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Constrained Ant Colony Optimization for Data Clustering

机译:约束蚁群算法的数据聚类优化

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摘要

Processes that simulate natural phenomena have successfully been applied to a number of problems for which no simple mathematical solution is known or is practicable. Such meta-heuristic algorithms include genetic algorithms, particle swarm optimization and ant colony systems and have received increasing attention in recent years. This paper extends ant colony systems and discusses a novel data clustering process using Constrained Ant Colony Optimization (CACO). The CACO algorithm extends the Ant Colony Optimization algorithm by accommodating a quadratic distance metric, the Sum of K Nearest Neighbor Distances (SKNND) metric, constrained addition of pheromone and a shrinking range strategy to improve data clustering. We show that the CACO algorithm can resolve the problems of clusters with arbitrary shapes, clusters with outliers and bridges between clusters.
机译:模拟自然现象的过程已经成功地应用于许多问题,这些问题没有简单的数学解是已知的或不可行的。这种元启发式算法包括遗传算法,粒子群优化和蚁群系统,并且近年来受到越来越多的关注。本文扩展了蚁群系统,并讨论了使用约束蚁群优化(CACO)的新型数据聚类过程。 CACO算法通过适应二次距离度量,K最近邻距离总和(SKNND)度量,信息素的约束加法和缩小范围策略来扩展蚁群优化算法,以改善数据聚类。我们表明,CACO算法可以解决具有任意形状的聚类,具有离群值的聚类和聚类之间的桥梁的问题。

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