In this paper we introduce the literature on regression models with tensor variables and present a Bayesian linear model for inference, under the assumption of sparsity of the tensor coefficient. We exploit the CONDECOMP/PARAFAC (CP) representation for the tensor of coefficients in order to reduce the number of parameters and adopt a suitable hierarchical shrinkage prior for inducing sparsity. We propose a MCMC procedure via Gibbs sampler for carrying out the estimation, discussing the issues related to the initialisation of the vectors of parameters involved in the CP representation
<p>The major bottleneck in state-of-the-art Linear Parameter Varying (LPV) subspace methods is the c...
Vector data are normally used for probabilistic graphical models with Bayesian inference. However, t...
Abstract: Contingency table analysis routinely relies on log linear mod-els, with latent structure a...
In this paper we introduce the literature on regression models with tensor variables and present a B...
In this paper we present a binary regression model with tensor coefficients and present a Bayesian m...
The recent emergence of complex datasets in various disciplines presents a pressing need to devise r...
In this short paper, we discuss a novel way of constructing prior distributions for correlation matr...
Multivariate categorical data are routinely collected in several applications, including epidemiolog...
We propose novel tensor decomposition methods that advocate both properties of sparsity and robustne...
It has become routine to collect data that are structured as multiway arrays (tensors). There is an ...
In this paper, we exploit the advantages of tensorial representations and propose several tensor lea...
High- and multi-dimensional array data are becoming increasingly available. They admit a natural rep...
Multidimensional arrays (i.e. tensors) of data are becoming increasingly available and call for suit...
We present a probabilistic model for tensor decomposition where one or more tensor modes may have si...
In this paper, we exploit the advantages of tensor representations and propose a Supervised Multilin...
<p>The major bottleneck in state-of-the-art Linear Parameter Varying (LPV) subspace methods is the c...
Vector data are normally used for probabilistic graphical models with Bayesian inference. However, t...
Abstract: Contingency table analysis routinely relies on log linear mod-els, with latent structure a...
In this paper we introduce the literature on regression models with tensor variables and present a B...
In this paper we present a binary regression model with tensor coefficients and present a Bayesian m...
The recent emergence of complex datasets in various disciplines presents a pressing need to devise r...
In this short paper, we discuss a novel way of constructing prior distributions for correlation matr...
Multivariate categorical data are routinely collected in several applications, including epidemiolog...
We propose novel tensor decomposition methods that advocate both properties of sparsity and robustne...
It has become routine to collect data that are structured as multiway arrays (tensors). There is an ...
In this paper, we exploit the advantages of tensorial representations and propose several tensor lea...
High- and multi-dimensional array data are becoming increasingly available. They admit a natural rep...
Multidimensional arrays (i.e. tensors) of data are becoming increasingly available and call for suit...
We present a probabilistic model for tensor decomposition where one or more tensor modes may have si...
In this paper, we exploit the advantages of tensor representations and propose a Supervised Multilin...
<p>The major bottleneck in state-of-the-art Linear Parameter Varying (LPV) subspace methods is the c...
Vector data are normally used for probabilistic graphical models with Bayesian inference. However, t...
Abstract: Contingency table analysis routinely relies on log linear mod-els, with latent structure a...