Nonmetric pairwise data with violations of symmetry, reflexivity, or triangle inequality appear in fields such as image matching, web mining, or cognitive psychology. When data are inherently nonmetric, we should not enforce metricity as real information could be lost. The multidimensional scaling problem is addressed from a new perspective. I propose a method based on the h-plot, which naturally handles asymmetric proximity data. Pairwise proximities between the objects are defined, though I do not embed these objects, but rather the variables that give the proximity to or from each object. The method is very simple to implement. The representation goodness can be easily assessed. The methodology is illustrated through several small exampl...
175 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Scaling and clustering techni...
International audienceIn this chapter, the embedding of a set of data into a vector space is studied...
Nearest-neighbor (NN) classification has been widely used in many research areas, as it is a very in...
Nonmetric pairwise data with violations of symmetry, reflexivity, or triangle inequality appear in f...
A number of model-based scaling methods have been developed that apply to asymmetric proximity mat...
Asymmetric relationships contained in square data matrices like proximities (e.g. similarity ratings...
This book provides an accessible introduction and practical guidelines to apply asymmetric multidime...
163 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2002.Scaling and seriation of obje...
Seriation and multidimensional scaling are two techniques aimed at exploring relationships in domin...
A number of model-based scaling methods have been developed that apply to asymmetric proximity matri...
In many areas of machine learning, the characterization of the input data is given by a form of prox...
Asymmetric pairwise relationships are frequently observed in experimental and non-experimental studi...
Distances or dissimilarities among units are assumed to be symmetric in most cases of multidimension...
There are two common data representations in intelligent data analysis, namely the vectorial represe...
In this article, the authors explore the use of graph layout algorithms for visualizing proximity ma...
175 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Scaling and clustering techni...
International audienceIn this chapter, the embedding of a set of data into a vector space is studied...
Nearest-neighbor (NN) classification has been widely used in many research areas, as it is a very in...
Nonmetric pairwise data with violations of symmetry, reflexivity, or triangle inequality appear in f...
A number of model-based scaling methods have been developed that apply to asymmetric proximity mat...
Asymmetric relationships contained in square data matrices like proximities (e.g. similarity ratings...
This book provides an accessible introduction and practical guidelines to apply asymmetric multidime...
163 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2002.Scaling and seriation of obje...
Seriation and multidimensional scaling are two techniques aimed at exploring relationships in domin...
A number of model-based scaling methods have been developed that apply to asymmetric proximity matri...
In many areas of machine learning, the characterization of the input data is given by a form of prox...
Asymmetric pairwise relationships are frequently observed in experimental and non-experimental studi...
Distances or dissimilarities among units are assumed to be symmetric in most cases of multidimension...
There are two common data representations in intelligent data analysis, namely the vectorial represe...
In this article, the authors explore the use of graph layout algorithms for visualizing proximity ma...
175 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Scaling and clustering techni...
International audienceIn this chapter, the embedding of a set of data into a vector space is studied...
Nearest-neighbor (NN) classification has been widely used in many research areas, as it is a very in...