AbstractIn this paper, we propose a new semi-supervised DR method called sparse projections with pairwise constraints (SPPC). Unlike many existing techniques such as locality preserving projection (LPP) and semi-supervised DR (SSDR), where local or global information is preserved during the DR procedure, SPPC constructs a graph embedding model, which encodes the global and local geometrical structures in the data as well as the pairwise constraints. After obtaining the embedding results, sparse projections can be acquired by minimizing a L1 regularization-related objective function. Experiments on real-world data sets show that SPPC is superior to many established dimensionality reduction methods
We present a new method for simplifying SDPs that blends aspects of symmetry reduction with sparsity...
This paper presents a novel symmetric graph regularization framework for pairwise constraint propaga...
Dimensionality Reduction (DR) is the process of finding a reduced representation of a data set accor...
AbstractIn this paper, we propose a new semi-supervised DR method called sparse projections with pai...
The deficiency of the ability for preserving global geometric structure information of data is the m...
In this paper, we present a novel semi-supervised dimensionality reduction technique to address the ...
manifold scatters, our methods can preserve the local properties of all points and discriminant stru...
Abstract — In this work, sub-manifold projections based semi-supervised dimensionality reduction (DR...
Abstract—Semi-supervised clustering aims to incorporate the known prior knowledge into the clusterin...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
Abstract — Two novel unsupervised dimensionality reduction techniques, termed sparse distance preser...
Abstract: Dimensionality reduction methods (DRs) have commonly been used as a principled way to unde...
Most learning methods with rank or spar-sity constraints use convex relaxations, which lead to optim...
This paper presents a novel symmetric graph regularization framework for pairwise constraint propaga...
AbstractIn this paper, we consider the problem of semi-supervised dimensionality reduction. We focus...
We present a new method for simplifying SDPs that blends aspects of symmetry reduction with sparsity...
This paper presents a novel symmetric graph regularization framework for pairwise constraint propaga...
Dimensionality Reduction (DR) is the process of finding a reduced representation of a data set accor...
AbstractIn this paper, we propose a new semi-supervised DR method called sparse projections with pai...
The deficiency of the ability for preserving global geometric structure information of data is the m...
In this paper, we present a novel semi-supervised dimensionality reduction technique to address the ...
manifold scatters, our methods can preserve the local properties of all points and discriminant stru...
Abstract — In this work, sub-manifold projections based semi-supervised dimensionality reduction (DR...
Abstract—Semi-supervised clustering aims to incorporate the known prior knowledge into the clusterin...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
Abstract — Two novel unsupervised dimensionality reduction techniques, termed sparse distance preser...
Abstract: Dimensionality reduction methods (DRs) have commonly been used as a principled way to unde...
Most learning methods with rank or spar-sity constraints use convex relaxations, which lead to optim...
This paper presents a novel symmetric graph regularization framework for pairwise constraint propaga...
AbstractIn this paper, we consider the problem of semi-supervised dimensionality reduction. We focus...
We present a new method for simplifying SDPs that blends aspects of symmetry reduction with sparsity...
This paper presents a novel symmetric graph regularization framework for pairwise constraint propaga...
Dimensionality Reduction (DR) is the process of finding a reduced representation of a data set accor...