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Artificial Bee Colony based Data Mining Algorithms for Classification Tasks

机译:基于人工蜂群的数据挖掘算法用于分类任务

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摘要

Artificial Bee Colony (ABC) algorithm is considered new and widely used in searching for optimum solutions. This is due to its uniqueness in problem-solving method where the solution for a problem emerges from intelligent behaviour of honeybee swarms. This paper proposes the use of the ABC algorithm as a new tool for Data Mining particularly in classification tasks. Moreover, the proposed ABC for Data Mining were implemented and tested against six traditional classification algorithms classifiers. From the obtained results, ABC proved to be a suitable candidate for classification tasks. This can be proved in the experimental result where the performance of the proposed ABC algorithm has been tested by doing the experiments using UCI datasets. The results obtained in these experiments indicate that ABC algorithm are competitive, not only with other evolutionary techniques, but also to industry standard algorithms such as PART, SOM, Naive Bayes, Classification Tree and Nearest Neighbour (kNN), and can be successfully applied to more demanding problem domains.
机译:人工蜂群(ABC)算法被认为是新算法,广泛用于寻找最佳解决方案。这是由于其在问题解决方法中的独特性,其中解决问题的方法来自蜜蜂群的智能行为。本文提出使用ABC算法作为数据挖掘的新工具,尤其是在分类任务中。此外,针对六个传统分类算法分类器实施并测试了拟议的数据挖掘基础知识。从获得的结果来看,ABC被证明是适合分类任务的候选人。这可以在实验结果中得到证明,其中通过使用UCI数据集进行实验来测试所提出的ABC算法的性能。这些实验获得的结果表明,ABC算法不仅在其他进化技术上具有竞争优势,而且在行业标准算法(例如PART,SOM,朴素贝叶斯,分类树和最近邻居(kNN))方面也具有竞争力,并且可以成功地应用于要求更高的问题域。

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