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HColonies: a new hybrid metaheuristic for medical data classification

机译:HColonies:一种用于医学数据分类的新型混合元启发式方法

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摘要

Medical data feature a number of characteristics that make their classification a complex task. Yet, the societal significance of the subject and the computational challenge it presents has caused the classification of medical datasets to be a popular research area. A new hybrid metaheuristic is presented for the classification task of medical datasets. The hybrid ant–bee colonies (HColonies) consists of two phases: an ant colony optimization (ACO) phase and an artificial bee colony (ABC) phase. The food sources of ABC are initialized into decision lists, constructed during the ACO phase using different subsets of the training data. The task of the ABC is to optimize the obtained decision lists. New variants of the ABC operators are proposed to suit the classification task. Results on a number of benchmark, real-world medical datasets show the usefulness of the proposed approach. Classification models obtained feature good predictive accuracy and relatively small model size.
机译:医学数据具有许多特征,使它们的分类成为一项复杂的任务。然而,该主题的社会意义及其提出的计算难题已使医学数据集的分类成为流行的研究领域。针对医学数据集的分类任务,提出了一种新的混合元启发式方法。蚂蚁蜂群(HColonies)杂交包括两个阶段:蚁群优化(ACO)阶段和人工蜂群(ABC)阶段。将ABC的食物来源初始化为决策列表,然后在ACO阶段使用训练数据的不同子集构建它们。 ABC的任务是优化获得的决策列表。提出了ABC运营商的新变体以适合分类任务。在许多基准,现实世界医学数据集上的结果表明了该方法的有效性。获得的分类模型具有良好的预测准确性和相对较小的模型大小。

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