Self-Concordant Barriers for Convex Approximations of Structured Convex Sets

We show how to approximate the feasible region of structured convex optimization problems by a family of convex sets with explicitly given and efficient (if the accuracy of the approximation is moderate) self-concordant barriers. This approach extends the reach of the modern theory of interior-point...

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Published inFoundations of computational mathematics Vol. 10; no. 5; pp. 485 - 525
Main Authors Tunçel, Levent, Nemirovski, Arkadi
Format Journal Article
LanguageEnglish
Published New York Springer-Verlag 01.10.2010
Springer
Springer Nature B.V
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ISSN1615-3375
1615-3383
DOI10.1007/s10208-010-9069-x

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Summary:We show how to approximate the feasible region of structured convex optimization problems by a family of convex sets with explicitly given and efficient (if the accuracy of the approximation is moderate) self-concordant barriers. This approach extends the reach of the modern theory of interior-point methods, and lays the foundation for new ways to treat structured convex optimization problems with a very large number of constraints. Moreover, our approach provides a strong connection from the theory of self-concordant barriers to the combinatorial optimization literature on solving packing and covering problems.
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ISSN:1615-3375
1615-3383
DOI:10.1007/s10208-010-9069-x