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arxiv: 1606.04366 · v3 · pith:PWZM7BYPnew · submitted 2016-06-14 · 📊 stat.ML

Recursive nonlinear-system identification using latent variables

classification 📊 stat.ML
keywords methoddevelopidentificationlatentlearningnonlinearrecursivesystems
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In this paper we develop a method for learning nonlinear systems with multiple outputs and inputs. We begin by modelling the errors of a nominal predictor of the system using a latent variable framework. Then using the maximum likelihood principle we derive a criterion for learning the model. The resulting optimization problem is tackled using a majorization-minimization approach. Finally, we develop a convex majorization technique and show that it enables a recursive identification method. The method learns parsimonious predictive models and is tested on both synthetic and real nonlinear systems.

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