Dimensionality reduction is crucial both for visualization and preprocessing high dimensional data for machine learning. We introduce a novel method based on a hierarchy built on 1-nearest neighbor graphs in the original space which is used to preserve the grouping properties of the data distribution on multiple levels. The core of the proposal is an optimization-free projection that is competitive with the latest versions of t-SNE and UMAP in performance and visualization quality while being an order of magnitude faster in run-time. Furthermore, its interpretable mechanics, the ability to project new data, and the natural separation of data clusters in visualizations make it a general purpose unsupervised dimension reduction technique. In ...
Many machine learning algorithms for clustering or dimensionality re-duction take as input a cloud o...
AbstractThe embedding of high-dimensional data into 2D/3D space is the most popular way of data visu...
Traditionally, spectral methods such as principal component analysis (PCA) have been applied to many...
Nonlinear dimensionality reduction methods often rely on the nearest-neighbors graph to extract low-...
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 ...
Dimensionality reduction algorithms are a commonly used solution to create a visual summary of high ...
\u3cp\u3eIn recent years, dimensionality-reduction techniques have been developed and are widely use...
In recent years, dimensionality-reduction techniques have been developed and are widely used for hyp...
In recent years, dimensionality-reduction techniques have been developed and are widely used for hyp...
In recent years, dimensionality-reduction techniques have been developed and are widely used for hyp...
In recent years, dimensionality-reduction techniques have been developed and are widely used for hyp...
In data science and visualization, dimensionality reduction techniques have been extensively employe...
Dimensionality reduction in the machine learning field mitigates the undesired properties of high-di...
Many machine learning algorithms for clustering or dimensionality re-duction take as input a cloud o...
AbstractThe embedding of high-dimensional data into 2D/3D space is the most popular way of data visu...
Traditionally, spectral methods such as principal component analysis (PCA) have been applied to many...
Nonlinear dimensionality reduction methods often rely on the nearest-neighbors graph to extract low-...
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 ...
Dimensionality reduction algorithms are a commonly used solution to create a visual summary of high ...
\u3cp\u3eIn recent years, dimensionality-reduction techniques have been developed and are widely use...
In recent years, dimensionality-reduction techniques have been developed and are widely used for hyp...
In recent years, dimensionality-reduction techniques have been developed and are widely used for hyp...
In recent years, dimensionality-reduction techniques have been developed and are widely used for hyp...
In recent years, dimensionality-reduction techniques have been developed and are widely used for hyp...
In data science and visualization, dimensionality reduction techniques have been extensively employe...
Dimensionality reduction in the machine learning field mitigates the undesired properties of high-di...
Many machine learning algorithms for clustering or dimensionality re-duction take as input a cloud o...
AbstractThe embedding of high-dimensional data into 2D/3D space is the most popular way of data visu...
Traditionally, spectral methods such as principal component analysis (PCA) have been applied to many...