Archetypal analysis (AA) aims to extract patterns using self-expressive decomposition of data as convex combinations of extremal points (on the convex hull) of the data. This work presents a computationally efficient greedy AA (GAA) algorithm. GAA leverages the underlying geometry and sparseness property of AA, is scalable to larger datasets, and has significantly faster convergence to existing methods. To achieve this, archetypes are learned via sparse projection of data in linearly transformed space. GAA employs an iterative subset selection approach to identify archetypes based on the sparsity of convex representations. The work further presents the use of GAA algorithm for extended AA models such as robust and kernel AA. Experimental re...
The new concept archetypoids is introduced. Archetypoid analysis represents each observation in a da...
The archetype hull model is playing an important role in large-scale data analytics and mining, but ...
This introduction to the R package archetypes is a (slightly) modified version of Eugster and Leisch...
We revisit a pioneer unsupervised learning technique called archetypal analysis [5], which is relate...
This paper introduces an efficient geometric approach for data classification that can build class m...
We revisit a pioneer unsupervised learning technique called archetypal analysis [5], which is relate...
Archetypes represent extreme manifestations of a population with respect to specific characteristic ...
Deep Archetypal Analysis (DeepAA) generates latent representations of high-dimensional datasets in t...
Given a collection of data points, nonnegative matrix factorization (NMF) suggests expressing them a...
<p>Archetypal analysis and nonnegative matrix factorization (NMF) are staples in a statistician's to...
In this article, we propose several methodologies for handling missing or incomplete data in archety...
Archetype and archetypoid analysis are extended to shapes. The objective is to find representative s...
Archetypal analysis represents observations in a multivariate data set as convex combinations of a f...
Archetypal analysis has the aim to represent observations in a multivariate data set as convex combi...
Archetypal analysis has the aim to represent observations in a multivariate data set as convex combi...
The new concept archetypoids is introduced. Archetypoid analysis represents each observation in a da...
The archetype hull model is playing an important role in large-scale data analytics and mining, but ...
This introduction to the R package archetypes is a (slightly) modified version of Eugster and Leisch...
We revisit a pioneer unsupervised learning technique called archetypal analysis [5], which is relate...
This paper introduces an efficient geometric approach for data classification that can build class m...
We revisit a pioneer unsupervised learning technique called archetypal analysis [5], which is relate...
Archetypes represent extreme manifestations of a population with respect to specific characteristic ...
Deep Archetypal Analysis (DeepAA) generates latent representations of high-dimensional datasets in t...
Given a collection of data points, nonnegative matrix factorization (NMF) suggests expressing them a...
<p>Archetypal analysis and nonnegative matrix factorization (NMF) are staples in a statistician's to...
In this article, we propose several methodologies for handling missing or incomplete data in archety...
Archetype and archetypoid analysis are extended to shapes. The objective is to find representative s...
Archetypal analysis represents observations in a multivariate data set as convex combinations of a f...
Archetypal analysis has the aim to represent observations in a multivariate data set as convex combi...
Archetypal analysis has the aim to represent observations in a multivariate data set as convex combi...
The new concept archetypoids is introduced. Archetypoid analysis represents each observation in a da...
The archetype hull model is playing an important role in large-scale data analytics and mining, but ...
This introduction to the R package archetypes is a (slightly) modified version of Eugster and Leisch...