Data visualization has always been a necessity. That is why the dimension reduction field is an important part of machine learning. One of the best algorithms to do data visualization is the multi-scale stochastic neighbor embedding (Ms.~SNE). But because of its time complexity of O(N^2 \log(N)), it is not suitable for large databases. In order to solve this Big Data problem, the solution proposed here is an accelerated version of Ms. SNE. It uses metric trees to approximate the data cloud into clusters and to reduce the cost to a O(N \log^2(N)) time complexity. This is a new research and the resulted solution is not perfect yet but the results prove that the approximations added to the original algorithm allow the code to run on larger dat...
Stochastic Neighbor Embedding (SNE) methods minimize the divergence between the similarity matrix of...
In recent years, dimensionality-reduction techniques have been developed and are widely used for hyp...
Stochastic Neighbor Embedding (SNE) methods minimize the divergence between the similarity matrix of...
Dimension reduction (DR) computes faithful low-dimensional (LD) representations of high-dimensional ...
Dimension reduction (DR) computes faithful low-dimensional (LD) representations of high-dimensional ...
Dimension reduction (DR) computes faithful low-dimensional (LD) representations of high-dimensional ...
In many real world applications, different features (or multiview data) can be obtained and how to d...
Abstract. Stochastic neighbor embedding (SNE) is a method of dimen-sionality reduction that involves...
Stochastic neighbor embedding (SNE) is a method of dimensionality reduction that involves softmax si...
Funding Information: This work was supported by The Research Council of Norway, Grant Number 287284,...
Funding Information: This work was supported by The Research Council of Norway, Grant Number 287284,...
Dimension reduction has been widely used in real-world applications such as image retrieval and docu...
Neighbor embedding (NE) aims to preserve pairwise similarities between data items and has been shown...
Neighbor embedding (NE) aims to preserve pairwise similarities between data items and has been shown...
In recent years, dimensionality-reduction techniques have been developed and are widely used for hyp...
Stochastic Neighbor Embedding (SNE) methods minimize the divergence between the similarity matrix of...
In recent years, dimensionality-reduction techniques have been developed and are widely used for hyp...
Stochastic Neighbor Embedding (SNE) methods minimize the divergence between the similarity matrix of...
Dimension reduction (DR) computes faithful low-dimensional (LD) representations of high-dimensional ...
Dimension reduction (DR) computes faithful low-dimensional (LD) representations of high-dimensional ...
Dimension reduction (DR) computes faithful low-dimensional (LD) representations of high-dimensional ...
In many real world applications, different features (or multiview data) can be obtained and how to d...
Abstract. Stochastic neighbor embedding (SNE) is a method of dimen-sionality reduction that involves...
Stochastic neighbor embedding (SNE) is a method of dimensionality reduction that involves softmax si...
Funding Information: This work was supported by The Research Council of Norway, Grant Number 287284,...
Funding Information: This work was supported by The Research Council of Norway, Grant Number 287284,...
Dimension reduction has been widely used in real-world applications such as image retrieval and docu...
Neighbor embedding (NE) aims to preserve pairwise similarities between data items and has been shown...
Neighbor embedding (NE) aims to preserve pairwise similarities between data items and has been shown...
In recent years, dimensionality-reduction techniques have been developed and are widely used for hyp...
Stochastic Neighbor Embedding (SNE) methods minimize the divergence between the similarity matrix of...
In recent years, dimensionality-reduction techniques have been developed and are widely used for hyp...
Stochastic Neighbor Embedding (SNE) methods minimize the divergence between the similarity matrix of...