We propose a novel method of dimensionality reduction for supervised learning. Given a regression or classification problem in which we wish to predict a variable Y from an explanatory vector X, we treat the problem of dimensionality reduction as that of finding a low-dimensional “effective subspace ” of X which retains the statistical relationship between X and Y. We show that this problem can be formulated in terms of conditional independence. To turn this formulation into an optimization problem, we characterize the notion of conditional independence using covariance operators on reproducing kernel Hilbert spaces; this allows us to derive a contrast function for estimation of the effective subspace. Unlike many conventional methods, the ...
Sufficient dimension reduction (SDR) methods target finding lower-dimensional representations of a m...
We consider the task of dimensionality reduction for re-gression (DRR) whose goal is to find a low d...
Dimensionality Reduction (DR) is the process of finding a reduced representation of a data set accor...
We propose a novel method of dimensionality reduction for supervised learning. Given a regression or...
Facing with high-dimensional data, dimensionality reduction is an essential technique for overcoming...
Many prediction problems that arise in computer vision and robotics can be formulated within a regre...
We propose nonparametric Bayesian models for supervised dimension reduction and regression problems....
The goal of supervised representation learning is to construct effective data representations for pr...
Dimensionality reduction using feature extraction and selection approaches is a common stage of many...
In this paper, we propose a nonlinear dimensionality reduction method aimed at extracting lower-dime...
Dimensionality reduction of empirical co-occurrence data is a fundamental problem in un-supervised l...
We present a new methodology for sufficient dimension reduction (SDR). Our methodology derives dire...
This article proposes a novel approach to linear dimension reduction for regression using nonparamet...
Given a classification problem, our goal is to find a low-dimensional linear transformation of the f...
In this paper, we present a novel semi-supervised dimensionality reduction technique to address the ...
Sufficient dimension reduction (SDR) methods target finding lower-dimensional representations of a m...
We consider the task of dimensionality reduction for re-gression (DRR) whose goal is to find a low d...
Dimensionality Reduction (DR) is the process of finding a reduced representation of a data set accor...
We propose a novel method of dimensionality reduction for supervised learning. Given a regression or...
Facing with high-dimensional data, dimensionality reduction is an essential technique for overcoming...
Many prediction problems that arise in computer vision and robotics can be formulated within a regre...
We propose nonparametric Bayesian models for supervised dimension reduction and regression problems....
The goal of supervised representation learning is to construct effective data representations for pr...
Dimensionality reduction using feature extraction and selection approaches is a common stage of many...
In this paper, we propose a nonlinear dimensionality reduction method aimed at extracting lower-dime...
Dimensionality reduction of empirical co-occurrence data is a fundamental problem in un-supervised l...
We present a new methodology for sufficient dimension reduction (SDR). Our methodology derives dire...
This article proposes a novel approach to linear dimension reduction for regression using nonparamet...
Given a classification problem, our goal is to find a low-dimensional linear transformation of the f...
In this paper, we present a novel semi-supervised dimensionality reduction technique to address the ...
Sufficient dimension reduction (SDR) methods target finding lower-dimensional representations of a m...
We consider the task of dimensionality reduction for re-gression (DRR) whose goal is to find a low d...
Dimensionality Reduction (DR) is the process of finding a reduced representation of a data set accor...