In this paper, we present a novel semi-supervised dimensionality reduction technique to address the problems of inefficient learning and costly computation in coping with high-dimensional data. Our method named the dual subspace projections (DSP) embeds high-dimensional data in an optimal low-dimensional space, which is learned with a few user-supplied constraints and the structure of input data. The method projects data into two different subspaces respectively the kernel space and the original input space. Each projection is designed to enforce one type of constraints and projections in the two subspaces interact with each other to satisfy constraints maximally and preserve the intrinsic data structure. Compared to existing techniques, ou...
Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of di...
Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of di...
As we have witnessed the rapid growth of statistical machine learning over the past decades, the abi...
Abstract — In this work, sub-manifold projections based semi-supervised dimensionality reduction (DR...
manifold scatters, our methods can preserve the local properties of all points and discriminant stru...
International audienceTo deal with the problem of insufficient labeled data, usually side informatio...
The problem of nonlinear dimensionality reduction is considered. We focus on problems where prior in...
The problem of learning from both labeled and unlabeled data is considered. In this paper, we presen...
AbstractIn this paper, we consider the problem of semi-supervised dimensionality reduction. We focus...
In this paper, we propose a nonlinear dimensionality reduction method aimed at extracting lower-dime...
Facing with high-dimensional data, dimensionality reduction is an essential technique for overcoming...
We propose a novel method of dimensionality reduction for supervised learning. Given a regression or...
We consider supervised dimension reduction (SDR) for problems with discrete inputs. Existing methods...
Datasets with significantly larger number of features, compared to samples, pose a serious challenge...
Learning tasks such as classification and clustering usually perform better and cost less (time and ...
Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of di...
Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of di...
As we have witnessed the rapid growth of statistical machine learning over the past decades, the abi...
Abstract — In this work, sub-manifold projections based semi-supervised dimensionality reduction (DR...
manifold scatters, our methods can preserve the local properties of all points and discriminant stru...
International audienceTo deal with the problem of insufficient labeled data, usually side informatio...
The problem of nonlinear dimensionality reduction is considered. We focus on problems where prior in...
The problem of learning from both labeled and unlabeled data is considered. In this paper, we presen...
AbstractIn this paper, we consider the problem of semi-supervised dimensionality reduction. We focus...
In this paper, we propose a nonlinear dimensionality reduction method aimed at extracting lower-dime...
Facing with high-dimensional data, dimensionality reduction is an essential technique for overcoming...
We propose a novel method of dimensionality reduction for supervised learning. Given a regression or...
We consider supervised dimension reduction (SDR) for problems with discrete inputs. Existing methods...
Datasets with significantly larger number of features, compared to samples, pose a serious challenge...
Learning tasks such as classification and clustering usually perform better and cost less (time and ...
Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of di...
Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of di...
As we have witnessed the rapid growth of statistical machine learning over the past decades, the abi...