High-dimensional data visualization is receiving increasing interest because of the growing abundance of high-dimensional datasets. To understand such datasets, visualization of the structures present in the data, such as clusters, can be an invaluable tool. Structures may be present in the full high-dimensional space, as well as in its subspaces. Two widely used methods to visualize high-dimensional data are the scatter plot matrix (SPM) and the parallel coordinate plot (PCP). SPM allows a quick overview of the structures present in pairwise combinations of dimensions. On the other hand, PCP has the potential to visualize not only bi-dimensional structures but also higher dimensional ones. A problem with SPM is that it suffers from crowdin...
Data sets in many scientific areas are growing to enormous sizes. For example, modern astronomical s...
Subspace clustering addresses an important problem in clustering multi-dimensional data. In sparse m...
Subspace clustering addresses an important problem in clustering multi-dimensional data. In sparse m...
High-dimensional data visualization is receiving increasing interest because of the growing abundanc...
High-dimensional data visualization is receiving increasing interest because of the growing abundanc...
High-dimensional data visualization is receiving increasing interest because of the growing abundanc...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
Due to the technological progress over the last decades, today’s scientific and commercial applicati...
Data sets in astronomy are growing to enormous sizes. Modern astronomical surveys provide not only i...
Data sets in astronomy are growing to enormous sizes. Modern astronomical surveys provide not only i...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
Subspace-based analysis has increasingly become the preferred method for clustering high-dimensional...
Subspace-based analysis has increasingly become the preferred method for clustering high-dimensional...
Data sets in many scientific areas are growing to enormous sizes. For example, modern astronomical s...
Subspace clustering addresses an important problem in clustering multi-dimensional data. In sparse m...
Subspace clustering addresses an important problem in clustering multi-dimensional data. In sparse m...
High-dimensional data visualization is receiving increasing interest because of the growing abundanc...
High-dimensional data visualization is receiving increasing interest because of the growing abundanc...
High-dimensional data visualization is receiving increasing interest because of the growing abundanc...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
Due to the technological progress over the last decades, today’s scientific and commercial applicati...
Data sets in astronomy are growing to enormous sizes. Modern astronomical surveys provide not only i...
Data sets in astronomy are growing to enormous sizes. Modern astronomical surveys provide not only i...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
Subspace-based analysis has increasingly become the preferred method for clustering high-dimensional...
Subspace-based analysis has increasingly become the preferred method for clustering high-dimensional...
Data sets in many scientific areas are growing to enormous sizes. For example, modern astronomical s...
Subspace clustering addresses an important problem in clustering multi-dimensional data. In sparse m...
Subspace clustering addresses an important problem in clustering multi-dimensional data. In sparse m...