In this paper, we study the manifold regularization for the Sliced Inverse Regression (SIR). The manifold regularization improves the standard SIR in two aspects: 1) it encodes the local geometry for SIR and 2) it enables SIR to deal with transductive and semi-supervised learning problems. We prove that the proposed graph Laplacian based regularization is convergent at rate root-n. The projection directions of the regularized SIR are optimized by using a conjugate gradient method on the Grassmann manifold. Experimental results support our theory
ABSTRACT Manifold regularization is an approach which exploits the geometry of the marginal distrib...
This paper discusses non-parametric regression between Riemannian manifolds. This learning problem a...
We propose a family of learning algorithms based on a new form of regularization that allows us to ...
The common graph Laplacian regularizer is well-established in semi-supervised learning and spectral ...
The common graph Laplacian regularizer is well-established in semi-supervised learning and spectral ...
International audienceSliced Inverse Regression (SIR) is an effective method for dimension reduction...
International audienceIn "Li, L. and Yin, X. (2007). Sliced Inverse Regression with Regularizations....
We propose an automatic approximation of the intrinsic manifold for general semi-supervised learning...
[[abstract]]Sliced inverse regression (SIR) was developed to find effective linear dimension-reducti...
We develop an extension of sliced inverse regression (SIR) that we call localized sliced inverse reg...
We study nonparametric regression between Riemannian manifolds based on regularized empirical risk m...
Abstract. We study nonparametric regression between Riemannian manifolds based on regularized empiri...
International audienceSliced Inverse Regression (SIR) is an effective method for dimension reduction...
Manifold regularization is an approach which exploits the geometry of the marginal distribution. The...
This paper discusses non-parametric regression between Riemannian manifolds. This learning problem a...
ABSTRACT Manifold regularization is an approach which exploits the geometry of the marginal distrib...
This paper discusses non-parametric regression between Riemannian manifolds. This learning problem a...
We propose a family of learning algorithms based on a new form of regularization that allows us to ...
The common graph Laplacian regularizer is well-established in semi-supervised learning and spectral ...
The common graph Laplacian regularizer is well-established in semi-supervised learning and spectral ...
International audienceSliced Inverse Regression (SIR) is an effective method for dimension reduction...
International audienceIn "Li, L. and Yin, X. (2007). Sliced Inverse Regression with Regularizations....
We propose an automatic approximation of the intrinsic manifold for general semi-supervised learning...
[[abstract]]Sliced inverse regression (SIR) was developed to find effective linear dimension-reducti...
We develop an extension of sliced inverse regression (SIR) that we call localized sliced inverse reg...
We study nonparametric regression between Riemannian manifolds based on regularized empirical risk m...
Abstract. We study nonparametric regression between Riemannian manifolds based on regularized empiri...
International audienceSliced Inverse Regression (SIR) is an effective method for dimension reduction...
Manifold regularization is an approach which exploits the geometry of the marginal distribution. The...
This paper discusses non-parametric regression between Riemannian manifolds. This learning problem a...
ABSTRACT Manifold regularization is an approach which exploits the geometry of the marginal distrib...
This paper discusses non-parametric regression between Riemannian manifolds. This learning problem a...
We propose a family of learning algorithms based on a new form of regularization that allows us to ...