Title :
Parametric complexity reduction of Volterra models using tensor decompositions
Author :
Favier, Gerard ; Bouilloc, Thomas
Author_Institution :
Lab. I3S, Univ. of Nice Sophia Antipolis, Sophia Antipolis, France
Abstract :
Discrete-time Volterra models play an important role in many application areas. The main drawback of these models is their parametric complexity due to the huge number of their parameters, the kernel coefficients. Using the symmetry property of the Volterra kernels, these ones can be viewed as symmetric tensors. In this paper, we apply tensor decompositions (PARAFAC and HOSVD) for reducing the kernel parametric complexity. Using the PARAFAC decomposition, we also show that Volterra models can be viewed as Wiener models in parallel. Simulation results illustrate the effectiveness of tensor decompositions for reducing the parametric complexity of cubic Volterra models.
Keywords :
Volterra equations; stochastic processes; tensors; HOSVD; PARAFAC decomposition; Volterra kernels; Wiener models; cubic Volterra models; discrete-time Volterra models; kernel coefficients; kernel parametric complexity; parametric complexity reduction; symmetric tensors; symmetry property; tensor decompositions; Complexity theory; Kernel; Matrix decomposition; Signal to noise ratio; Symmetric matrices; Tensile stress; Vectors;
Conference_Titel :
Signal Processing Conference, 2009 17th European
Conference_Location :
Glasgow
Print_ISBN :
978-161-7388-76-7