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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Sammon Mapping (Python)

import numpy as np from sklearn.datasets.samples_generator import make_blobs import matplotlib.pyplot as plt from scipy.spatial.distance import pdist def sammon(X, iter, error, alpha): # Number ...
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Why does SNE include the word Stochastic?

I understand how SNE and tSNE work, but I don't get if it is just called like that because it is a probabilistic method or because there are hidden justifications that use Stochastic Processes.
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Edit Output from Factor Analysis (R)

I am working on a project that involves performing factor analysis. Here is a chunk of example code: fit <- factanal(mtcars, 2, rotation="varimax") print(fit, digits=4, cutoff=.3, sort=...
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Implement CVAE for a single image

I have a multi-dimensional, hyper-spectral image (channels, width, height = 15, 2500, 2500). I want to compress its 15 channel dimensions into 5 channels.So, the output would be (channels, width, ...
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How to select number of dimensions in t-SNE algorithm

For PCA we can see variance_score and say how much percentage of original data variance is included in each Principal Components. With these variance scores, we can plot an elbow graph and decide the ...
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I got this error n_components=1000 must be between 0 and min(n_samples, n_features)=2 with svd_solver='full'

I want to reduce the dimension of matrix of size (5,3844) using pca dimensionality reduction.I got this error n_components=1000 must be between 0 and min(n_samples, n_features)=2 with svd_solver='full'...
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Problems with Partial Least Squares Y loadings and scores

I am studying how the Partial Least Squares (PLS) algorithm works, and I am finding some problems regarding the documentation available for python. In this website from the scikit learn ...
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Why with two classes, LDA gives only one dimension?

I have a dataset with 291 rows and 18 columns. I am a beginner at performing linear discriminant analysis and I want to apply LDA with the MASS package in R. After making the data partition of my ...
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Is it possible to run an EFA in R that also accounts for non-independent observations (i.e., includes random effects)? [migrated]

Suppose I have the following data, in which 20 participants each rated 10 items on five different dimensions. In reality I have much more of each, but I am just using this as an example. set.seed(123)...
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Shapes Incompatible in Keras with CNN

I am implementing a network that takes a 2d image and outputs a 3D binary voxels for it. I am using an autoencoder with LSTM module. The current shape of images and voxels are as follows: print(...
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How to reduce conditionality of a categorical feature using a lookup table

I a dataframe (df1) whose one categorical column is df1=pd.Dataframe({'COL1': ['AA','AB','BC','AC','BA','BB','BB','CA','CB','CD','CE']}) I have another dataframe (df2) which has two columns df2=...
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How to compute/extract the residual variance from an Isomap [vegan] model in R

I am currently trying to understand how Isomap results will differ from PCA and MDS and if they are more suited for my data. For this I started to work with the isomap function provided by vegan in R ...
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Dimensionality reduction does not affect model metrics

I am not able to understand why introducing different dimensionality techniques does not have any impact (Neither positive nor negative) on my model metrics in a classification problem. Input Data ...
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Error in if (is.na(n) || n > 65536L) stop(“size cannot be NA nor exceed 65536”)

I want to perform hierarchical clustering on an object generated by Rtsne(). Rtsne gives a list, that I converted to a data.frame. Then I used diston it, followed by hclust(). But this gives me the ...
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Multiple dimensionality reduction techniques with pipeline and GridSearchCV

we all know the common approach to define a pipeline with a dimensionality reduction technique and then a model for training and testing. Then we can apply the GridSearchCv for hyperparameter tuning. ...
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How do you know if your dataset suffers from high-dimensionality problems?

There seems to be many techniques for reducing dimensionality (pca, svd etc) in order to escape the curse of dimensionality. But how do you know that your dataset in fact suffers from high-...
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Difference between “empirical” and “theoretical” explained variance in PCA [migrated]

In prcomp library in R for instance, the "empirical" and "theoretical" explained variances for PCA are given by: res.pca = prcomp(X, center = TRUE) res.pca$x[,-1] = 0 var.empirical = (1 - sum( (res....
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can anyone tell me the usage of each dimensional reduction techniques with examples?

