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首页> 外文期刊>European Journal of Operational Research >A distance-based point-reassignment heuristic for the k-hyperplane clustering problem
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A distance-based point-reassignment heuristic for the k-hyperplane clustering problem

机译:k超平面聚类问题的基于距离的点重分配启发式

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We consider the k-Hyperplane Clustering problem where, given a set of m points in ~(Rn), we have to partition the set into k subsets (clusters) and determine a hyperplane for each of them, so as to minimize the sum of the squares of the Euclidean distances between the points and the hyperplane of the corresponding clusters. We give a nonconvex mixed-integer quadratically constrained quadratic programming formulation for the problem. Since even very small-size instances are challenging for state-of-the-art spatial branch-and-bound solvers like Couenne, we propose a heuristic in which many "critical" points are reassigned at each iteration. Such points, which are likely to be ill-assigned in the current solution, are identified using a distance-based criterion and their number is progressively decreased to zero. Our algorithm outperforms the best available one proposed by Bradley and Mangasarian on a set of real-world and structured randomly generated instances. For the largest instances, we obtain an average improvement in the solution quality of 54%.
机译:我们考虑k-超平面聚类问题,给定〜(Rn)中的m个点,我们必须将该集合划分为k个子集(簇)并为每个子集确定一个超平面,以使点和相应聚类的超平面之间的欧几里得距离的平方。对于该问题,我们给出了一个非凸混合整数二次约束二次规划公式。由于即使很小的实例对于像Couenne这样的最先进的空间分支定界求解器也具有挑战性,因此我们提出一种启发式方法,其中在每次迭代中都会重新分配许多“关键”点。使用基于距离的标准来识别可能在当前解决方案中分配不当的此类点,并将它们的数量逐渐减少为零。我们的算法优于Bradley和Mangasarian在一组真实的结构化随机生成实例上提出的最佳算法。对于最大的实例,我们获得的解决方案质量平均提高了54%。

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