In many real problems that ultimately require data classification, not all the class labels are readily available. This concerns the field of semi-supervised learning, in which missing class labels must be inferred from the available ones as well as from the natural cluster structure of the data. This structure can sometimes be quite convoluted. Previous research has shown the advantage, for these cases, of using the geodesic metric in clustering models of the manifold learning family to reveal the underlying true data structure. In this brief paper, we present a novel semi-supervised approach, namely Semi-Supervised Geo-GTM (SS-Geo-GTM). This is an extension of Geo-GTM, a variation on the Generative Topographic Mapping (GTM) manifold learn...
We propose a family of learning algorithms based on a new form of regularization that allows us to ...
The goal of classical geodetic data analysis is often to estimate distributional parameters like exp...
Abstract We review a new form of self-organizing map introduced in [5] which is based on a non-linea...
In many real problems that ultimately require data classification, not all the class labels are read...
Abstract. In many real-world application problems, the availability of data labels for supervised le...
In many real-world application problems, the availability of data labels for supervised learning is ...
Nonlinear dimensionality reduction (NLDR) methods aim to provide a faithful low-dimensional represen...
Abstract — Geodesic distance, as an essential measurement for data dissimilarity, has been successfu...
Abstract—Manifold learning is an important feature extrac-tion approach in data mining. This paper p...
Generative Topographic Mapping (GTM) is a probabilistic latent variable model for multivariate data ...
Geodesic distance, as an essential measurement for data dissimilarity, has been successfully used in...
For many real-world application problems, the availability of data labels for supervised learning is...
In this article, a manifold learning algorithm based on straight-like geodesics and local coordinate...
Abstract. Inmanymachine learningproblems,high-dimensionaldatasets often lie on or near manifolds of ...
Recent years have seen a growing number of graph-based semi-supervised learning methods. While the l...
We propose a family of learning algorithms based on a new form of regularization that allows us to ...
The goal of classical geodetic data analysis is often to estimate distributional parameters like exp...
Abstract We review a new form of self-organizing map introduced in [5] which is based on a non-linea...
In many real problems that ultimately require data classification, not all the class labels are read...
Abstract. In many real-world application problems, the availability of data labels for supervised le...
In many real-world application problems, the availability of data labels for supervised learning is ...
Nonlinear dimensionality reduction (NLDR) methods aim to provide a faithful low-dimensional represen...
Abstract — Geodesic distance, as an essential measurement for data dissimilarity, has been successfu...
Abstract—Manifold learning is an important feature extrac-tion approach in data mining. This paper p...
Generative Topographic Mapping (GTM) is a probabilistic latent variable model for multivariate data ...
Geodesic distance, as an essential measurement for data dissimilarity, has been successfully used in...
For many real-world application problems, the availability of data labels for supervised learning is...
In this article, a manifold learning algorithm based on straight-like geodesics and local coordinate...
Abstract. Inmanymachine learningproblems,high-dimensionaldatasets often lie on or near manifolds of ...
Recent years have seen a growing number of graph-based semi-supervised learning methods. While the l...
We propose a family of learning algorithms based on a new form of regularization that allows us to ...
The goal of classical geodetic data analysis is often to estimate distributional parameters like exp...
Abstract We review a new form of self-organizing map introduced in [5] which is based on a non-linea...