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Ensemble classifier system based on ant colony algorithm and its application in chemical pattern classification

机译:基于蚁群算法的集成分类器系统及其在化学模式分类中的应用

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摘要

A novel ant colony algorithm, mass recruitment and group recruitment based continuous ant colony optimization (MG-CACO), is proposed to solve continuous optimization problems. MG-CACO, which can capture the interdependencies between attributes and does not need discretization as a preprocessing step for optimization, was applied to extract classification rules from samples. To improve the predictive performance of the classifier, the ensemble strategy was adopted and the MG-CACO based ensemble classifier system called MG-CACO-ECS was built. Several datasets, obtained from UCI (University of California, Irvine) machine learning repository, were employed to illustrate the validity of MG-CACO-ECS. The results indicated that MG-CACO-ECS has satisfactory prediction accuracy. Furthermore, the problem of the producing area discrimination of olive oil was studied, and the obtained results demonstrated that MG-CACO-ECS has better prediction accuracy than the reported results.
机译:针对连续优化问题,提出了一种新的蚁群算法,基于大规模募集和群体募集的连续蚁群优化算法(MG-CACO)。 MG-CACO可以捕获属性之间的相互依赖性,并且不需要离散化作为优化的预处理步骤,因此可以从样本中提取分类规则。为了提高分类器的预测性能,采用了集成策略,并建立了基于MG-CACO的集成分类器系统MG-CACO-ECS。从UCI(加利福尼亚大学欧文分校)机器学习存储库获得的几个数据集被用来说明MG-CACO-ECS的有效性。结果表明,MG-CACO-ECS具有令人满意的预测精度。此外,对橄榄油的产地鉴别问题进行了研究,所得结果表明MG-CACO-ECS具有比报道结果更好的预测精度。

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