Many real life applications brought by modern technologies often have multiple data sources, which are usually characterized by both attributes and pairwise similarities at the same time. For example in webpage ranking, a webpage is usually represented by a vector of term values, and meanwhile the internet linkages induce pairwise similarities among the webpages. Although both attributes and pairwise similarities are useful for class membership inference, many traditional embedding algorithms only deal with one type of input data. In order to make use of the both types of data simultaneously, in this work, we propose a novel Discriminant Laplacian Embedding (DLE) approach. Supervision information from training data are integrated into DLE t...
We had previously proposed a supervised Laplacian eigenmap for visualization (SLE-ML) that can handl...
Multi-label problems arise in various domains such as multi-topic document categorization and protei...
<p> Multilabel learning has a wide range of potential applications in reality. It attracts a great ...
Many real life applications brought by modern technologies often have multiple data sources, which a...
Typical Laplacian embedding focuses on building Laplacian matrices prior to minimizing weights of co...
Dimensionality reduction is an important issue for numerous applications including biomedical images...
Discriminant feature extraction plays a fundamental role in pattern recognition. In this paper, we p...
Linear discriminant analysis (LDA) is a classical statistical machine-learning method, which aims to...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
This paper introduces Discriminant Pairwise Local Embed-dings (DPLE) a supervised dimensionality red...
In this paper we present methods of enhancing existing discriminative classifiers for multi-labeled ...
In multi-label learning, each object is represented by a single instance and is associated with more...
Manifold learning is a powerful tool for solving nonlinear dimension reduction problems. By assuming...
Although adversarial domain adaptation enhances feature transferability, the feature discriminabilit...
We present a new approach, called local discriminant em-bedding (LDE), to manifold learning and patt...
We had previously proposed a supervised Laplacian eigenmap for visualization (SLE-ML) that can handl...
Multi-label problems arise in various domains such as multi-topic document categorization and protei...
<p> Multilabel learning has a wide range of potential applications in reality. It attracts a great ...
Many real life applications brought by modern technologies often have multiple data sources, which a...
Typical Laplacian embedding focuses on building Laplacian matrices prior to minimizing weights of co...
Dimensionality reduction is an important issue for numerous applications including biomedical images...
Discriminant feature extraction plays a fundamental role in pattern recognition. In this paper, we p...
Linear discriminant analysis (LDA) is a classical statistical machine-learning method, which aims to...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
This paper introduces Discriminant Pairwise Local Embed-dings (DPLE) a supervised dimensionality red...
In this paper we present methods of enhancing existing discriminative classifiers for multi-labeled ...
In multi-label learning, each object is represented by a single instance and is associated with more...
Manifold learning is a powerful tool for solving nonlinear dimension reduction problems. By assuming...
Although adversarial domain adaptation enhances feature transferability, the feature discriminabilit...
We present a new approach, called local discriminant em-bedding (LDE), to manifold learning and patt...
We had previously proposed a supervised Laplacian eigenmap for visualization (SLE-ML) that can handl...
Multi-label problems arise in various domains such as multi-topic document categorization and protei...
<p> Multilabel learning has a wide range of potential applications in reality. It attracts a great ...