group. SKLearn doesn't appear to have a group-wise feature selection algorithm ...
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1answer
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Attribute Reduction Vs Dimensional Reduction

What is the difference between attribute reduction and dimensional reduction? What methods are considered attribute reduction techniques as opposed to dimensional reduction?
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Challenges with high cardinality data

Background: I am working on classifying data from a ticketing system data into a failed or successful requests. A request goes into various stages before getting completed. Each request is assigned to ...
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How is scikit-learn's FastICA deconvoluting two signals that are each composed of Gaussian noise?

Not sure if best to ask this here or on StackExchange, but since it's a programming question as well as potentially a math question, here goes. The question is about FastICA. Given input time series ...