AbstractPreviously, we introduced a distance (similarity)-based mapping for the visualization of high-dimensional patterns and their relative relationships. The mapping preserves exactly the original distances from all points to any two reference patterns in a special two-dimensional coordinate system, the relative distance plane (RDP). We extend the RDP mapping’s applicability from visualization to classification. Several of the classifiers use the RDP directly. These include the standard linear discriminant analysis (LDA), nearest neighbor classifiers, and a transvariation probabilities-based classification method that is natural in the RDP. Several reference directions can also be combined to create new coordinate systems in which arbitr...
In this paper we address the issue of using local embeddings for data visualization in two and three...
Abstract. We discuss the utility of dimensionality reduction algorithms to put data points in high d...
Abstract. We discuss the utility of dimensionality reduction algorithms to put data points in high d...
AbstractPreviously, we introduced a distance (similarity)-based mapping for the visualization of hig...
AbstractWe introduce a distance (similarity)—based mapping for the visualization of high-dimensional...
AbstractFor two-class problems, we introduce and construct mappings of high-dimensional instances in...
For two-class problems, we introduce and construct mappings of high-dimensional instances into dissi...
In this paper, we propose to view the problem of classifier evaluation in terms of a projection from...
Many applications in science and business such as signal analysis or costumer segmentation deal with...
Dimensionality reduction is a compelling alternative for high-dimensional data visualization. This m...
In this paper we investigate the feasibility of some typical techniques of pattern recognition for t...
We consider the problem of investigating the ‘‘structure’ ’ of a set of points in high-dimensional s...
In this paper we investigate the feasibility of some typical techniques of pattern recognition for ...
In this paper we investigate the feasibility of some typical techniques of pattern recognition for t...
When high-dimensional data vectors are visualized on a two- or three-dimensional display, the goal i...
In this paper we address the issue of using local embeddings for data visualization in two and three...
Abstract. We discuss the utility of dimensionality reduction algorithms to put data points in high d...
Abstract. We discuss the utility of dimensionality reduction algorithms to put data points in high d...
AbstractPreviously, we introduced a distance (similarity)-based mapping for the visualization of hig...
AbstractWe introduce a distance (similarity)—based mapping for the visualization of high-dimensional...
AbstractFor two-class problems, we introduce and construct mappings of high-dimensional instances in...
For two-class problems, we introduce and construct mappings of high-dimensional instances into dissi...
In this paper, we propose to view the problem of classifier evaluation in terms of a projection from...
Many applications in science and business such as signal analysis or costumer segmentation deal with...
Dimensionality reduction is a compelling alternative for high-dimensional data visualization. This m...
In this paper we investigate the feasibility of some typical techniques of pattern recognition for t...
We consider the problem of investigating the ‘‘structure’ ’ of a set of points in high-dimensional s...
In this paper we investigate the feasibility of some typical techniques of pattern recognition for ...
In this paper we investigate the feasibility of some typical techniques of pattern recognition for t...
When high-dimensional data vectors are visualized on a two- or three-dimensional display, the goal i...
In this paper we address the issue of using local embeddings for data visualization in two and three...
Abstract. We discuss the utility of dimensionality reduction algorithms to put data points in high d...
Abstract. We discuss the utility of dimensionality reduction algorithms to put data points in high d...