Nonlinear dimensionality reduction (NLDR) methods aim to provide a faithful low-dimensional representation of multivariate data. The manifold learning family of NLDR methods, in particular, do this by defining low-dimensional manifolds embedded in the observed data space. Generative Topographic Mapping (GTM) is one such manifold learning method for multivariate data clustering and visualization. The non-linearity of the mapping it generates makes it prone to trustworthiness and continuity errors that would reduce the faithfulness of the data representation, especially for datasets of convoluted geometry. In this study, the GTM is modified to prioritize neighbourhood relationships along the generated manifold. This is accomplished through pe...
The Generative Topographic Mapping (GTM) algorithm of Bishop et al. (1997) has been introduced as a ...
Paper presented at ICANN 2001: Procs of the Int Conf on Artificial Neural NetworksIn data visualizat...
Numerous methods or algorithms have been designed to solve the problem of nonlinear dimensionality r...
Nonlinear dimensionality reduction (NLDR) methods aim to provide a faithful low-dimensional represen...
Generative Topographic Mapping (GTM) is a probabilistic latent variable model for multivariate data ...
Abstract. In many real-world application problems, the availability of data labels for supervised le...
Dimensionality reduction is required to produce visualisations of high dimensional data. In this fra...
Most high-dimensional data exhibit some correlation such that data points are not distributed unifor...
Most high-dimensional real-life data exhibit some dependencies such that data points do not populate...
In many real problems that ultimately require data classification, not all the class labels are read...
Probabilistic Dimensionality Reduction methods can provide a flexible data representation and a more...
Dimensionality reduction is required to produce visualisations of high dimensional data. In this fra...
Manifold learning models attempt to parsimoniously describe multivariate data through a low-dimensio...
In recent years, nonlinear dimensionality reduction (NLDR) techniques have attracted much attention ...
This thesis describes the Generative Topographic Mapping (GTM) --- a non-linear latent variable mode...
The Generative Topographic Mapping (GTM) algorithm of Bishop et al. (1997) has been introduced as a ...
Paper presented at ICANN 2001: Procs of the Int Conf on Artificial Neural NetworksIn data visualizat...
Numerous methods or algorithms have been designed to solve the problem of nonlinear dimensionality r...
Nonlinear dimensionality reduction (NLDR) methods aim to provide a faithful low-dimensional represen...
Generative Topographic Mapping (GTM) is a probabilistic latent variable model for multivariate data ...
Abstract. In many real-world application problems, the availability of data labels for supervised le...
Dimensionality reduction is required to produce visualisations of high dimensional data. In this fra...
Most high-dimensional data exhibit some correlation such that data points are not distributed unifor...
Most high-dimensional real-life data exhibit some dependencies such that data points do not populate...
In many real problems that ultimately require data classification, not all the class labels are read...
Probabilistic Dimensionality Reduction methods can provide a flexible data representation and a more...
Dimensionality reduction is required to produce visualisations of high dimensional data. In this fra...
Manifold learning models attempt to parsimoniously describe multivariate data through a low-dimensio...
In recent years, nonlinear dimensionality reduction (NLDR) techniques have attracted much attention ...
This thesis describes the Generative Topographic Mapping (GTM) --- a non-linear latent variable mode...
The Generative Topographic Mapping (GTM) algorithm of Bishop et al. (1997) has been introduced as a ...
Paper presented at ICANN 2001: Procs of the Int Conf on Artificial Neural NetworksIn data visualizat...
Numerous methods or algorithms have been designed to solve the problem of nonlinear dimensionality r...