采用ABC算法进行分类,分析控制参数的影响

Selim Dilmac, M. Korurek
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引用次数: 3

摘要

本研究采用基于人工蜂群(Artificial Bee Colony, ABC)算法的分类器。同时,为了提高ABC算法的有效性,对ABC算法进行了一些改进。新的方法被称为MABC算法。将这两种方法应用于各种实际数据集,如IRIS、WINE、PIMA、BUPA、ECG,并对结果进行比较。这些数据集来自UCI机器学习库和MITBIH ECG数据库。此外,还考察了MCN、Limit等控制参数的有效性指标和效果。观察到,所选择的特征对分类器的分类成功率有显著影响。如果类别之间的重叠度很高,分类器的成功率会降低。然而,实验结果表明,ABC算法可以成功地用于多维数据集的分类。通过SCTR控制参数,基于MABC算法的分类器提供了比ABC算法更高的分类成功率,不受Limit和MCN值的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using ABC algorithm for classification and analysis on effects of control parameters
In this study, Artificial Bee Colony (ABC) algorithm based classifier is used. Also, in order to improve the effectiveness of ABC algorithm, some modifications are done. New method is called MABC algorithm. Both methods are applied on various real life data sets such as IRIS, WINE, PIMA, BUPA, ECG and results are compared. Those datasets are obtained from UCI Machine Learning Repository and MITBIH ECG database. In addition to it, validity indices and effects of some control parameters such as MCN, Limit are examined. It is observed that, selected features have significiant effect on classification success rate of classifier. If there is high overlap between the classes, success rate of classifier decreases. However observed results indicate that ABC algorithm can successfully be used for classification of multi dimensional datasets. By means of SCTR control parameter, MABC algorithm based classifier provides higher classification success rates versus ABC algorithm, independent from Limit and MCN values.
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