用蚁群算法改进基本顺序算法方案

W. Ashour, Riham Z. Muqat, Alaaeddin B. AlQazzaz, Saeb R. AbdElnabi
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引用次数: 3

摘要

基本顺序算法方案BSAS是一种用于数据聚类的顺序算法。它适用于展开紧凑数据集。BSAS算法对数据呈现顺序敏感;如果输入数据以不同的顺序呈现,则可能产生不同的聚类结果。由于结果中的簇数随阈值的取值而变化,因此多次运行是获得最优阈值的解决方案之一。本文采用蚁群优化蚁群算法对BSAS进行优化,以解决顺序敏感性问题。该算法从基于点间最小距离计算的蚁群算法中获得最优阶数,并将最优阶数作为输入阶数传递给BSAS算法。最后,利用和方误差SSE对算法进行了比较和验证。实验结果表明,该算法发展了BSAS算法。
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Improve Basic Sequential Algorithm Scheme using Ant Colony Algorithm
Basic Sequential Algorithm Scheme BSAS is a sequential algorithm for data clustering. It is suitable for unraveling compact dataset. The BSAS algorithm is sensitive to the order of data presentation; different clustering results could be produced if the input data are presented in a different order. Because the number of clusters in the results varies depending on the value of threshold, multiple run is one of the solutions to obtain optimal threshold.In this paper, BSAS is optimized using Ant Colony Optimization ACO Algorithm to solve the order sensitivity problem. The new proposed algorithm obtains the best order from ACO algorithm, which is based on the calculations of minimum distances between points, and passes the optimal order to BSAS algorithm as an input order. Finally, the proposed algorithm is compared and verified using the Sum Square Error SSE. The experimental results show that the proposed algorithm developed the BSAS algorithm.
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