Author:
Coey Chris,Kapelevich Lea,Vielma Juan Pablo
Abstract
AbstractIn recent work, we provide computational arguments for expanding the class of proper cones recognized by conic optimization solvers, to permit simpler, smaller, more natural conic formulations. We define an exotic cone as a proper cone for which we can implement a small set of tractable (i.e. fast, numerically stable, analytic) oracles for a logarithmically homogeneous self-concordant barrier for the cone or for its dual cone. Our extensible, open-source conic interior point solver, Hypatia, allows modeling and solving any conic problem over a Cartesian product of exotic cones. In this paper, we introduce Hypatia’s interior point algorithm, which generalizes that of Skajaa and Ye (Math. Program. 150(2):391–422, 2015) by handling exotic cones without tractable primal oracles. To improve iteration count and solve time in practice, we propose four enhancements to the interior point stepping procedure of Skajaa and Ye: (1) loosening the central path proximity conditions, (2) adjusting the directions using a third order directional derivative barrier oracle, (3) performing a backtracking search on a curve, and (4) combining the prediction and centering directions. We implement 23 useful exotic cones in Hypatia. We summarize the complexity of computing oracles for these cones and show that our new third order oracle is not a bottleneck. From 37 applied examples, we generate a diverse benchmark set of 379 problems. Our computational testing shows that each stepping enhancement improves Hypatia’s iteration count and solve time. Altogether, the enhancements reduce the geometric means of iteration count and solve time by over 80% and 70% respectively.
Funder
Massachusetts Institute of Technology
Publisher
Springer Science and Business Media LLC
Subject
Software,Theoretical Computer Science
Reference68 articles.
1. Agrawal, A., Diamond, S., Boyd, S.: Disciplined geometric programming. Optimization Letters 13(5), 961–976 (2019)
2. Andersen, E.D., Roos, C., Terlaky, T.: On implementing a primal-dual interior-point method for conic quadratic optimization. Math. Program. 95(2), 249–277 (2003)
3. Andersen, M., Dahl, J., Liu, Z., Vandenberghe, L., Sra, S., Nowozin, S., Wright, S.: Interior-point methods for large-scale cone programming. In: Sra, S., Wright, S.J., Nowozin, S. (eds.) Optimization for Machine Learning, vol. 5583. MIT Press Cambridge, MA (2011)
4. Andersen, M.S., Dahl, J., Vandenberghe, L.: Logarithmic barriers for sparse matrix cones. Optimization Methods and Software 28(3), 396–423 (2013)
5. Anh Truong, V., Tunçel, L.: Geometry of homogeneous convex cones, duality mapping, and optimal self-concordant barriers. Math. Program. 100(2), 295–316 (2004)
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