Title :
An Approach to Sparse Model Selection and Averaging
Author :
Selén, Y. ; Gudmundson, E. ; Stoica, P.
Author_Institution :
Dept. of Inf. Technol., Uppsala Univ.
Abstract :
Parameter estimation when the true model structure is unknown is a commonly occurring task in measurement problems. In a sparse modeling scenario, the number of possible models grows exponentially with the total number of parameters. The full set of models therefore becomes computationally infeasible to handle. We propose a method, based on successive model reduction, for finding a sound and computationally feasible set of sparse linear regression models. Once this set of models has been found, standard model selection or model averaging techniques can be applied. We demonstrate the performance of our method by some numerical examples
Keywords :
parameter estimation; reduced order systems; regression analysis; signal processing; parameter estimation; sparse linear regression models; sparse model averaging; sparse model selection; successive model reduction; Computational modeling; Information technology; Instrumentation and measurement; Least squares approximation; Linear regression; Maximum likelihood estimation; Parameter estimation; Reduced order systems; Vectors; White noise; channel measurement; least squares estimation; linear systems; model reduction; parameter estimation; signal processing; system identification;
Conference_Titel :
Instrumentation and Measurement Technology Conference, 2006. IMTC 2006. Proceedings of the IEEE
Conference_Location :
Sorrento
Print_ISBN :
0-7803-9359-7
Electronic_ISBN :
1091-5281
DOI :
10.1109/IMTC.2006.328295