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Subspace System Identification via Weighted Nuclear Norm Optimization
We present a subspace system identification method based on weighted nuclear
norm approximation. The weight matrices used in the nuclear norm minimization
are the same weights as used in standard subspace identification methods. We
show that the inclusion of the weights improves the performance in terms of fit
on validation data. As a second benefit, the weights reduce the size of the
optimization problems that need to be solved. Experimental results from
randomly generated examples as well as from the Daisy benchmark collection are
reported. The key to an efficient implementation is the use of the alternating
direction method of multipliers to solve the optimization problem.Comment: Submitted to IEEE Conference on Decision and Contro
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