%0 Journal Article %@ 0005-1098 %A Breschi, Valentina %A Piga, Dario %A Bemporad, Alberto %D 2016 %F eprints:3545 %I Elsevier %J Automatica %K PWA regression; System identification; Clustering; Recursive multiple least squares; Multicategory discrimination %P 155 - 162 %T Piecewise affine regression via recursive multiple least squares and multicategory discrimination %U http://eprints.imtlucca.it/3545/ %V 73 %X In nonlinear regression choosing an adequate model structure is often a challenging problem. While simple models (such as linear functions) may not be able to capture the underlying relationship among the variables, over-parametrized models described by a large set of nonlinear basis functions tend to overfit the training data, leading to poor generalization on unseen data. Piecewise-affine (PWA) models can describe nonlinear and possible discontinuous relationships while maintaining simple local affine regressor-to-output mappings, with extreme flexibility when the polyhedral partitioning of the regressor space is learned from data rather than fixed a priori. In this paper, we propose a novel and numerically very efficient two-stage approach for {PWA} regression based on a combined use of (i) recursive multi-model least-squares techniques for clustering and fitting linear functions to data, and (ii) linear multi-category discrimination, either offline (batch) via a Newton-like algorithm for computing a solution of unconstrained optimization problems with objective functions having a piecewise smooth gradient, or online (recursive) via averaged stochastic gradient descent. %Z SCOPUS ID: 2-s2.0-84986593950