How can we find out what reduction techniques are useful for different data? can anyone tell me the usage of each dimensional reduction techniques with examples? like on what type of data each ...
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cluster algorithms vs dimensionality reduction like pca, umap, tsne

Can pca or T-sne cluster on it's own, or does it just do the dimensionality reduction so we can visualize it with a clustering algorithm like K-means clustering?
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Dimensionality Reduction before Topic Modeling with LDA

I want to do some topic modeling with LDA, but unfortunately my data is pretty sparse and the results are not satisfying. Because I still would like to try to solve my task with LDA (even though there ...
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How to implement Dynamic Factor Analysis (DFA) in python?

Is there any library for python implementation of the Dynamic Factor Analysis for dimensionality reduction of time-series data? https://www.researchgate.net/publication/...
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coloring tSNE by predefined groups R

I did a tSNE with the function Rtsne. Now I want to visualize it. I have predefined groups. Like the Species in iris. I want to color the points by this groups. This does not help me Coloring the ...
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Difference between coeff_ and scalings in LDA?

I'm working exploiting LDA from scikit-Learn. I have a doubt about the difference between coef_ and scalings. What is the real difference in statistician terms ? I have tred to read the source code ...
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PCA in R - Do we need to reassign the elements of “prcomp” by multiplying negative sign?

A trainer did this in a video. He just gave a quick explanation that he does this because of R's default nature. However, I have never seen this application before. Is it correct, and why he does this?...
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Why do I get some features as zeros when using autoencoder for feature extraction?

I have a dataframe with 67 features x 1031 samples. I would like to reduce the features to say two or three important ones. I am using Autoencoder for this purpose and to my surprise whatever encoding ...
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Dimension reduction for mixed categoric and numeric data

I am looking for dimensionality reduction method like PCA to deal with my data. The majority of values are numeric but I want to include categoric data as well.What would be the most suitable method? ...
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How can I reduce extract features from a set of Matrices and vectors to be used in Machine Learning in MATLAB

I have a task where I need to train a machine learning model to predict a set of outputs from multiple inputs. My inputs are 1000 iterations of a set of 3x 1 vectors, a set of 3x3 covariance matrices ...
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Dimensionality reduction using LDA for wavelet scalogram in python

I am trying to reduce dimensionality of multiple scalograms having same dimension of size[5x3844]. How can I apply that using LDA in python ?? Any help would be appreciated. code: def wavelet(data):...
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Dimensionality reduction by minimizing the spread between data points

I have a three-dimensional point dataset (please refer to the images) which has an underlying structure, as seen in Image 3. My goal is to classify these independent "data pillars". My foolish ...
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Coding Isomap (& MDS) function using only numpy and scipy in python

I have coded Isomap function starting with computing the eulidean distance matrix (using scipy.spatial.distance.cdist), next basing on K-nearest neighbors method and Dijkstra algorithm (to determinate ...
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How to design Autoencoder neural network, in which the input is not a vector but a matrix?

My dataset describes 10239 movies and each movie has 917 features of its contents. I have tried basic Autoencoder to reduce my dataset's dimension from 10239x917 to 10239x450 and it worked perfectly ...
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Can PCA be applied to multivariate time-series for dimensionality reduction?

I'm applying PCA for dimensionality reduction of a multivariate time-series data with >100 dimensions. I was wondering if there are any short comings to this approach when working with time-series ...
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Curse of dimensionality when dimensions are fixed

I think there is a big misunderstanding in the Data Science community in respect to what exactly 'curse of high dimensionality' means. Please consider two examples: 1) I want to compare the distance ...
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Error when ploting tsne (T-Distributed Stochastic Neighbor Embedding)

library(devtools) library(Seurat) nbt.data=read.table("~/zdata.matrix.txt",sep="\t",header=TRUE,row.names=1) nbt.data=log(nbt.data+1) corner(nbt.data) zf1_p7_S31_umi zf2_dis_S1238_umi ...
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Using TSNE to dimensionality reduction. Why 3 D graph is not working?

