NANAOct 3, 2017

Approximate global minimizers to pairwise interaction problems via convex relaxation

arXiv:1511.033549 citationsh-index: 12
Originality Incremental advance
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This provides a tractable linear programming approach for a class of non-convex variational problems arising in materials science, social phenomena, and flocking.

The paper introduces a convex relaxation method for computing approximate global minimizers of non-local pairwise interaction problems, achieving near-optimal energies (within a few percent of the optimum) with recovery guarantees. The approach exactly recovers global minimizers when a lattice of Dirac masses solves the relaxation.

We present a new approach for computing approximate global minimizers to a large class of non-local pairwise interaction problems defined over probability distributions. The approach predicts candidate global minimizers, with a recovery guarantee, that are sometimes exact, and often within a few percent of the optimum energy (under appropriate normalization of the energy). The procedure relies on a convex relaxation of the pairwise energy that exploits translational symmetry, followed by a recovery procedure that minimizes a relative entropy. Numerical discretizations of the convex relaxation yield a linear programming problem over convex cones that can be solved using well-known methods. One advantage of the approach is that it provides sufficient conditions for global minimizers to a non-convex quadratic variational problem, in the form of a linear, convex, optimization problem for the auto-correlation of the probability density. We demonstrate the approach in a periodic domain for examples arising from models in materials, social phenomena and flocking. The approach also exactly recovers the global minimizer when a lattice of Dirac masses solves the convex relaxation. An important by-product of the relaxation is a decomposition of the pairwise energy functional into the sum of a convex functional and non-convex functional. We observe that in some cases, the non-convex component of the decomposition can be used to characterize the support of the recovered minimizers.

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