The deficiency of the ability for preserving global geometric structure information of data is the main problem of existing semi-supervised dimensionality reduction with pairwise constraints. A dimensionality reduction algorithm called Semi-supervised Sparsity Pairwise Constraint Preserving Projections based on Genetic Algorithm (SSPCPPGA) is proposed. On the one hand, the algorithm fuses unsupervised sparse reconstruction feature information and supervised pairwise constraint feature information in the process of dimensionality reduction, preserving geometric structure in samples and constraint relation of samples simultaneously. On the other hand , the algorithm introduces the genetic algorithm to set automatically the weighted trade-off ...
Abstract — Two novel unsupervised dimensionality reduction techniques, termed sparse distance preser...
International audienceThis paper concerns feature selection using supervised classification on high ...
We discuss a coevolutionary genetic algorithm for constraint satisfaction. Our basic idea is to expl...
AbstractIn this paper, we propose a new semi-supervised DR method called sparse projections with pai...
In this paper, we present a novel semi-supervised dimensionality reduction technique to address the ...
Abstract — In this work, sub-manifold projections based semi-supervised dimensionality reduction (DR...
In this paper we present a GP-based method for automatically evolve projections, so that data can be...
This article presents a two-phase scheme to select reduced number of features from a dataset using G...
AbstractIn this paper, we consider the problem of semi-supervised dimensionality reduction. We focus...
manifold scatters, our methods can preserve the local properties of all points and discriminant stru...
Abstract: Dimensionality reduction methods (DRs) have commonly been used as a principled way to unde...
In this paper we present a GP-based method for automatically evolve projections, so that data can be...
Classification problem especially for high dimensional datasets have attracted many researchers in o...
Accurate classification of data sets is an important phenomenon for many applications. While multi-d...
Dimensionality reduction techniques such as feature extraction and feature selection are critical to...
Abstract — Two novel unsupervised dimensionality reduction techniques, termed sparse distance preser...
International audienceThis paper concerns feature selection using supervised classification on high ...
We discuss a coevolutionary genetic algorithm for constraint satisfaction. Our basic idea is to expl...
AbstractIn this paper, we propose a new semi-supervised DR method called sparse projections with pai...
In this paper, we present a novel semi-supervised dimensionality reduction technique to address the ...
Abstract — In this work, sub-manifold projections based semi-supervised dimensionality reduction (DR...
In this paper we present a GP-based method for automatically evolve projections, so that data can be...
This article presents a two-phase scheme to select reduced number of features from a dataset using G...
AbstractIn this paper, we consider the problem of semi-supervised dimensionality reduction. We focus...
manifold scatters, our methods can preserve the local properties of all points and discriminant stru...
Abstract: Dimensionality reduction methods (DRs) have commonly been used as a principled way to unde...
In this paper we present a GP-based method for automatically evolve projections, so that data can be...
Classification problem especially for high dimensional datasets have attracted many researchers in o...
Accurate classification of data sets is an important phenomenon for many applications. While multi-d...
Dimensionality reduction techniques such as feature extraction and feature selection are critical to...
Abstract — Two novel unsupervised dimensionality reduction techniques, termed sparse distance preser...
International audienceThis paper concerns feature selection using supervised classification on high ...
We discuss a coevolutionary genetic algorithm for constraint satisfaction. Our basic idea is to expl...