A general problem in compositional data analysis is the unmixing of a composition into a series of pure endmembers. In its most complex version, one does neither know the composition of these endmembers, nor their relative contribution to each observed composition. The problem is particularly cumbersome if the number of endmembers is larger than the number of observed components. This contribution proposes a possible solution of this under-determined problem. The proposed method starts assuming that the endmember composition is known. Then, a geometric characterization of the problem allows to nd the set of possible endmember proportions compatible with the observed composition. Within this set any solution may be valid, but some are mor...
Large compositional datasets of the kind assembled in the geosciences are often of remarkably low ap...
Compositional random vectors are fundamental tools in the Bayesian analysis of categorical data. Ma...
This paper proposes solutions to three issues pertaining to the estimation of finitemixture models w...
A general problem in compositional data analysis is the unmixing of a composition into a series of p...
A general problem in compositional data analysis is the unmixing of a composition into a series of p...
Modeling of compositional data is emerging as an active area in statistics. It is assumed that compo...
Compositional data are constrained vectors of multivariate observations whose elements are referred ...
International audienceThis paper studies a semi-supervised Bayesian unmixing algorithm for hyperspec...
International audienceThis paper studies a new Bayesian unmixing algorithm for hyperspectral images....
Compositional data are nonnegative data with the property of closure: that is, each set of values on...
International audienceIn this article, we present a Bayesian algorithm for endmember extraction and ...
Statistical modeling in practice encompasses both the exploratory process, which is an inductive sci...
Compositional data consist of vectors of positive values summing up\ud to a unit or to some fixed co...
Because of computational problems, multidimensional probability distributions must be approximated ...
Compositional data consist of vectors of proportions normalized to a constant sum from a basis of un...
Large compositional datasets of the kind assembled in the geosciences are often of remarkably low ap...
Compositional random vectors are fundamental tools in the Bayesian analysis of categorical data. Ma...
This paper proposes solutions to three issues pertaining to the estimation of finitemixture models w...
A general problem in compositional data analysis is the unmixing of a composition into a series of p...
A general problem in compositional data analysis is the unmixing of a composition into a series of p...
Modeling of compositional data is emerging as an active area in statistics. It is assumed that compo...
Compositional data are constrained vectors of multivariate observations whose elements are referred ...
International audienceThis paper studies a semi-supervised Bayesian unmixing algorithm for hyperspec...
International audienceThis paper studies a new Bayesian unmixing algorithm for hyperspectral images....
Compositional data are nonnegative data with the property of closure: that is, each set of values on...
International audienceIn this article, we present a Bayesian algorithm for endmember extraction and ...
Statistical modeling in practice encompasses both the exploratory process, which is an inductive sci...
Compositional data consist of vectors of positive values summing up\ud to a unit or to some fixed co...
Because of computational problems, multidimensional probability distributions must be approximated ...
Compositional data consist of vectors of proportions normalized to a constant sum from a basis of un...
Large compositional datasets of the kind assembled in the geosciences are often of remarkably low ap...
Compositional random vectors are fundamental tools in the Bayesian analysis of categorical data. Ma...
This paper proposes solutions to three issues pertaining to the estimation of finitemixture models w...