Summary: We introduce a novel unsupervised approach for the organization and visualization of multidimensional data. At the heart of the method is a presentation of the full pairwise distance matrix of the data points, viewed in pseudocolor. The ordering of points is iteratively permuted in search of a linear ordering, which can be used to study embedded shapes. Several examples indicate how the shapes of cer-tain structures in the data (elongated, circular and compact) manifest themselves visually in our permuted distance matrix. It is important to identify the elongated objects since they are often associated with a set of hidden variables, underlying continuous variation in the data. The problem of determining an optimal linear ordering ...
Matrix visualization is an established technique in the analysis of relational data. It is applicabl...
Undirected graphs are frequently used to model phenomena that deal with interacting objects, such as...
1. A new method of quantifying spatial pattern was introduced for two-dimensional mapped data, with ...
Summary: We introduce a novel unsupervised approach for the organization and visualization of multid...
In data-driven applications, understanding the structural relationship in the given data can greatly...
Least squares multidimensional scaling (MDS) is a classical method for representing a nxn dissimilar...
We examine the problem of finding similar tumor shapes. Starting from a natural similarity function ...
175 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Scaling and clustering techni...
Analysis of the spatial distributions of objects is fundamental to biomedical image interpretation. ...
The human DNA is a 3.1 billion long string of organic molecules, represented by four unique letters,...
Cluster analysis methods are used to classify R unlabeled objects in a P-dimensional space into grou...
In recent years, modern technologies have enabled the collection of exponentially larger quantities ...
Abstract Recently, batch optimization schemes of the self-organizing map (SOM) and neural gas (NG) ...
Hammer B, Hasenfuss A. Topographic Mapping of Large Dissimilarity Data Sets. Neural Computation. 201...
In statistics one can distinguish three cases: 1) datasets where the number of dimensions is many ti...
Matrix visualization is an established technique in the analysis of relational data. It is applicabl...
Undirected graphs are frequently used to model phenomena that deal with interacting objects, such as...
1. A new method of quantifying spatial pattern was introduced for two-dimensional mapped data, with ...
Summary: We introduce a novel unsupervised approach for the organization and visualization of multid...
In data-driven applications, understanding the structural relationship in the given data can greatly...
Least squares multidimensional scaling (MDS) is a classical method for representing a nxn dissimilar...
We examine the problem of finding similar tumor shapes. Starting from a natural similarity function ...
175 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Scaling and clustering techni...
Analysis of the spatial distributions of objects is fundamental to biomedical image interpretation. ...
The human DNA is a 3.1 billion long string of organic molecules, represented by four unique letters,...
Cluster analysis methods are used to classify R unlabeled objects in a P-dimensional space into grou...
In recent years, modern technologies have enabled the collection of exponentially larger quantities ...
Abstract Recently, batch optimization schemes of the self-organizing map (SOM) and neural gas (NG) ...
Hammer B, Hasenfuss A. Topographic Mapping of Large Dissimilarity Data Sets. Neural Computation. 201...
In statistics one can distinguish three cases: 1) datasets where the number of dimensions is many ti...
Matrix visualization is an established technique in the analysis of relational data. It is applicabl...
Undirected graphs are frequently used to model phenomena that deal with interacting objects, such as...
1. A new method of quantifying spatial pattern was introduced for two-dimensional mapped data, with ...