Compositional data are vectors of proportions describing the relative abundance of eachcomponent to the total. High-dimensionality of many compositional data sets, often with more components than observations, has caused an increased demand for capturing observed patterns of variability through lower dimensions. Current dimension reduction methods applicable to compositional data are either difficult to interpret or lack a statistical model. Amalgamation, the summation of two components, and subcomposition, a subset of the original components, both serve as straightforward and interpretable ways of combining components in all applications of compositional data analysis and reduce the number of components in the composition. This paper propo...
Visualization of data becomes more challenging as the dimensionality of the data increases, impacti...
A general problem in compositional data analysis is the unmixing of a composition into a series of p...
We consider feature extraction (dimensionality reduction) for compositional data, where the data vec...
Recent efforts to characterize the human microbiome and its relation to chronic diseases have led to...
Amalgamation of parts of a composition has been extensively used as a technique of analysis to achie...
In standard multivariate statistical analysis, common hypotheses of interest concern changes in mean...
Meeting Theme: Statistics: Global Impact - Past, Present and FutureSection on Statistical Learning a...
Many next-generation sequencing datasets contain only relative information because of biological and...
Abstract: Compositional data analysis deals with situations where the relevant information is contai...
Compositional data are nonnegative data with the property of closure: that is, each set of values on...
Compositional data are constrained vectors of multivariate observations whose elements are referred ...
Abstract: Compositional data are those which contain only relative information. They are parts of so...
<p>High-dimensional compositional data arise naturally in many applications such as metagenomic data...
The different constituents of physical mixtures such as coloured paint, cocktails, geological and ot...
Compositional data are ubiquitous in chemistry and materials science: analysis of elements in multic...
Visualization of data becomes more challenging as the dimensionality of the data increases, impacti...
A general problem in compositional data analysis is the unmixing of a composition into a series of p...
We consider feature extraction (dimensionality reduction) for compositional data, where the data vec...
Recent efforts to characterize the human microbiome and its relation to chronic diseases have led to...
Amalgamation of parts of a composition has been extensively used as a technique of analysis to achie...
In standard multivariate statistical analysis, common hypotheses of interest concern changes in mean...
Meeting Theme: Statistics: Global Impact - Past, Present and FutureSection on Statistical Learning a...
Many next-generation sequencing datasets contain only relative information because of biological and...
Abstract: Compositional data analysis deals with situations where the relevant information is contai...
Compositional data are nonnegative data with the property of closure: that is, each set of values on...
Compositional data are constrained vectors of multivariate observations whose elements are referred ...
Abstract: Compositional data are those which contain only relative information. They are parts of so...
<p>High-dimensional compositional data arise naturally in many applications such as metagenomic data...
The different constituents of physical mixtures such as coloured paint, cocktails, geological and ot...
Compositional data are ubiquitous in chemistry and materials science: analysis of elements in multic...
Visualization of data becomes more challenging as the dimensionality of the data increases, impacti...
A general problem in compositional data analysis is the unmixing of a composition into a series of p...
We consider feature extraction (dimensionality reduction) for compositional data, where the data vec...