Mixed-integer nonlinear optimization encompasses a broad class of problems that present both theoretical and computational challenges. We propose a new type of method to solve these problems based on a branch-and-bound algorithm with convex node relaxations. These relaxations are solved with a Frank-Wolfe algorithm over the convex hull of mixed-integer feasible points instead of the continuous relaxation via calls to a mixed-integer linear solver as the linear oracle. The proposed method computes feasible solutions while working on a single representation of the polyhedral constraints, leveraging the full extent of mixed-integer linear solvers without an outer approximation scheme and can exploit inexact solutions of node subproblems.
翻译:混合整数非线性优化涵盖了一类既具有理论挑战又具有计算挑战的问题。我们提出了一种基于分支定界算法的新型方法,该算法具有凸性节点松弛。这些松弛条件通过 Frank-Wolfe 算法在混合整数可行点凸包上求解,而不是通过调用混合整数线性求解器作为线性预报的连续松弛。提出的方法在单个表示多面体约束的同时计算可行解,充分利用混合整数线性求解器的全部,而不需要外部逼近方案,并且可以利用节点子问题的不精确解。