International audienceLet $(\bX, Y)$ be a random pair taking values in $\mathbb R^p \times \mathbb R$. In the so-called single-index model, one has $Y=f^{\star}(\theta^{\star T}\bX)+\bW$, where $f^{\star}$ is an unknown univariate measurable function, $\theta^{\star}$ is an unknown vector in $\mathbb R^d$, and $W$ denotes a random noise satisfying $\mathbb E[\bW|\bX]=0$. The single-index model is known to offer a flexible way to model a variety of high-dimensional real-world phenomena. However, despite its relative simplicity, this dimension reduction scheme is faced with severe complications as soon as the underlying dimension becomes larger than the number of observations (''$p$ larger than $n$'' paradigm). To circumvent this difficulty, ...
Generalized single-index models are natural extensions of linear models and circumvent the so-called...
Random indexing (RI) is an incremental method for constructing a vector space model (VSM) with a red...
We consider observations $(X,y)$ from single index models with unknown link function, Gaussian covar...
International audienceLet $(\bX, Y)$ be a random pair taking values in $\mathbb R^p \times \mathbb R...
Let (X,Y) be a random pair taking values in Rp×R. In the so-called single-index model, one has Y = f...
An extended single-index model is considered when responses are missing at random. A three-step esti...
In this paper, we generalize the single-index models to the scenarios with random effects. The intro...
Abstract: Single-index models offer a flexible semiparametric regression framework for high-dimensio...
We perform inference for the sparse and potentially high-dimensional parametric part of a partially ...
USA For the class of single-index models, I construct a semiparametric estimator of coefficients up ...
Consider a random vector (X ′ , Y )′ , where X is d-dimensional and Y is one-dimensional. We assume ...
In the signal+noise model, we assume that the signal has a more general sparsity structure in the se...
Aiming to explore the relation between the response y and the stochastic explanatory vector variable...
Let X1,..., Xn be a collection of iid discrete random variables, and Y1,..., Ym a set of noisy obser...
We study partially linear single-index models where both model parts may contain high-dimensional va...
Generalized single-index models are natural extensions of linear models and circumvent the so-called...
Random indexing (RI) is an incremental method for constructing a vector space model (VSM) with a red...
We consider observations $(X,y)$ from single index models with unknown link function, Gaussian covar...
International audienceLet $(\bX, Y)$ be a random pair taking values in $\mathbb R^p \times \mathbb R...
Let (X,Y) be a random pair taking values in Rp×R. In the so-called single-index model, one has Y = f...
An extended single-index model is considered when responses are missing at random. A three-step esti...
In this paper, we generalize the single-index models to the scenarios with random effects. The intro...
Abstract: Single-index models offer a flexible semiparametric regression framework for high-dimensio...
We perform inference for the sparse and potentially high-dimensional parametric part of a partially ...
USA For the class of single-index models, I construct a semiparametric estimator of coefficients up ...
Consider a random vector (X ′ , Y )′ , where X is d-dimensional and Y is one-dimensional. We assume ...
In the signal+noise model, we assume that the signal has a more general sparsity structure in the se...
Aiming to explore the relation between the response y and the stochastic explanatory vector variable...
Let X1,..., Xn be a collection of iid discrete random variables, and Y1,..., Ym a set of noisy obser...
We study partially linear single-index models where both model parts may contain high-dimensional va...
Generalized single-index models are natural extensions of linear models and circumvent the so-called...
Random indexing (RI) is an incremental method for constructing a vector space model (VSM) with a red...
We consider observations $(X,y)$ from single index models with unknown link function, Gaussian covar...