About

Log in?

DTU users get better search results including licensed content and discounts on order fees.

Anyone can log in and get personalized features such as favorites, tags and feeds.

Log in as DTU user Log in as non-DTU user No thanks

DTU Findit

Journal article

Robust Solutions to Least-Squares Problems with Uncertain Data

We consider least-squares problems where the coefficient matrices A,b are unknown but bounded. We minimize the worst-case residual error using (convex) second-order cone programming, yielding an algorithm with complexity similar to one singular value decomposition of A. The method can be interpreted as a Tikhonov regularization procedure, with the advantage that it provides an exact bound on the robustness of solution and a rigorous way to compute the regularization parameter.

When the perturbation has a known (e.g., Toeplitz) structure, the same problem can be solved in polynomial-time using semidefinite programming (SDP). We also consider the case when A,b are rational functions of an unknown-but-bounded perturbation vector. We show how to minimize (via SDP) upper bounds on the optimal worst-case residual.

We provide numerical examples, including one from robust identification and one from robust interpolation.

Language: Undetermined
Year: 1997
Pages: 1035-1064
ISSN: 10957162 and 08954798
Types: Journal article
DOI: 10.1137/S0895479896298130

DTU users get better search results including licensed content and discounts on order fees.

Log in as DTU user

Access

Analysis