Compositional data are nonnegative data with the property of closure: that is, each set of values on their components, or so-called parts, has a fixed sum, usually 1 or 100%. Compositional data cannot be analyzed by conventional statistical methods, since the value of any part depends on the choice of the other parts of the composition of interest. For example, reporting the mean and standard deviation of a specific part makes no sense, neither does the correlation between two parts. I propose that a small set of ratios of parts can be determined, either by expert choice or by automatic selection, which effectively replaces the compositional data set. This set can be determined to explain 100% of the variance in the compositional data, or a...
A general problem in compositional data analysis is the unmixing of a composition into a series of p...
Compositional closure, spurious negative correlations in data sets of a fixed sum (e.g., fractions a...
When traditional methods are applied to compositional data misleading and incoherent results could b...
Compositional data are nonnegative data with the property of closure: that is, each setof values on ...
Compositional data are nonnegative data with the property of closure: that is, each set of values on...
Abstract: Compositional data are those which contain only relative information. They are parts of so...
The different constituents of physical mixtures such as coloured paint, cocktails, geological and ot...
This book presents the statistical analysis of compositional data using the log-ratio approach. It i...
This book presents the statistical analysis of compositional data using the log-ratio approach. It i...
Meeting Theme: Statistics: Global Impact - Past, Present and FutureSection on Statistical Learning a...
In the analysis of compositional data, zero components or a non-normal distribution of the log-ratio...
Compositional data are constrained vectors of multivariate observations whose elements are referred ...
Compositional data (CoDa, [1] and [2]) consist of vectors of positive values summing to a unit, or i...
Compositional data are ubiquitous in chemistry and materials science: analysis of elements in multic...
Theory of compositional data analysis is often focused on the composition only. However in practical...
A general problem in compositional data analysis is the unmixing of a composition into a series of p...
Compositional closure, spurious negative correlations in data sets of a fixed sum (e.g., fractions a...
When traditional methods are applied to compositional data misleading and incoherent results could b...
Compositional data are nonnegative data with the property of closure: that is, each setof values on ...
Compositional data are nonnegative data with the property of closure: that is, each set of values on...
Abstract: Compositional data are those which contain only relative information. They are parts of so...
The different constituents of physical mixtures such as coloured paint, cocktails, geological and ot...
This book presents the statistical analysis of compositional data using the log-ratio approach. It i...
This book presents the statistical analysis of compositional data using the log-ratio approach. It i...
Meeting Theme: Statistics: Global Impact - Past, Present and FutureSection on Statistical Learning a...
In the analysis of compositional data, zero components or a non-normal distribution of the log-ratio...
Compositional data are constrained vectors of multivariate observations whose elements are referred ...
Compositional data (CoDa, [1] and [2]) consist of vectors of positive values summing to a unit, or i...
Compositional data are ubiquitous in chemistry and materials science: analysis of elements in multic...
Theory of compositional data analysis is often focused on the composition only. However in practical...
A general problem in compositional data analysis is the unmixing of a composition into a series of p...
Compositional closure, spurious negative correlations in data sets of a fixed sum (e.g., fractions a...
When traditional methods are applied to compositional data misleading and incoherent results could b...