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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >J-MEANS: a new local search heuristic for minimum sum of squares clustering
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J-MEANS: a new local search heuristic for minimum sum of squares clustering

机译:J-MEANS:一种用于最小平方和聚类的新的本地搜索试探法

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A new local search heuristic, called J-MEANS, is proposed for solving the minimum sum of squares clustering problem. The neighborhood of the current solution is defined by all possible centroid-to-entity relocations followed by corresponding changes of assignments. Moves are made in such neighborhoods until a local optimum is reached. The new heuristic is compared with two other well-known local search heuristics, K- and H-MEANS as well as with H-MEANS +, an improved version of the latter in which degeneracy is removed. Moreover, another heuristic, which fits into the variable neighborhood search metaheuristic framework and uses J-MEANS in its local search step, is proposed too. Results on standard test problems from the literature are reported. It appears that J-MEANS outperforms the other local search methods, quite substantially when many entities and clusters are considered. (C) 2000 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 27]
机译:为解决最小平方和聚类问题,提出了一种新的局部搜索启发式方法,称为J-MEANS。当前解决方案的邻域是由所有可能的质心到实体重定位定义的,然后是赋值的相应更改。在这样的社区中移动直到达到局部最优。将新的启发式方法与其他两个著名的本地搜索启发式方法K-和H-MEANS以及H-MEANS +进行了比较,后者是后者的改进版本,其中删除了简并性。此外,还提出了另一种启发式方法,该方法适合于可变邻域搜索元启发式框架,并在其本地搜索步骤中使用J-MEANS。报告了有关标准测试问题的结果。当考虑许多实体和群集时,J-MEANS似乎比其他本地搜索方法要好得多。 (C)2000模式识别学会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:27]

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