Open Conference Systems, 50th Scientific meeting of the Italian Statistical Society

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Bayesian Dynamic Tensor Regression models
Matteo Iacopini, Monica Billio, Roberto Casarin

Last modified: 2018-05-18

Abstract


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.


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