Partial dimension reduction is a general method to seek informative convex combinations of predictors of primary interest, which includes dimension reduction as its special case when the predictors in the remaining part are constants. In this article, we propose a novel method to conduct partial dimension reduction estimation for predictors of primary interest without assuming that the remaining predictors are categorical. To this end, we first take the dichotomization step such that any existing approach for partial dimension reduction estimation can be employed. Then we take the expectation step to integrate over all the dichotomic predictors to identify the partial central subspace. As an example, we use the partially linear multi-index ...
This article is concerned with simple semiparametric alternatives to the fully parametric model (1) ...
We consider informative dimension reduction for regression problems with random predictors. Based on...
Abstract. Clustering (partitioning) and simultaneous dimension reduction of objects and variables of...
University of Minnesota Ph.D. dissertation. July 2011. Major: Statistics. Advisor: R. Dennis Cook. 1...
Summary Most dimension reduction models are suited for continuous but not for discrete covariates. A...
Partial linear models, a family of popular semiparametric models, provide us with an interpretable a...
In this paper, we study estimation for partial linear models. We assume radial basis funct...
This paper proposes a dimension reduction technique for estimation in linear mixed models. Specifica...
In this paper we demonstrate that a higher-ranking principal component of the predictor tends to hav...
We study partially linear single-index models where both model parts may contain high-dimensional va...
Sufficient dimension reduction (SDR) methods target finding lower-dimensional representations of a m...
Dimension reduction for regression is a prominent issue today because technological advances now all...
Abstract: In classical multiple linear regression analysis problems will occur if the regressors are...
AbstractIn this paper, we consider a semiparametric modeling with multi-indices when neither the res...
The statistical problem of estimating the effective dimension-reduction (EDR) subspace in the multi-...
This article is concerned with simple semiparametric alternatives to the fully parametric model (1) ...
We consider informative dimension reduction for regression problems with random predictors. Based on...
Abstract. Clustering (partitioning) and simultaneous dimension reduction of objects and variables of...
University of Minnesota Ph.D. dissertation. July 2011. Major: Statistics. Advisor: R. Dennis Cook. 1...
Summary Most dimension reduction models are suited for continuous but not for discrete covariates. A...
Partial linear models, a family of popular semiparametric models, provide us with an interpretable a...
In this paper, we study estimation for partial linear models. We assume radial basis funct...
This paper proposes a dimension reduction technique for estimation in linear mixed models. Specifica...
In this paper we demonstrate that a higher-ranking principal component of the predictor tends to hav...
We study partially linear single-index models where both model parts may contain high-dimensional va...
Sufficient dimension reduction (SDR) methods target finding lower-dimensional representations of a m...
Dimension reduction for regression is a prominent issue today because technological advances now all...
Abstract: In classical multiple linear regression analysis problems will occur if the regressors are...
AbstractIn this paper, we consider a semiparametric modeling with multi-indices when neither the res...
The statistical problem of estimating the effective dimension-reduction (EDR) subspace in the multi-...
This article is concerned with simple semiparametric alternatives to the fully parametric model (1) ...
We consider informative dimension reduction for regression problems with random predictors. Based on...
Abstract. Clustering (partitioning) and simultaneous dimension reduction of objects and variables of...