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Solving unconstrained 0-1 polynomial programs through quadratic convex reformulation

机译:通过二次凸重构来解决无约束的0-1多项式计划

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We propose a method called Polynomial Quadratic Convex Reformulation (PQCR) to solve exactly unconstrained binary polynomial problems (UBP) through quadratic convex reformulation. First, we quadratize the problem by adding new binary variables and reformulating (UBP) into a non-convex quadratic program with linear constraints (MIQP). We then consider the solution of (MIQP) with a specially-tailored quadratic convex reformulation method. In particular, this method relies, in a pre-processing step, on the resolution of a semi-definite programming problem where the link between initial and additional variables is used. We present computational results where we compare PQCR with the solvers Baron and Scip. We evaluate PQCR on instances of the image restoration problem and the low auto-correlation binary sequence problem from MINLPLib. For this last problem, 33 instances were unsolved in MINLPLib. We solve to optimality 10 of them, and for the 23 others we significantly improve the dual bounds. We also improve the best known solutions of many instances.
机译:我们提出一种称为多项式二次凸重构(PQCR)的方法,以通过二次凸重构来解决完全无约束的二元多项式问题(UBP)。首先,通过将新的二进制变量添加到具有线性约束(MIQP)的非凸二次程序中,通过将新的二进制变量添加到非凸二次程序(MIQP)来逐次来zhadize问题。然后,我们考虑(MIQP)的解决方案,具有专门定制的二次凸重新制定方法。特别地,该方法在预处理步骤中依赖于分辨率的分辨率,其中使用初始和附加变量之间的链路。我们呈现计算结果,在那里我们将PQCR与求解器和Scip进行比较。我们在图像恢复问题的情况下评估PQCR和MinLPLIB的低自动相关二进制问题。对于最后一个问题,在minlib中未解决33个实例。我们解决了它们的最优性,对于其他23人来说,我们显着改善了双界。我们还提高了许多实例的最佳已知解决方案。

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