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A hybrid tabu search/branch & bound approach to solving the generalized assignment problem

机译:混合禁忌搜索/分支约束方法来解决广义分配问题

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摘要

A new approach for solving the generalized assignment problem (GAP) is proposed that combines the exact branch & bound approach with the heuristic strategy of tabu search (TS) to produce a hybrid algorithm for solving GAP. The algorithm described uses commercial software to solve sub-problems generated by the TS guiding strategy. The TS approach makes use of the concept of referent domain optimisation and introduces novel add/drop strategies. In addition, the linear programming relaxation of GAP that forms part of the branch & bound approach is itself helpful in suggesting which variables might take binary values. Computational results on benchmark test instances are presented and compared with results obtained by the standard branch & bound approach and also several other heuristic approaches from the literature. The results show the new algorithm performs competitively against the alternatives and is able to find some new best solutions for several benchmark instances.
机译:提出了一种解决广义分配问题的新方法,该方法将精确的分支定界方法与禁忌搜索(TS)的启发式策略相结合,产生了一种求解GAP的混合算法。所描述的算法使用商业软件来解决由TS指导策略生成的子问题。 TS方法利用了参照域优化的概念,并引入了新颖的添加/删除策略。此外,构成分支定界方法一部分的GAP线性编程松弛本身有助于建议哪些变量可能采用二进制值。介绍了基准测试实例的计算结果,并将其与标准分支定界方法以及文献中其他几种启发式方法获得的结果进行了比较。结果表明,新算法与其他算法相比具有竞争优势,并且能够为多个基准实例找到一些新的最佳解决方案。

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