Can we predict the difficulty of optimization problems without solving them?
ORAL
Abstract
Surprisingly often. Based on previous results of a large-scale numerical study of the equilibrium three-dimensional Edwards-Anderson Ising spin glass where it was demonstrated that autocorrelation times are directly correlated with the roughness of the free-energy landscape [Phys. Rev. E 87, 012104 (2013)], we show that a generalized spin-glass order parameter can be used as a proxy to the computational difficulty of various paradigmatic optimization problems. Our results are illustrated with different optimization algorithms, as well as optimization problems. Furthermore, we show numerical evidence that the order-parameter distribution does mirror salient features in the free-energy landscape of complex systems for moderate system sizes.
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Authors
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Helmut G. Katzgraber
Texas A&M University, Department of Physics and Astronomy, Texas A\&M University, Texas A\&M University
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Chao Fang
Texas A\&M University
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Richard Lawrence
Texas A\&M University
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Oliver Melchert
Texas A\&M University
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Humberto Munoz-Bauza
Texas A\&M University
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Andrew J. Ochoa
Texas A\&M University, Department of Physics and Astronomy, Texas A\&M University
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Wenlong Wang
Texas A\&M University, Texas A&M Univ
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Zheng Zhu
Texas A\&M University