I have used the Digits dataset from Sklearn and I have tried to reduce the dimension from 64 to 3 using TSNE( t-Distributed Stochastic Neighbor Embedding): import numpy as np import pandas as pd ...
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Save T-SNE results for future use

What is the appropriate way to save a gensim doc2vec model that has been transformed by T-SNE (from sklearn.manifold), e.g. x_full = model[doc_tags] pca_full = PCA(n_components=50) pca_result_full = ...
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Feature Selection for gene expression data [closed]

Can someone please give me some suggestions on which feature selection techniques for gene classification should I use?
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Is there any existing implementation or logic for Hilbert curve mapping for floating point co-ordinates?

I am working on implementing a Hilbert curve mapping that uses co-ordinates with floating points. I have come across several Hilbert curve implementations at Github and looks like all of them consider ...
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Could I apply PCA separately for target class?

Q1) I work in a highly imbalanced dataset with 300 columns * 400000 rows, could I undersample the data before splitting it into a training and testing set? Does it lead to a model overfitting? Q2) ...
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Kernal crashing due to high dimensionality in NLP task. Reduce Dimensionality while using TfiDfVectorizer and Logistic Regression

I have a daaframe with more than 300000 entries of tweets. My goal is to classify the tweets based on author id or in other words predict the author. Problem is that data over twitter is very messy. ...
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PCA analysis with the error memroy allocation is not enough

I am going to do the features reduction using PCA. But the original number of features is too large. The related code includes: For feature_selector library fs.identify_collinear(...
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autoencoder: how to expand dimensionality having only its latent space representation?

is it possible to start from a latent space representation of a dataset whose dimension and features are unknown, and "test" or "create" new dimensions for it, in a similar fashion that a decoder from ...
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How to reduce code of Prototypical Network

I have a code as below. The input matrix is (90, 2856). I want to use this input to class PrototypicalNet(nn.Module): without the part of class Net(nn.Module): Please let me know how to delete the ...
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Axis inconsistencies with t-SNE Visualization plots

I was just messing around with some embeddings, InceptionV3, and t-SNE. I'm fairly new to this area of research, so I apologize in advance if this could be easily fixed or if I did something wrong. ...
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Progress of Intrinsic Dimension Calculation in R

I am using the R packages "ider" and "intrinsicDimension". Only one function in the "intrinsicDimension" package: pcaLocalDimEst, has a verbose option, none of the functions in the "ider" has a ...
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With a PyTorch LSTM, can I have a different hidden_size than input_size?

I have: def __init__(self, feature_dim=15, hidden_size=5, num_layers=2): super(BaselineModel, self).__init__() self.num_layers = num_layers self.hidden_size = hidden_size ...
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Simple Autoencoder for dimensionality reduction in Scala

I'm a newbie in Autoencoders and Deep Learning, but I'm trying to write an Autoencoder for dimensionality reduction in Scala. It can use whatever technology, DeepLearning4j or Spark, but I'm ...
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Tighter clustering on a larger dataset?

not sure if im asking this question in the correct place but anyway... I have been using sci-kit learn package to perform dimensionality reduction on 2 different datasets, one is a large dataset with ...
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Unsupervised model by choosing features for X,Y,Z axis according to our requirement

Is it ok to do clustering using 11 features where 5 features converting to 1 using truncated svd as x-axis, 4 features converting to 1 using truncated svd as y-axis, and 2 features converting to 1 ...
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TensorFlow Embedding Projector for Visualization of Latent Space Images Not Working?

Can someone please help me with why Tensorflow embedding projector is not working? I am training an autoencoder and am now trying to visualize the latent space. I followed this very useful tutorial: ...

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