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Extensions to the repetitive branch and bound algorithm for globally optimal clusterwise regression

机译:全局最优聚类回归的重复分支定界算法的扩展

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摘要

A branch and bound strategy is proposed for solving the clusterwise regression problem, extending Brusco's repetitive branch and bound algorithm (RBBA). The resulting strategy relies upon iterative heuristic optimization, new ways of observation sequencing, and branch and bound optimization of a limited number of ending subsets. These three key features lead to significantly faster optimization of the complete set and the strategy has more general applications than only for clusterwise regression. Additionally, an efficient implementation of incremental calculations within the branch and bound search algorithm eliminates most of the redundant ones. Experiments using both real and synthetic data compare the various features of the proposed optimization algorithm and contrasts them against a benchmark mixed logical-quadratic programming formulation optimized by CPLEX. The results indicate that all components of the proposed algorithm provide significant improvements in processing times, and, when combined, generally provide the best performance, significantly outperforming CPLEX.
机译:提出了一种分支定界策略,用于解决聚类回归问题,并扩展了布鲁斯科的重复分支定界算法(RBBA)。最终的策略依赖于迭代启发式优化,观察排序的新方法以及有限数量的结束子集的分支和边界优化。这三个关键特征可以显着加快整个集的优化速度,并且该策略比仅用于聚类回归的方法具有更广泛的应用。此外,在分支定界搜索算法中高效执行增量计算可消除大多数冗余计算。使用真实数据和合成数据进行的实验都比较了所提出优化算法的各种功能,并将它们与CPLEX优化的基准混合逻辑二次编程公式进行了对比。结果表明,所提出算法的所有组件都大大缩短了处理时间,并且结合使用后,通常可以提供最佳性能,明显优于CPLEX。

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