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An enhanced MILP-based branch-and-price approach to modularity density maximization on graphs

机译:基于增强的基于MILP的分支和价格方法来最大化图的模块密度

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For clustering of an undirected graph, this paper presents an exact algorithm for the maximization of modularity density, a more complicated criterion that overcomes drawbacks of the well-known modularity metric. The problem can be interpreted as the set-partitioning problem, a problem typically solved with an integer linear programming (ILP) formulation. We provide a branch-and-price framework for solving this ILP, i.e., column generation combined with branch-and-bound. Most importantly, we formulate the column generation subproblem to be solved repeatedly as a simpler mixed integer linear programming (MILP) problem. Acceleration techniques called the set-packing relaxation and the multiple-cuttingplanes-at-a-time combined with the MILP formulation enable us to optimize the modularity density for famous test instances including ones with over 100 vertices in around four minutes on a PC. Our solution method is deterministic and the computation time is not affected by any stochastic behavior. For one of the instances, column generation at the root node of the branch-and-bound tree provides a fractional upper bound solution and our algorithm finds an integral optimal solution after branching. (C) 2018 Elsevier Ltd. All rights reserved.
机译:对于无向图的聚类,本文提出了一种用于最大化模块化密度的精确算法,该算法是克服了众所周知的模块化度量标准缺点的更为复杂的准则。该问题可以解释为集合划分问题,该问题通常使用整数线性规划(ILP)公式解决。我们提供了一个分支和价格框架来解决该ILP,即列生成与分支和边界相结合。最重要的是,我们将列生成子问题公式化为可重复解决的一个更简单的混合整数线性规划(MILP)问题。结合了MILP公式的加速技术(称为“装箱松弛”和“一次切割多个平面”)使我们能够优化著名的测试实例的模块密度,包括在PC上四分钟内具有超过100个顶点的测试实例。我们的解决方案是确定性的,计算时间不受任何随机行为的影响。对于其中一个实例,在分支定界树的根节点处的列生成提供了分数上限解,并且我们的算法在分支后找到了整体最优解。 (C)2018 Elsevier Ltd.保留所有权利。

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